WO2021164018A1 - Automatic driving control method and apparatus, information processing method and apparatus, and system - Google Patents

Automatic driving control method and apparatus, information processing method and apparatus, and system Download PDF

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Publication number
WO2021164018A1
WO2021164018A1 PCT/CN2020/076251 CN2020076251W WO2021164018A1 WO 2021164018 A1 WO2021164018 A1 WO 2021164018A1 CN 2020076251 W CN2020076251 W CN 2020076251W WO 2021164018 A1 WO2021164018 A1 WO 2021164018A1
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WIPO (PCT)
Prior art keywords
lane
traffic signal
information
driving vehicle
traffic
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PCT/CN2020/076251
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French (fr)
Chinese (zh)
Inventor
乔得志
Original Assignee
华为技术有限公司
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Publication date
Application filed by 华为技术有限公司 filed Critical 华为技术有限公司
Priority to PCT/CN2020/076251 priority Critical patent/WO2021164018A1/en
Priority to CN202080004503.XA priority patent/CN112639813A/en
Publication of WO2021164018A1 publication Critical patent/WO2021164018A1/en

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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06VIMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
    • G06V20/00Scenes; Scene-specific elements
    • G06V20/50Context or environment of the image
    • G06V20/56Context or environment of the image exterior to a vehicle by using sensors mounted on the vehicle
    • G06V20/588Recognition of the road, e.g. of lane markings; Recognition of the vehicle driving pattern in relation to the road
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06VIMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
    • G06V20/00Scenes; Scene-specific elements
    • G06V20/50Context or environment of the image
    • G06V20/56Context or environment of the image exterior to a vehicle by using sensors mounted on the vehicle
    • G06V20/58Recognition of moving objects or obstacles, e.g. vehicles or pedestrians; Recognition of traffic objects, e.g. traffic signs, traffic lights or roads
    • G06V20/584Recognition of moving objects or obstacles, e.g. vehicles or pedestrians; Recognition of traffic objects, e.g. traffic signs, traffic lights or roads of vehicle lights or traffic lights

Definitions

  • the embodiments of the present application relate to smart car technology, and in particular to an automatic driving control method, information processing method, device, and system.
  • An autonomous vehicle (also called an unmanned vehicle) is a vehicle that is automatically controlled and operated by an autopilot system.
  • the autopilot vehicle completes the driving through the system as the main and manual auxiliary or is completely driven by the autopilot system. Therefore, , Is an important direction for the future development of vehicles.
  • Autonomous driving systems can use artificial intelligence, visual computing, radar, monitoring devices, and global positioning systems to coordinate and cooperate to control vehicle driving. Autonomous vehicles need to abide by traffic rules when driving. Therefore, the autopilot system first needs to recognize signs and traffic instruction information in the road environment, and then control the vehicle to drive according to the signs and traffic instruction information. Signs can include lane lines, flower beds on the side of the road, curbs, obstacles, etc.
  • the traffic indication information may refer to the information of the traffic signal light. Among them, the information of the traffic signal light is an important basis for controlling the driving of the vehicle. Therefore, how to accurately identify the information of the traffic signal light is a problem to be solved urgently.
  • self-driving vehicles recognize the information of traffic lights based on purely visual methods.
  • the on-board camera installed on the self-driving vehicle collects the image in front of the vehicle, and the self-driving vehicle recognizes the image, recognizes the shape and color of the current traffic light, and controls the vehicle to run normally or stop accordingly.
  • misjudgment of the information of the traffic signal may occur in some scenarios, which may cause the autonomous vehicle to fail to drive correctly in accordance with the traffic rules.
  • the embodiments of the present application provide an automatic driving control method, information processing method, device and system, which are used to solve the problem in the prior art that the automatic driving vehicle cannot drive correctly in accordance with traffic rules due to the possible misjudgment of traffic signal information. problem.
  • an automatic driving control method which includes:
  • the self-driving vehicle determines the sign of the current lane, and obtains the status information of the traffic signal light associated with the lane according to the sign of the lane, and the self-driving vehicle then performs driving control according to the status information of the traffic signal.
  • the self-driving vehicle determines the sign of the current lane, according to the sign of the current lane, the state information of the traffic signal associated with the current lane can be determined, and the driving control is performed according to the state information of the traffic signal.
  • the autonomous vehicle obtains the state information of the traffic signal light that controls the vehicle on the lane based on the association relationship between the lane and the traffic light. Therefore, even in some special scenarios, for example, the head of the autonomous vehicle deviates from the lane direction.
  • Traffic signal lights are interfered by traffic lights in other directions, bad weather and other scenarios, autonomous vehicles can still accurately determine the status information of the traffic lights associated with the current lane, so as to avoid misjudgment of the information of the traffic lights, and then Ensure that autonomous vehicles can drive correctly in accordance with traffic regulations.
  • the self-driving vehicle may determine the identification of the traffic light associated with the lane according to the identification of the above-mentioned lane, and obtain the state information of the traffic light associated with the lane from the network device or the cloud.
  • the association relationship between the lane mark and the traffic light mark is used to record the association relationship between the lane and the traffic light.
  • the associated traffic light can be determined according to the lane mark. , And obtain the status of traffic lights based on this. Since the lane mark and the traffic light mark can uniquely identify a lane and a traffic light within a specific range, respectively, using the lane mark to determine the traffic light mark can ensure the accuracy of the determined traffic light.
  • one way for the autonomous vehicle to obtain the state information of the traffic signal light associated with the lane from a network device or the cloud includes:
  • the self-driving vehicle sends request information to the network device or the cloud.
  • the request information is used to obtain the state information of the traffic light associated with the lane, and the self-driving vehicle receives the state information of the traffic light associated with the lane from the network device or the cloud.
  • the self-driving vehicle obtains the status information of the traffic signal by sending request information to the network device or the cloud, so that the self-driving vehicle can send and receive messages on demand, reducing the number of processed messages.
  • the identifier of the traffic signal light associated with the lane is a part of the request information.
  • another way for the autonomous vehicle to obtain the state information of the traffic signal light associated with the lane from a network device or the cloud includes:
  • the autonomous vehicle receives the state information of at least one traffic signal from the network device or the cloud, and the autonomous vehicle obtains the traffic associated with the lane from the state information of the at least one traffic signal according to the identifier of the traffic signal associated with the lane.
  • the status information of the semaphore is not limited to the status of the semaphore.
  • the network equipment or the cloud broadcasts the status information of each traffic signal in real time, and the autonomous vehicle matches the status information of the traffic signal according to the identifier of the traffic signal associated with the current lane, thereby reducing the number of autonomous vehicles and network equipment or the cloud. The number of interactions between them improves the processing speed.
  • the automatic driving vehicle determining the current lane marking includes:
  • the self-driving vehicle determines the identity of the lane where it is currently located.
  • the automatic driving vehicle to determine the current lane markings further includes:
  • the automatic driving vehicle determines the lane markings where the automatic driving vehicle is located after the lane change;
  • the self-driving vehicle uses the identifier of the lane where the vehicle is located after the lane change as the identifier of the lane where it is currently located.
  • the state information of the traffic signal lamp associated with the lane includes at least one of the following information:
  • the identifier of the traffic signal light The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
  • the self-driving vehicle can obtain at least one of the above-mentioned state information. Based on the state information, the self-driving vehicle can start to control the automatic vehicle deceleration before reaching the intersection, so that the automatic driving control is consistent with the actual road conditions. More matching.
  • the driving control of the autonomous vehicle according to the state information of the traffic signal light includes:
  • the self-driving vehicle determines the driving action of the self-driving vehicle according to at least one of the following information:
  • the current time the distance between the autonomous driving vehicle and the intersection, the current driving speed of the autonomous vehicle, the time when the traffic signal status information is issued, the current lighting color of the traffic signal, and the forecast of the traffic signal lighting time information;
  • the driving action includes: stopping, going straight, turning left, turning right or turning around.
  • the lane markings include at least one of the following:
  • the mark of the lane line of the lane The mark of the lane line of the lane, the mark of the lane stop line of the lane, the mark of the lane center line of the lane, and the mark of the lane node of the lane.
  • an information processing method which includes:
  • the autonomous vehicle by acquiring the status information of the traffic signal and sending the status information to the autonomous vehicle, the autonomous vehicle can obtain accurate traffic signal status information, avoiding misjudgments of the traffic signal, and ensuring the autonomous vehicle You can drive correctly in accordance with traffic rules.
  • the sending the state information of the traffic signal light to the self-driving vehicle includes:
  • Receive request information sent by the target autonomous vehicle the request information is used to obtain the status information of the traffic signal associated with the lane where the target autonomous vehicle is currently located, according to the identifier of the traffic signal associated with the lane where the target autonomous vehicle is currently located Acquire the state information of the traffic signal lamp associated with the lane where the target autonomous driving vehicle is currently located; and send the state information of the traffic signal lamp associated with the lane to the target autonomous vehicle.
  • the self-driving vehicle obtains the status information of the traffic signal by sending request information to the network device or the cloud, so that the self-driving vehicle can send and receive messages on demand, reducing the number of processed messages.
  • the identifier of the traffic signal light associated with the lane where the target autonomous driving vehicle is currently located is part of the request information.
  • the sending the state information of the traffic signal light to the self-driving vehicle includes:
  • the status information of each traffic signal is broadcasted in real time, so that the autonomous vehicle can match the status information of the traffic signal according to the identifier of the traffic signal associated with the current lane, thereby reducing the communication between the autonomous vehicle and the network equipment or the cloud.
  • the number of interactions increases the processing speed.
  • the acquiring state information of at least one traffic signal light includes:
  • the state information of the traffic signal light includes at least one of the following information:
  • the identifier of the traffic signal light The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
  • an embodiment of the present application provides an automatic driving control device, which is characterized in that it includes: a processing unit;
  • the processing unit is configured to determine the identifier of the current lane, obtain the state information of the traffic signal lamp associated with the lane according to the identifier of the lane, and perform driving control according to the state information of the traffic signal lamp.
  • the processing unit is specifically configured to:
  • the identification of the traffic signal light associated with the lane is determined according to the identification of the lane; and the state information of the traffic signal light associated with the lane is obtained from a network device or the cloud.
  • the device further includes: a transceiver unit.
  • the transceiver unit is configured to send request information to the network device or the cloud, where the request information is used to obtain the status information of the traffic signal lamp associated with the lane; and, to receive the lane from the network device or the cloud The status information of the associated traffic lights.
  • the identifier of the traffic signal light associated with the lane is a part of the request information.
  • the processing unit is specifically configured to:
  • the processing unit is specifically configured to:
  • the identification of the current lane is determined.
  • the processing unit is specifically configured to:
  • the identifier of the lane where the vehicle is located after the lane change is determined, and the identifier of the lane where it is located after the lane change is used as the identifier of the current lane.
  • the state information of the traffic signal lamp associated with the lane includes at least one of the following information:
  • the identifier of the traffic signal light The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
  • the processing unit is specifically configured to:
  • the current time the distance between the autonomous driving vehicle and the intersection, the current driving speed of the autonomous driving vehicle, the time when the traffic signal status information is issued, the current lighting color of the traffic signal, and the forecast of the traffic signal lighting time information;
  • the driving action includes: stopping, going straight, turning left, turning right or turning around.
  • the lane markings include at least one of the following:
  • the identification of the lane line of the lane The identification of the lane line of the lane, the identification of the lane stop line of the lane, the identification of the lane center line of the lane, and the identification of the lane node of the lane.
  • an embodiment of the present application provides an information processing device, including: a processing unit and a transceiver unit.
  • the processing unit is used to obtain state information of at least one traffic signal light
  • the transceiver unit is used to send the state information of the traffic signal light to the self-driving vehicle.
  • the transceiver unit is specifically configured to:
  • Receive request information sent by a target autonomous driving vehicle where the request information is used to obtain status information of a traffic signal associated with the lane where the target autonomous driving vehicle is currently located.
  • the processing unit is further configured to: obtain state information of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located according to the identifier of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located;
  • the transceiver unit is specifically configured to send the state information of the traffic signal lamp associated with the lane to the target autonomous driving vehicle.
  • the identifier of the traffic signal light associated with the lane where the target autonomous driving vehicle is currently located is part of the request information.
  • the transceiver unit is specifically configured to:
  • the processing unit is specifically configured to:
  • the state information of the traffic signal light includes at least one of the following information:
  • the identifier of the traffic signal light The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
  • an embodiment of the present application provides a communication device, including a processor, the processor is connected to a memory, the memory is used to store a computer program, and the processor is used to execute the computer program stored in the memory, So that the device executes the method described in the first aspect.
  • an embodiment of the present application provides a communication device, including a processor, the processor is connected to a memory, the memory is used to store a computer program, and the processor is used to execute the computer program stored in the memory, So that the device executes the method described in the second aspect above.
  • an embodiment of the present application provides a computer-readable storage medium, the computer-readable storage medium stores a computer program, and when the computer program is executed, the method described in the first aspect is implemented.
  • an embodiment of the present application provides a computer-readable storage medium that stores a computer program, and when the computer program is executed, the method described in the second aspect is implemented.
  • an embodiment of the present application provides a chip including a processor and an interface.
  • the processor is configured to read instructions to execute the automatic driving control method described in the first aspect.
  • an embodiment of the present application provides a chip including a processor and an interface.
  • the processor is used to read instructions in the information processing method described in the second aspect.
  • an embodiment of the present application provides a computer program product.
  • the computer program product includes computer program code.
  • the computer program code When the computer program code is executed by a computer, the computer executes the method described in the first aspect. .
  • an embodiment of the present application provides a computer program product, the computer program product includes computer program code, when the computer program code is executed by a computer, the computer executes the method described in the second aspect above .
  • an embodiment of the present application provides a communication system, including the communication device described in the fifth aspect, the communication device described in the sixth aspect, and a traffic signal light control system.
  • Fig. 1 is a schematic diagram of an automatic driving vehicle recognizing a traffic signal light in the prior art
  • Figure 2 is an example diagram of misjudgment caused by the deviation of the front of the vehicle from the lane direction;
  • Figure 3 is an example diagram of traffic signal lights being interfered by traffic lights in other directions
  • Figure 4 is an example diagram of traffic signal lights of different colors in the same direction
  • Fig. 5a is an exemplary system architecture diagram of an automatic driving control method provided by an embodiment of the application.
  • FIG. 5b is another exemplary system architecture diagram of the automatic driving control method provided by the embodiment of the application.
  • Figure 6 is an example diagram of lane lines
  • Figure 7 is an example diagram of the centerline of the lane
  • Figure 8 is an example diagram of a lane stop line
  • Figure 9 is an example diagram of lane nodes
  • FIG. 10 is a schematic flowchart of an automatic driving control method provided by an embodiment of this application.
  • FIG. 11 is an interactive flowchart of an automatic driving control method provided by an embodiment of this application.
  • Figure 12a is a schematic diagram of an interaction scene between an autonomous driving vehicle and a network device
  • Figure 12b is a schematic diagram of an interaction scene between an autonomous vehicle and the cloud
  • FIG. 13 is another interactive flowchart of the automatic driving control method provided by the embodiment of the application.
  • Figure 14a is a schematic diagram of an interaction scene between an autonomous vehicle and a network device
  • Figure 14b is a schematic diagram of an interaction scene between an autonomous vehicle and the cloud
  • 15 is a block diagram of an automatic driving control device provided by an embodiment of the application.
  • FIG. 16 is a module structure diagram of an information processing device provided by an embodiment of this application.
  • FIG. 17 is a schematic structural diagram of a communication device provided by an embodiment of this application.
  • Fig. 1 is a schematic diagram of an automatic driving vehicle in the prior art recognizing traffic signal lights.
  • the automatic driving vehicle in the prior art recognizes traffic signal information based on a purely visual manner. Specifically, the traffic signal light information is sensed by the camera installed on the vehicle. In this way, misjudgment of traffic signal information may occur in some scenarios, which may cause the autonomous vehicle to fail to drive correctly in accordance with traffic rules. The following lists some scenarios where misjudgment of traffic signal information may occur.
  • the pure visual method is easily affected by weather conditions. For example, on a rainy or hazy day, the traffic signal lights in the image collected by the camera are not clear enough, which may lead to misjudgment.
  • FIG 2 is an example diagram of traffic lights of different colors in the same direction. As shown in Figure 2, there are two traffic lights in front of the autonomous vehicle. One traffic signal is used to control the vehicle, and the other traffic signal is used to control pedestrians. Pedestrian traffic lights are provided with human-shaped signs. In some cases, the self-driving vehicle may not be able to recognize the human-shaped sign through graphic recognition, and the self-driving vehicle cannot distinguish which of the two traffic lights is used to control the vehicle, which may lead to misjudgment.
  • the traffic lights are interfered by traffic lights in other directions.
  • Figure 3 is an example diagram of traffic lights being interfered by traffic lights in other directions. As shown in Figure 3, in addition to the traffic lights that control the current lane, the images captured by the camera also include traffic lights in the other direction. The color of the traffic lights in the direction is inconsistent, which may cause the autonomous vehicle to be unable to accurately determine the color of the traffic lights in the current lane.
  • the front of the autonomous vehicle deviates from the lane direction.
  • Fig. 4 is an example diagram of misjudgment caused by the deviation of the vehicle head from the lane direction. As shown in Fig. 4, the autonomous vehicle is currently in a left-turning lane and the vehicle head is not facing the direction of the lane. Therefore, in the image collected by the camera, The traffic signal used to control the left turn is located at the edge of the image, which may lead to misjudgment of the traffic signal.
  • the embodiment of the present application associates the lane with the traffic signal that controls the lane, and the association with the lane can be directly obtained.
  • the information of the traffic signal light and the driving control are carried out, so as to avoid the problem of misjudgment of the information of the traffic signal light.
  • Fig. 5a is an exemplary system architecture diagram of an automatic driving control method provided by an embodiment of the application.
  • the embodiment of the application relates to a traffic signal light control system, a network device, and an automatic driving vehicle.
  • the traffic signal light control system can send the status information of the traffic signal light to the network device in real time, and the network device provides the self-driving vehicle.
  • the network device may refer to a vehicle to everything (V2X) device deployed on or near the road.
  • V2X vehicle to everything
  • the network device may be a roadside unit (RSU), and the RSU may communicate with an autonomous vehicle, or may communicate with other roadside units.
  • RSU roadside unit
  • FIG. 5b is another exemplary system architecture diagram of the automatic driving control method provided by the embodiment of the application.
  • the embodiment of the application relates to a traffic signal light control system, the cloud, and an automatic driving vehicle.
  • the traffic signal light control system can send the status information of the traffic signal light to the cloud in real time, and the cloud provides the self-driving vehicle.
  • the cloud can process, store, and deliver data, and the data can include traffic signal information and map data.
  • the cloud can be a map cloud, and the state information of traffic lights and regional map information are stored in the map cloud.
  • the cloud can also be cloud resources or cloud maps.
  • the lane refers to the part on the roadway for a single column of vehicles to travel.
  • the following terms are relative to a certain lane and can be used to identify a lane.
  • the lane line refers to the lane dividing line on the road.
  • Fig. 6 is an example diagram of lane lines. As shown in Fig. 6, three lane lines are marked on a certain road, namely, lane line 1, lane line 2, and lane line 3. The three lane lines can be divided into two lanes, lane 1 and lane 2, respectively. In the embodiment of the present application, one lane line can be used to identify one lane. Exemplarily, lane line 2 may be used to identify lane 1, and lane line 3 may be used to identify lane 2.
  • the lane line centerline refers to the virtual line in the autonomous driving map, and the lane line centerline may not exist in the actual road.
  • the centerline of the lane line defines the trajectory of the vehicle between the sidelines of the lane.
  • Figure 7 is an example diagram of the centerline of the lane.
  • a road includes two lanes, lane 1 and lane 2, which pass through lane line 1, lane line 2, and lane line 3. segmentation.
  • lane 1 includes lane centerline 1
  • lane 2 includes lane centerline 2.
  • the lane center line may be used to identify the lane.
  • the lane centerline 1 may be used to identify the lane 1
  • the lane centerline 2 may be used to identify the lane 2.
  • the lane stop line refers to the marking line at the end of a section of lane.
  • Fig. 8 is an example diagram of a lane stop line. As shown in Fig. 8, a road ends at a certain intersection. The road includes three lanes, lane 1, lane 2, and lane 3. At the road cutoff, there are three lane stop lines 1, lane stop lines 2, and lane stop lines 3, respectively. Lane stop line 1 is the stop line of lane 1 and can be used to mark lane 1. Lane stop line 2 is the stop line of lane 2, which can be used to mark lane 2. Lane stop line 3 is the stop line of lane 3 and can be used to mark lane 3.
  • the lane node may refer to the node of the lane line and/or the center line of the lane, and is a virtual node in the autonomous driving map.
  • the lane node may not exist in the actual road.
  • the autonomous driving map when the lane line and/or the center line of the lane change, it needs to be interrupted, and the location of the interruption can be marked by the lane node.
  • Fig. 9 is an example diagram of lane nodes. As shown in Fig. 9, three lane lines are marked on a certain road, namely, lane line 1, lane line 2, and lane line 3. The three lane lines can be divided into two lanes, lane 1 and lane 2, respectively.
  • lane line 1 changes at lane node 1, so lane node 1 is set here
  • lane line 2 changes at lane node 2
  • lane line 3 is at lane node 3. Change occurs, so lane node 3 is set here. Therefore, lane node 1 is associated with lane line 1, lane node 2 is associated with lane line 2, and lane node 3 is associated with lane line 3.
  • lane line 2 since lane line 2 is associated with lane node 2 and lane line 2 can identify the lane, when associating traffic lights with lane nodes, the traffic lights can be associated with lanes. Therefore, the embodiment of the present application may be referred to as identifying the lane by the lane node.
  • the autonomous driving map may be a high-precision map.
  • the autonomous driving map In addition to storing traditional road information, the autonomous driving map also stores the nodes of roads, lanes, lane lines, lane center lines, lane stop lines, and lane lines. Information so that autonomous vehicles can achieve more precise positioning.
  • the autonomous driving vehicle may pre-store the autonomous driving map.
  • the autonomous driving map is referred to as a map for short below.
  • FIG. 10 is a schematic flowchart of an automatic driving control method provided by an embodiment of this application. As shown in FIG. 10, the method includes:
  • the self-driving vehicle determines the identification of the current lane.
  • the identification of the lane where the autonomous vehicle is currently located may refer to the identification of the lane where the autonomous vehicle is currently located on the map.
  • the lane on the map can be obtained in real time, and then the identification of the lane can be determined.
  • the self-driving vehicle first obtains the current probabilistic position according to the built-in global positioning system (GPS) module, enters the probabilistic position into the map, and uses the map for high-precision positioning, thereby obtaining the current lane , And determine the sign of the current lane.
  • GPS global positioning system
  • the current lane identifier may refer to the lane line identifier of the current lane At least one of the identification of the lane center line of the current lane, the identification of the lane stop line of the current lane, and the identification of the lane node of the current lane.
  • the above-mentioned lane line identification, lane center line identification, lane stop line identification, and lane node identification can be numbers, names, etc., so that the identified lane line can be distinguished from other lanes within a specific range
  • the lane center line can be distinguished from other lane center lines in a specific range
  • the lane stop line can be distinguished from other lane stop lines in a specific range
  • the lane node can be distinguished from other lane nodes in a specific range.
  • the above-mentioned specific range may refer to the range of the entire map, or a part of the range in the map.
  • the scope of the map is a province
  • the above-mentioned specific scope can refer to that province, or it can refer to a certain city belonging to the province.
  • the autonomous vehicle can obtain the current lane on the map in real time, and obtain the lane line identification of the current lane on the map, and then determine that the current lane is the lane line. Of the logo.
  • the autonomous vehicle obtains that the current lane on the map is lane 1.
  • the lane line corresponding to lane 1 is lane line 2
  • the autonomous vehicle Determine that the current lane marking is the marking of lane line 2.
  • the autonomous driving vehicle determines that the current lane identifier is 2.
  • the autonomous vehicle can obtain the current lane on the map in real time, and obtain the lane centerline identification of the current lane on the map, and then determine that the current lane identification is The mark of the centerline of the lane.
  • the autonomous vehicle has acquired the current lane on the map as lane 1.
  • the lane center line corresponding to lane 1 is lane center line 1, then automatically The driving vehicle determines that the current lane marking is the marking of the lane centerline 1.
  • the autonomous vehicle can obtain the current lane on the map in real time, and obtain the lane stop line identification of the current lane on the map, and then determine that the current lane identification is The mark of the stop line in this lane.
  • the autonomous vehicle acquires that the current lane on the map is lane 1.
  • the lane stop line corresponding to lane 1 is lane stop line 1, then automatically The driving vehicle determines that the sign of the current lane is the sign of the lane stop line 1.
  • the autonomous vehicle can obtain the current lane on the map in real time, and obtain the identification of the node of the current lane in the map, and then determine that the identification of the current lane is the lane in the map The identifier of the corresponding lane node.
  • the autonomous vehicle may use one of the above-mentioned lane line, lane center line, lane stop line, and lane node to identify the lane, or it may use different lanes in different time periods or under different circumstances.
  • Information to identify the lane Exemplarily, the autonomous vehicle may use the lane line to identify the lane by default. In some cases, the autonomous vehicle may use the center line of the lane to identify the lane when it cannot accurately obtain the identification of the lane line.
  • the identification of the current lane can be determined when certain or certain conditions are met, and then the following steps S1002-S1003 are executed to complete the driving control.
  • the self-driving vehicle determines whether the distance between the self-driving vehicle and the target intersection is less than a preset threshold based on the current position on the self-driving map.
  • the target intersection may refer to an intersection on the map that is closest to the current position of the autonomous vehicle in the autonomous driving map.
  • the intersection may be, for example, an intersection, a T-junction, and other intersections where traffic lights may be set.
  • the intersection may also be a location on a road with traffic lights connected to an exit of a certain building.
  • a certain position on a certain road is connected to an exit of a certain school, and in order to ensure the safety of students, a traffic signal light is set at that position on the road. Therefore, the location where the traffic signal light is installed also belongs to the intersection. If it is determined that the distance between the self-driving vehicle and the intersection is less than the preset threshold, it indicates that the self-driving vehicle is about to arrive at the intersection. Therefore, the self-driving vehicle can determine the identification of the current lane and execute the following steps S1002-S1003 to complete the driving control.
  • the preset threshold may be preset by an autonomous vehicle, and for example, the threshold may be 500m, 200m, or 50m.
  • the preset threshold value can be dynamically changed by the owner of the self-driving vehicle, for example, it can be set freely according to the traffic jam and the characteristics of the vehicle driving path.
  • the self-driving vehicle After the self-driving vehicle has determined the sign of the current lane through the above process, it may change lanes before reaching the intersection. If the self-driving vehicle changes lanes, the self-driving vehicle can determine the sign of the lane after the lane change, and The sign of the lane where you are after changing lanes is used as the sign of the current lane.
  • the self-driving vehicle obtains the lane in the map after the lane change, and determines that the lane line corresponding to the lane is the lane mark after the lane change, and uses the lane mark after the lane change as the new current location The identification of the lane. In the subsequent steps, the self-driving vehicle obtains the status information of the traffic lights and performs driving control based on the lane markings.
  • the operation of the self-driving vehicle described in the embodiments of the present application refers to the operation of the system of the self-driving vehicle. After the system is operated, the behavior of the vehicle is controlled, and the behavior may include driving or stopping.
  • the self-driving vehicle obtains state information of the traffic signal light associated with the lane according to the identification of the lane.
  • a lane and a traffic signal light may be associated in advance, wherein a certain traffic signal light associated with a certain lane is used to control the behavior of an autonomous vehicle driving in the lane.
  • a certain traffic signal light associated with a certain lane is used to control the behavior of an autonomous vehicle driving in the lane.
  • the traffic signal light associated with the left-turn lane is a traffic signal light that controls the vehicle to be turned left.
  • the association relationship between the lane and the traffic light can be pre-stored in the autonomous vehicle, and/or, pre-stored in the network device or cloud that provides status information of the traffic light.
  • the self-driving vehicle After the self-driving vehicle determines the sign of the current lane, it can obtain the state information of the traffic signal associated with the current lane based on the association relationship between the lane and the traffic light.
  • the autonomous vehicle performs driving control according to the state information of the above-mentioned traffic signal light.
  • the above-mentioned status information of the traffic signal may indicate the lighting information of the traffic signal at the current moment and the change of the traffic signal in a certain period of time in the future, etc.
  • the autonomous vehicle is based on the traffic signal status information combined with the speed of the autonomous vehicle And other information, you can carry out driving control.
  • the autonomous driving vehicle is controlled to pass through the intersection at a speed before reaching the intersection, or the autonomous driving vehicle is controlled to stop within the lane stop line.
  • the self-driving vehicle determines the sign of the current lane, according to the sign of the current lane, the status information of the traffic signal associated with the current lane can be determined, and the driving control is performed according to the status information of the traffic signal.
  • the autonomous vehicle obtains the state information of the traffic signal light that controls the vehicle on the lane based on the association relationship between the lane and the traffic light. Therefore, even in some special scenarios, for example, the head of the autonomous vehicle deviates from the lane direction.
  • Traffic signal lights are interfered by traffic lights in other directions, bad weather and other scenarios, autonomous vehicles can still accurately determine the status information of the traffic lights associated with the current lane, so as to avoid misjudgment of the information of the traffic lights, and then Ensure that autonomous vehicles can drive correctly in accordance with traffic regulations.
  • the associated traffic signal identifier when the lane identifier uniquely identifies a lane within a specific range, the associated traffic signal identifier correspondingly uniquely identifies a traffic signal within the specific range or a range larger than the specific range.
  • Table 1 is an example of associating the markings of lane lines with the markings of traffic lights.
  • the above table 1 can be a table for recording lane line elements.
  • the Lane_ID field can be the number of the lane line, which is used to uniquely identify a lane line in the aforementioned specific range.
  • the table can also record other lane lines.
  • the elements of the lane line for example, the type of the lane line is a white solid line.
  • the above-mentioned TrafficLight_ID field can be recorded in the table, and the TrafficLight_ID field can be the number of a traffic light, and the number is used to uniquely identify a traffic light in a certain range.
  • Table 2 is an example of associating the mark of the center line of the lane with the mark of the traffic light.
  • the above table 2 can be a table for recording the centerline elements of the lane.
  • the MidLane_ID field can be the number of the centerline of the lane, which is used to uniquely identify a centerline of the lane in the aforementioned specific range.
  • the table can also Record other elements of the centerline of the lane.
  • the above-mentioned TrafficLight_ID field can be recorded in the table, and the TrafficLight_ID field can be the number of a traffic light, and the number is used to uniquely identify a traffic light in a certain range.
  • Table 3 is an example of associating the signs of the lane stop line with the signs of the traffic lights.
  • the above table 3 can be a table for recording lane stop line elements.
  • the StopLine_ID field can be the number of the lane stop line, which is used to uniquely identify a lane stop line within the aforementioned specific range.
  • the table can also Record other elements of the stop line of the lane.
  • the above-mentioned TrafficLight_ID field can be recorded in the table.
  • the TrafficLight_ID field can be the number of a traffic light, and the number is used to uniquely identify a traffic light in a certain range.
  • Table 4 is an example of associating the identification of the lane node with the identification of the traffic light.
  • the above table 4 can be a table for recording lane node elements.
  • the Node_ID field can be the number of the lane node, which is used to uniquely identify a lane node in the aforementioned specific range.
  • the table can also record other lane nodes. Elements of lane nodes.
  • the above-mentioned TrafficLight_ID field can be recorded in the table, and the TrafficLight_ID field can be the number of a traffic light, and the number is used to uniquely identify a traffic light in a certain range.
  • an optional implementation manner of the foregoing step S1002 includes:
  • the self-driving vehicle determines the identification of the traffic light associated with the lane according to the identification of the determined lane, and then obtains the state of the traffic light associated with the lane from the network device or the cloud.
  • the self-driving vehicle can save the above-mentioned association relationship.
  • the autonomous vehicle may record the information in Table 1 above in advance. After the self-driving vehicle has determined the identification of the current lane, that is, the identification of the lane line, it can query the identification of the traffic light associated with the identification of the lane line from Table 1, and then based on the identification of the traffic light, from the network equipment or The cloud obtains the identification of the traffic light.
  • the association relationship between the lane mark and the traffic light mark is used to record the association relationship between the lane and the traffic light.
  • the associated traffic light can be determined according to the lane mark. , And obtain the status of traffic lights based on this. Since the lane mark and the traffic light mark can uniquely identify a lane and a traffic light within a specific range, respectively, using the lane mark to determine the traffic light mark can ensure the accuracy of the determined traffic light.
  • the following describes a method for an autonomous vehicle to obtain the status information of the traffic signal light associated with the lane from the network device or the cloud after the identification of the traffic signal light associated with the lane is determined.
  • the self-driving vehicle can use any of the following two optional methods to obtain traffic signal status information from a network device or the cloud.
  • the self-driving vehicle can actively request the network device or the cloud to provide the self-driving vehicle with the status information of the traffic signal associated with the current lane. In this way, the self-driving vehicle is determining the traffic corresponding to the current lane. After the semaphore is identified, the request information is sent to the network device or the cloud.
  • the network device or the cloud broadcasts the status information of each traffic signal, and the autonomous vehicle obtains the status information of the traffic signal associated with the current lane from the broadcast status information.
  • the status information of at least one traffic signal can be acquired, and the status information of the traffic signal can be sent to the autonomous vehicle.
  • the network device or the cloud can use the corresponding method of the above two optional methods to send the status information of the traffic signal to the autonomous vehicle.
  • FIG. 11 is an interactive flow chart of the automatic driving control method provided by an embodiment of the application. As shown in FIG. 11, the automatic driving control interaction flow based on the above-mentioned first optional method includes:
  • the self-driving vehicle determines the identification of the current lane.
  • the self-driving vehicle determines the identifier of the traffic signal light associated with the lane according to the identifier of the current lane.
  • the self-driving vehicle sends request information to the network device or the cloud, where the request information is used to obtain the status information of the traffic signal lamp associated with the current lane.
  • the self-driving vehicle may carry the identifier of the traffic signal light associated with the lane in the above request information and send it to the network device or the cloud, that is, the identifier of the traffic signal light associated with the lane is part of the above request information.
  • the network device or the cloud can read the identification of the traffic light from the request information.
  • the number of interactive signaling can be reduced, transmission resources can be saved, and transmission efficiency can be improved.
  • the above request information may not carry the traffic signal identifier associated with the lane.
  • the network device or the cloud After the network device or the cloud receives the request information, it instructs the autonomous vehicle to provide the traffic signal identifier, and then obtains the traffic signal identifier. logo.
  • the self-driving vehicle in this optional manner may be referred to as a target driving vehicle, and the target driving vehicle sends request information to the network device or the cloud.
  • the network device or the cloud obtains the status information of the traffic signal light according to the identifier of the traffic signal light associated with the lane where the autonomous vehicle is currently located.
  • the traffic signal control system can provide the network equipment or the cloud with the status information of each traffic signal in real time. Therefore, the network equipment or the cloud can obtain the status information of the traffic signal according to the identification of the traffic signal.
  • S1105 The network device or the cloud sends the state information of the traffic signal lamp associated with the current lane to the autonomous vehicle.
  • the self-driving vehicle receives the state information of the traffic signal light associated with the current lane from the network device or the cloud.
  • Figure 12a is a schematic diagram of the interaction scene between an autonomous vehicle and a network device.
  • the autonomous vehicle sends request information to the network device, and the network device obtains traffic signal status information from the traffic signal control system and sends it to the autonomous vehicle .
  • Figure 12b is a schematic diagram of the interaction scene between the autonomous vehicle and the cloud.
  • the autonomous vehicle sends request information to the cloud, and the cloud obtains the status information of the traffic light from the traffic light control system and sends it to the self-driving vehicle.
  • the self-driving vehicle performs driving control according to the state information of the traffic signal light associated with the current lane.
  • the self-driving vehicle obtains the status information of the traffic signal by sending request information to the network device or the cloud, so that the self-driving vehicle can send and receive messages on demand, reducing the number of processed messages.
  • FIG. 13 is another interaction flow chart of the automatic driving control method provided by the embodiment of the application. As shown in FIG. 13, the automatic driving control interaction flow based on the above-mentioned second optional method includes:
  • the self-driving vehicle determines the identification of the current lane.
  • the self-driving vehicle determines the identifier of the traffic signal light associated with the lane according to the identifier of the current lane.
  • S1303 The network device or the cloud broadcasts the state information of at least one traffic signal light.
  • this step is an operation actively performed by the network device or the cloud side, and this operation is independent of the operation of the self-driving vehicle. Therefore, the order of execution of the steps and the aforementioned steps S1301-S1302 is in no particular order.
  • the network device or the cloud can broadcast the status information of each traffic signal to all autonomous vehicles in the area where each traffic signal is located in real time.
  • the network device or the cloud can broadcast the status information of the 4 traffic lights to all autonomous vehicles in the area where the intersection is located in real time.
  • the autonomous vehicle involved in the foregoing steps travels to the area, it can receive the state information of at least one traffic signal from the network device or the cloud.
  • the self-driving vehicle obtains the status information of the traffic signal associated with the current lane from the status information of the at least one traffic signal according to the identifier of the associated traffic signal of the current lane.
  • the network device or cloud When the network device or cloud broadcasts the status information of each traffic signal light, it can broadcast the traffic signal identification and the traffic signal status information at the same time.
  • the autonomous driving vehicle can compare the identification in the broadcast information with the traffic signal status information obtained in step S1302. The identification is matched, and the status information of the traffic signal lamp associated with the current lane can be obtained.
  • Figure 14a is a schematic diagram of the interactive scene between the autonomous vehicle and the network device.
  • the network device broadcasts the status information of the traffic lights installed at the intersection to the autonomous vehicles in the area where the intersection is located in real time.
  • the status information of the traffic signal light associated with the current lane is obtained.
  • Figure 14b is a schematic diagram of the interactive scene between autonomous vehicles and the cloud.
  • the cloud broadcasts the status information of the traffic lights installed at the intersection to the autonomous vehicles in the area where the intersection is located in real time, and the autonomous vehicles pass the matching
  • the identification of the traffic signal light obtains the status information of the traffic signal light associated with the current lane.
  • the autonomous vehicle performs driving control according to the state information of the traffic signal light associated with the current lane.
  • the network equipment or the cloud broadcasts the status information of each traffic signal in real time, and the autonomous vehicle matches the status information of the traffic signal according to the identifier of the traffic signal associated with the current lane, thereby reducing the number of autonomous vehicles and network equipment or the cloud. The number of interactions between them improves the processing speed.
  • step S1003 The following describes the specific process of driving control according to the state information of the traffic light in the above step S1003, step S1106, and step S1305.
  • the status information of the traffic signal indicates the lighting information of the traffic signal at the current moment and the change of the traffic signal in a certain period of time in the future.
  • the state information of the traffic signal light may include at least one of the following:
  • the sign of the traffic signal the type of the traffic signal, the time when the status information of the traffic signal is issued, the current light color, and the forecast information of the light time, etc.
  • the time when the state information of the traffic signal lamp is issued may refer to the time when the state information is issued by the network device or the cloud.
  • the current lighting colors can include: green, red, yellow, and off.
  • the light-on time forecast information may include red light time forecast information, yellow light time forecast information, and green light time forecast information.
  • the red light time forecast information may refer to the time when the next red light is on.
  • Table 5 is an example of the format of the status information of traffic lights.
  • the autonomous vehicle can determine the driving action of the autonomous vehicle according to at least one of the following information:
  • the current time the distance between the self-driving vehicle and the intersection, the current speed of the self-driving vehicle, the time when the traffic signal status information is issued, the current color of the traffic signal, and the forecast information about the time when the traffic signal is on.
  • the aforementioned driving actions include: stop, go straight, turn left, turn right, or turn around.
  • the following is a list of processing methods when an autonomous vehicle performs driving control based on at least one of the above-mentioned information.
  • the self-driving vehicle can predict the light color of the self-driving vehicle when it arrives at the intersection in advance based on the current time, the distance between the self-driving vehicle and the intersection, the current speed of the self-driving vehicle, and the forecast information of the time when the traffic signal lights are on.
  • the driving action of the vehicle is controlled according to the predicted color.
  • the prediction result is a green light
  • the prediction result needs to be dynamically updated according to the speed change of the autonomous vehicle.
  • the prediction result is a yellow light or a red light, the vehicle will decelerate.
  • the autonomous vehicle can determine the time when the autonomous vehicle arrives at the intersection based on the current time, the distance between the autonomous vehicle and the intersection, and the current driving speed of the autonomous vehicle. At the same time, the autonomous vehicle forecasts information based on the time when the traffic signal lights are on. It is determined that the green light is on when the vehicle arrives at the intersection, and the autonomous vehicle continues to monitor the vehicle speed. When the vehicle speed changes, the above method is used again to predict the color of the light when it arrives at the intersection, and the light will be lighted according to the latest prediction when it actually arrives at the intersection. The color controls the autonomous vehicle to continue driving in a certain direction or stop.
  • the self-driving vehicle can determine the time when the self-driving vehicle arrives at the intersection based on the current time, the distance between the self-driving vehicle and the intersection, and the current driving speed of the self-driving vehicle. At the same time, the self-driving vehicle predicts the time when the traffic signal lights are on. The information determines that the red light is on when the vehicle arrives at the intersection, and the autonomous vehicle can control the autonomous vehicle to decelerate.
  • an autonomous vehicle when it arrives at an intersection, it can determine the current light color of the traffic signal light and control the driving action of the vehicle based on the current time, the time when the traffic signal status information is issued, and the current light color.
  • the light color at the current time is the current light color in the issued status information.
  • the color of the light is controlled since the vehicle continues to drive in a certain direction or stops.
  • the current time is 2:01
  • the traffic signal status information is issued at 2:05 seconds, that is, 55 seconds have elapsed since the time the status information was issued.
  • the lighting time is 90 seconds, which means that the current time has not passed the time of the traffic signal color conversion. Therefore, the actual lighting color at the current time is the current lighting color in the status information. Therefore, the self-driving vehicle can follow the current status in the status information.
  • the color of the lights controls the autonomous vehicle to continue driving in a certain direction or stop.
  • the self-driving vehicle starts when the distance from the intersection is the preset distance, and continuously obtains the current lighting color according to the preset cycle, and controls the automatic control based on the current lighting color in the last cycle before reaching the intersection.
  • the driving action of driving a vehicle is the first method.
  • the current lighting color of the last cycle before the autonomous vehicle arrives at the intersection is red, and the autonomous vehicle stops when it reaches the intersection.
  • the aforementioned period may be a period of distance, for example, every 50 meters is a period, or it may also be a period of time, for example, every 0.5 second is a period.
  • FIG. 15 is a block diagram of an automatic driving control device provided by an embodiment of the application.
  • the device may be the aforementioned automatic driving vehicle, or it may be capable of enabling the automatic driving vehicle to realize the automatic driving in the method provided by the embodiment of the application.
  • the device of the vehicle function, for example, the device may be a device or a chip system in an autonomous driving vehicle.
  • the device includes: a processing unit 1501.
  • the processing unit 1501 is configured to determine the identifier of the current lane, obtain state information of the traffic signal lamp associated with the lane according to the lane identifier, and perform driving control according to the state information of the traffic signal lamp.
  • processing unit 1501 is specifically configured to:
  • the identification of the traffic signal light associated with the lane is determined according to the identification of the lane; and the state information of the traffic signal light associated with the lane is obtained from a network device or the cloud.
  • the foregoing apparatus further includes: a transceiver unit 1502.
  • the transceiver unit 1502 is configured to send request information to the network device or the cloud, where the request information is used to obtain the status information of the traffic signal lamp associated with the lane; and to receive the lane association from the network device or the cloud Information about the status of traffic lights.
  • the identifier of the traffic signal lamp associated with the lane is a part of the request information.
  • processing unit 1501 is specifically configured to:
  • processing unit 1501 is specifically configured to:
  • the identification of the current lane is determined.
  • processing unit 1501 is specifically configured to:
  • the identifier of the lane where the vehicle is located after the lane change is determined, and the identifier of the lane where it is located after the lane change is used as the identifier of the current lane.
  • the state information of the traffic signal lamp associated with the lane includes at least one of the following information:
  • the identifier of the traffic signal light The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
  • processing unit 1501 is specifically configured to:
  • the current time the distance between the autonomous driving vehicle and the intersection, the current driving speed of the autonomous driving vehicle, the time when the traffic signal status information is issued, the current lighting color of the traffic signal, and the forecast of the traffic signal lighting time information.
  • the driving action includes: stopping, going straight, turning left, turning right or turning around.
  • the lane markings include at least one of the following:
  • the mark of the lane line of the lane The mark of the lane line of the lane, the mark of the lane stop line of the lane, the mark of the lane center line of the lane, and the mark of the lane node of the lane.
  • the automatic driving control device provided in the embodiment of the present application can execute the method steps in the above method embodiment, and its implementation principles and technical effects are similar, and will not be repeated here.
  • FIG. 16 is a module structure diagram of an information processing device provided by an embodiment of this application.
  • the device can be the aforementioned network device or cloud, or it can enable the network device or cloud to implement the network in the method provided by the embodiment of this application.
  • a device or a cloud-enabled device may be a network device or a device in the cloud or a chip system.
  • the device includes: a processing unit 1601 and a transceiver unit 1602.
  • the processing unit 1601 is configured to obtain state information of at least one traffic signal light.
  • the transceiver unit 1602 is used to send traffic signal status information to the autonomous vehicle.
  • the transceiver unit 1602 is specifically configured to:
  • Receive request information sent by a target autonomous driving vehicle where the request information is used to obtain status information of a traffic signal associated with the lane where the target autonomous driving vehicle is currently located.
  • the processing unit 1601 is further configured to: obtain state information of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located according to the identifier of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located.
  • the transceiver unit 1602 is specifically configured to send the state information of the traffic signal lamp associated with the lane to the target autonomous driving vehicle.
  • the identifier of the traffic signal light associated with the lane where the target autonomous driving vehicle is currently located is part of the request information.
  • the transceiver unit 1602 is specifically configured to:
  • processing unit 1601 is specifically configured to:
  • the information processing device provided in the embodiment of the present application can execute the method steps in the above method embodiment, and its implementation principles and technical effects are similar, and will not be repeated here.
  • the division of the various modules of the above device is only a division of logical functions, and may be fully or partially integrated into a physical entity during actual implementation, or may be physically separated.
  • these modules can all be implemented in the form of software called by processing elements; they can also be implemented in the form of hardware; some modules can be implemented in the form of calling software by processing elements, and some of the modules can be implemented in the form of hardware.
  • the determining module may be a separately established processing element, or it may be integrated in a certain chip of the above-mentioned device for implementation.
  • each step of the above method or each of the above modules can be completed by an integrated logic circuit of hardware in the processor element or instructions in the form of software.
  • the above modules may be one or more integrated circuits configured to implement the above methods, such as: one or more application specific integrated circuits (ASIC), or one or more microprocessors (digital signal processor, DSP), or, one or more field programmable gate arrays (FPGA), etc.
  • ASIC application specific integrated circuit
  • DSP digital signal processor
  • FPGA field programmable gate arrays
  • the processing element may be a general-purpose processor, such as a central processing unit (CPU) or other processors that can call program codes.
  • CPU central processing unit
  • these modules can be integrated together and implemented in the form of a system-on-a-chip (SOC).
  • SOC system-on-a-chip
  • the computer program product includes one or more computer instructions.
  • the computer may be a general-purpose computer, a special-purpose computer, a computer network, or other programmable devices.
  • the computer instructions may be stored in a computer-readable storage medium, or transmitted from one computer-readable storage medium to another computer-readable storage medium. For example, the computer instructions may be transmitted from a website, computer, server, or data center.
  • the computer-readable storage medium may be any available medium that can be accessed by a computer or a data storage device such as a server or a data center integrated with one or more available media.
  • the usable medium may be a magnetic medium (for example, a floppy disk, a hard disk, and a magnetic tape), an optical medium (for example, a DVD), or a semiconductor medium (for example, a solid state disk (SSD)).
  • the transceiver unit 1502 and the transceiver unit 1602 can be a transmitting unit or a transmitter when sending information, and the transceiver unit 1502 and the transceiver unit 1602 are receiving
  • the information can be a receiving unit or a receiver
  • the transceiver unit can be a transceiver
  • the transceiver, transmitter or receiver can be a radio frequency circuit.
  • the storage unit is used to store computer instructions
  • the processing unit 1501 or 1601 is in communication with the storage unit, and the processing unit 1501 or 1601 executes the computer instructions stored in the storage unit , Make the automatic driving processing device and the information processing device execute the methods involved in the embodiments of Figs. 10-13.
  • the processing unit may be a general-purpose central processing unit (CPU), a microprocessor, or a specific ASIC.
  • the transceiving unit 1502 and the transceiving unit 1602 may be input and/or output interfaces, pins, or circuits.
  • the processing unit 1501 or the processing unit 1601 can execute the computer-executable instructions stored in the storage unit, so that the automatic driving processing device or the chip in the information processing device executes the methods involved in FIGS. 10 to 13.
  • the storage unit is a storage unit in the chip, such as a register, a cache, etc.
  • the storage unit may also be a storage unit located outside the chip in the automatic driving processing device or the information processing device , Such as read only memory (Read Only Memory, ROM) or other types of static storage devices that can store static information and instructions, random access memory (Random Access Memory, RAM), etc.
  • Read Only Memory ROM
  • RAM Random Access Memory
  • FIG. 17 is a schematic structural diagram of a communication device provided by an embodiment of this application.
  • the communication device may be the self-driving vehicle described in the foregoing embodiment, or may be the network device or the cloud described in the foregoing embodiment.
  • the communication device 1700 may include: a processor 171 (for example, a CPU), a memory 172, and a transceiver 173; the transceiver 173 is coupled to the processor 171, and the processor 171 controls the transceiver 173 to send and receive actions.
  • Various instructions may be stored in the memory 172 to complete various processing functions and implement method steps executed by the autonomous vehicle or network device or cloud in the embodiments of the present application.
  • the communication device involved in the embodiment of the present application may further include: a power supply 174, a system bus 175, and a communication port 176.
  • the transceiver 173 may be integrated in the transceiver of the communication device, or may be an independent transceiver antenna on the communication device.
  • the system bus 175 is used to implement communication connections between components.
  • the above-mentioned communication port 176 is used to realize connection and communication between the communication device and other peripherals.
  • the above-mentioned processor 171 is configured to couple with the memory 172 to read and execute instructions in the memory 172 to implement the method steps executed by the autonomous vehicle or network device or the cloud in the above method embodiment.
  • the transceiver 173 is coupled with the processor 171, and the processor 171 controls the transceiver 173 to send and receive messages.
  • the implementation principles and technical effects are similar, and will not be repeated here.
  • the system bus mentioned in FIG. 17 may be a peripheral component interconnect standard (PCI) bus or an extended industry standard architecture (EISA) bus, etc.
  • PCI peripheral component interconnect standard
  • EISA extended industry standard architecture
  • the system bus can be divided into an address bus, a data bus, a control bus, and the like. For ease of representation, only one thick line is used in the figure, but it does not mean that there is only one bus or one type of bus.
  • the communication interface is used to realize the communication between the database access device and other devices (such as the client, the read-write library and the read-only library).
  • the memory may include RAM, or may also include non-volatile memory, such as at least one disk memory.
  • the processor mentioned in Figure 17 may be a general-purpose processor, including a central processing unit (CPU) and a network processor.
  • CPU central processing unit
  • network processor a network processor
  • network processor network processor, NP
  • NP network processor
  • DSP digital signal processor
  • ASIC application specific integrated circuit
  • FPGA field programmable gate array
  • an embodiment of the present application further provides a readable storage medium, which stores instructions in the storage medium, which when run on a computer, causes the computer to execute the method in the above-mentioned embodiments shown in FIGS. 10 to 13 .
  • an embodiment of the present application further provides a chip for executing instructions, and the chip is configured to execute the method of the embodiment shown in FIG. 10 to FIG. 13.
  • An embodiment of the present application further provides a program product, the program product includes a computer program, the computer program is stored in a storage medium, at least one processor can read the computer program from the storage medium, and the at least one When the processor executes the computer program, the method of the embodiment shown in FIG. 10 to FIG. 13 can be implemented.
  • At least one refers to one or more, and “multiple” refers to two or more.
  • “And/or” describes the association relationship of the associated objects, indicating that there can be three relationships, for example, A and/or B, which can mean: A alone exists, A and B exist at the same time, and B exists alone, where A, B can be singular or plural.
  • the character “/” generally indicates that the associated objects before and after are in an “or” relationship; in the formula, the character “/” indicates that the associated objects before and after are in a “division” relationship.
  • “The following at least one item (a)” or similar expressions refers to any combination of these items, including any combination of a single item (a) or a plurality of items (a).
  • at least one of a, b, or c can mean: a, b, c, ab, ac, bc, or abc, where a, b, and c can be single or multiple indivual.
  • the size of the sequence numbers of the above-mentioned processes does not mean the order of execution.
  • the execution order of the processes should be determined by their functions and internal logic, and should not correspond to the embodiments of the present application.
  • the implementation process constitutes any limitation.

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Abstract

An automatic driving control method and apparatus, an information processing method and apparatus, and a system. The automatic driving control method comprises: an automatic driving vehicle determines an identifier of the current lane (S1001); the automatic driving vehicle obtains status information of a traffic light associated with the lane according to the identifier of the lane (S1002); the automatic driving vehicle performs driving control according to the status information of the traffic light (S1003). The method can avoid misjudgment of information of the traffic light, thereby ensuring that the automatic driving vehicle can correctly drive according to the traffic rule.

Description

自动驾驶控制方法、信息处理方法、装置及系统Automatic driving control method, information processing method, device and system 技术领域Technical field
本申请实施例涉及智能汽车技术,尤其涉及一种自动驾驶控制方法、信息处理方法、装置及系统。The embodiments of the present application relate to smart car technology, and in particular to an automatic driving control method, information processing method, device, and system.
背景技术Background technique
自动驾驶车辆(也可以称为无人驾驶车辆)是一种通过自动驾驶系统自动控制运行的车辆,自动驾驶车辆通过系统为主人工为辅的方式完成驾驶或者全部由自动驾驶系统完成驾驶,因此,是车辆未来发展的重要方向。自动驾系统可以利用人工智能、视觉计算、雷达、监控装置以及全球定位系统等进行协同合作,以控制车辆行驶。自动驾驶车辆在行驶时需要遵守交通规则,因此,首先需要自动驾驶系统识别道路环境中的标识以及交通指示信息等,进而根据标识以及交通指示信息控制车辆行驶。标识可以包括车道线、道路一侧的花坛、路牙、障碍物等。交通指示信息可以指交通信号灯的信息。其中,交通信号灯的信息是控制车辆行驶的重要依据,因此,如何准确识别出交通信号灯的信息,是亟待解决的问题。An autonomous vehicle (also called an unmanned vehicle) is a vehicle that is automatically controlled and operated by an autopilot system. The autopilot vehicle completes the driving through the system as the main and manual auxiliary or is completely driven by the autopilot system. Therefore, , Is an important direction for the future development of vehicles. Autonomous driving systems can use artificial intelligence, visual computing, radar, monitoring devices, and global positioning systems to coordinate and cooperate to control vehicle driving. Autonomous vehicles need to abide by traffic rules when driving. Therefore, the autopilot system first needs to recognize signs and traffic instruction information in the road environment, and then control the vehicle to drive according to the signs and traffic instruction information. Signs can include lane lines, flower beds on the side of the road, curbs, obstacles, etc. The traffic indication information may refer to the information of the traffic signal light. Among them, the information of the traffic signal light is an important basis for controlling the driving of the vehicle. Therefore, how to accurately identify the information of the traffic signal light is a problem to be solved urgently.
现有技术中,自动驾驶车辆基于纯视觉方式识别交通信号灯的信息。具体的,由设置在自动驾驶车辆上的车载摄像头采集车辆前方的图像,自动驾驶车辆对图像进行识别处理,识别出当前的交通信号灯的形状以及颜色,并据此控制车辆正常行驶或停止等。In the prior art, self-driving vehicles recognize the information of traffic lights based on purely visual methods. Specifically, the on-board camera installed on the self-driving vehicle collects the image in front of the vehicle, and the self-driving vehicle recognizes the image, recognizes the shape and color of the current traffic light, and controls the vehicle to run normally or stop accordingly.
但是,使用现有技术的方法,在一些场景下可能出现对交通信号灯的信息的误判,进而导致自动驾驶车辆无法按照交通规则正确行驶。However, using the method of the prior art, misjudgment of the information of the traffic signal may occur in some scenarios, which may cause the autonomous vehicle to fail to drive correctly in accordance with the traffic rules.
发明内容Summary of the invention
本申请实施例提供一种自动驾驶控制方法、信息处理方法、装置及系统,用于解决现有技术中由于可能出现对交通信号灯信息的误判所导致的自动驾驶车辆无法按照交通规则正确行驶的问题。The embodiments of the present application provide an automatic driving control method, information processing method, device and system, which are used to solve the problem in the prior art that the automatic driving vehicle cannot drive correctly in accordance with traffic rules due to the possible misjudgment of traffic signal information. problem.
第一方面,本申请实施例提供一种自动驾驶控制方法,该方法包括:In the first aspect, an embodiment of the present application provides an automatic driving control method, which includes:
自动驾驶车辆确定当前所在车道的标识,并根据该车道的标识,获取该车道关联的交通信号灯的状态信息,自动驾驶车辆进而根据所述交通信号灯的状态信息进行驾驶控制。The self-driving vehicle determines the sign of the current lane, and obtains the status information of the traffic signal light associated with the lane according to the sign of the lane, and the self-driving vehicle then performs driving control according to the status information of the traffic signal.
在该方法中,自动驾驶车辆在确定出当前所在车道的标识之后,根据当前所在车道的标识,可以确定出当前所在车道关联的交通信号灯的状态信息,并根据交通信号灯的状态信息进行驾驶控制。该过程中,自动驾驶车辆是基于车道与交通信号灯之间的关联关系获取控制该条车道上车辆的交通信号灯的状态信息,因此,即使在一些特殊场景下,例如自动驾驶车辆的车头偏离车道方向、交通信号灯被其他方向的交通信号灯干扰、恶劣天气等场景下,自动驾驶车辆仍然可以准确确定出与当前所在车道关联的交通信号灯的状态信息,从而避免出现对交通信号灯的信息的误判,进而保证自动驾驶车辆可以按照交通规则正确 行驶。In this method, after the self-driving vehicle determines the sign of the current lane, according to the sign of the current lane, the state information of the traffic signal associated with the current lane can be determined, and the driving control is performed according to the state information of the traffic signal. In this process, the autonomous vehicle obtains the state information of the traffic signal light that controls the vehicle on the lane based on the association relationship between the lane and the traffic light. Therefore, even in some special scenarios, for example, the head of the autonomous vehicle deviates from the lane direction. , Traffic signal lights are interfered by traffic lights in other directions, bad weather and other scenarios, autonomous vehicles can still accurately determine the status information of the traffic lights associated with the current lane, so as to avoid misjudgment of the information of the traffic lights, and then Ensure that autonomous vehicles can drive correctly in accordance with traffic regulations.
在一种可能的设计中,自动驾驶车辆可以根据上述车道的标识确定该车道关联的交通信号灯的标识,并从网络设备或云端获取该车道关联的交通信号灯的状态信息。In a possible design, the self-driving vehicle may determine the identification of the traffic light associated with the lane according to the identification of the above-mentioned lane, and obtain the state information of the traffic light associated with the lane from the network device or the cloud.
在该方法中,使用车道的标识与交通信号灯的标识的关联关系来记录车道与交通信号灯的关联关系,当自动驾驶车辆确定出所在车道的标识后,可以根据车道的标识确定出关联的交通信号灯的标识,并据此获取交通信号灯的状态。由于车道的标识和交通信号灯的标识分别可以在特定范围内唯一标识一个车道和一个交通信号灯,因此,利用车道的标识确定交通信号灯的标识,可以保证所确定出的交通信号灯的准确性。In this method, the association relationship between the lane mark and the traffic light mark is used to record the association relationship between the lane and the traffic light. When the autonomous vehicle determines the lane mark, the associated traffic light can be determined according to the lane mark. , And obtain the status of traffic lights based on this. Since the lane mark and the traffic light mark can uniquely identify a lane and a traffic light within a specific range, respectively, using the lane mark to determine the traffic light mark can ensure the accuracy of the determined traffic light.
在一种可能的设计中,自动驾驶车辆从网络设备或云端获取所述车道关联的交通信号灯的状态信息的一种方式包括:In a possible design, one way for the autonomous vehicle to obtain the state information of the traffic signal light associated with the lane from a network device or the cloud includes:
自动驾驶车辆向网络设备或云端发送请求信息,该请求信息用于获取上述车道关联的交通信号灯的状态信息,自动驾驶车辆接收来自上述网络设备或云端的车道关联的交通信号灯的状态信息。The self-driving vehicle sends request information to the network device or the cloud. The request information is used to obtain the state information of the traffic light associated with the lane, and the self-driving vehicle receives the state information of the traffic light associated with the lane from the network device or the cloud.
在该方法中,自动驾驶车辆通过向网络设备或云端发送请求信息以获取交通信号灯的状态信息,可以使得自动驾驶车辆按需进行消息发送和接收,减少处理的消息的数量。In this method, the self-driving vehicle obtains the status information of the traffic signal by sending request information to the network device or the cloud, so that the self-driving vehicle can send and receive messages on demand, reducing the number of processed messages.
在一种可能的设计中,上述车道关联的交通信号灯的标识为上述请求信息的一部分。In a possible design, the identifier of the traffic signal light associated with the lane is a part of the request information.
在一种可能的设计中,自动驾驶车辆从网络设备或云端获取所述车道关联的交通信号灯的状态信息的另一种方式包括:In a possible design, another way for the autonomous vehicle to obtain the state information of the traffic signal light associated with the lane from a network device or the cloud includes:
自动驾驶车辆接收来自网络设备或云端的至少一个交通信号灯的状态信息,自动驾驶车辆根据所述车道关联的交通信号灯的标识,从所述至少一个交通信号灯的状态信息中获取所述车道关联的交通信号灯的状态信息。The autonomous vehicle receives the state information of at least one traffic signal from the network device or the cloud, and the autonomous vehicle obtains the traffic associated with the lane from the state information of the at least one traffic signal according to the identifier of the traffic signal associated with the lane. The status information of the semaphore.
在该方法中,网络设备或云端实时广播各交通信号灯的状态信息,自动驾驶车辆根据当前所在车道关联的交通信号灯的标识匹配出交通信号灯的状态信息,从而可以减少自动驾驶车辆与网络设备或云端之间的交互次数,提升处理速度。In this method, the network equipment or the cloud broadcasts the status information of each traffic signal in real time, and the autonomous vehicle matches the status information of the traffic signal according to the identifier of the traffic signal associated with the current lane, thereby reducing the number of autonomous vehicles and network equipment or the cloud. The number of interactions between them improves the processing speed.
在一种可能的设计中,所述自动驾驶车辆确定当前所在车道的标识,包括:In a possible design, the automatic driving vehicle determining the current lane marking includes:
若所述自动驾驶车辆与目标路口的距离小于预设阈值,则所述自动驾驶车辆确定当前所在车道的标识。If the distance between the self-driving vehicle and the target intersection is less than a preset threshold, the self-driving vehicle determines the identity of the lane where it is currently located.
在一种可能的设计中,所述自动驾驶车辆确定当前所在车道的标识,还包括:In a possible design, the automatic driving vehicle to determine the current lane markings further includes:
若所述自动驾驶车辆发生变道,则所述自动驾驶车辆确定变道后所在车道的标识;If the automatic driving vehicle changes lanes, the automatic driving vehicle determines the lane markings where the automatic driving vehicle is located after the lane change;
所述自动驾驶车辆将所述变道后所在车道的标识作为当前所在车道的标识。The self-driving vehicle uses the identifier of the lane where the vehicle is located after the lane change as the identifier of the lane where it is currently located.
在一种可能的设计中,所述车道关联的交通信号灯的状态信息包括以下信息中的至少一种:In a possible design, the state information of the traffic signal lamp associated with the lane includes at least one of the following information:
所述交通信号灯的标识、所述交通信号灯的类型、所述交通信号灯状态信息下发时刻、当前的亮灯颜色、亮灯时刻预报信息。The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
在该方法中,自动驾驶车辆能够获取到的上述的至少一种状态信息,基于这些状态信息,自动驾驶车辆可以在未到达路口时即开始控制自动车辆减速等,使得自动驾驶控制与实际的路况更加匹配。In this method, the self-driving vehicle can obtain at least one of the above-mentioned state information. Based on the state information, the self-driving vehicle can start to control the automatic vehicle deceleration before reaching the intersection, so that the automatic driving control is consistent with the actual road conditions. More matching.
在一种可能的设计中,所述自动驾驶车辆根据所述交通信号灯的状态信息进行驾驶控制,包括:In a possible design, the driving control of the autonomous vehicle according to the state information of the traffic signal light includes:
所述自动驾驶车辆根据以下信息中的至少一种确定所述自动驾驶车辆的驾驶动作:The self-driving vehicle determines the driving action of the self-driving vehicle according to at least one of the following information:
当前时刻、所述自动驾驶车辆与路口的距离、所述自动驾驶车辆当前行驶速度、所述交通信号灯状态信息下发时刻、所述交通信号灯当前的亮灯颜色、所述交通信号灯亮灯时刻预报信息;The current time, the distance between the autonomous driving vehicle and the intersection, the current driving speed of the autonomous vehicle, the time when the traffic signal status information is issued, the current lighting color of the traffic signal, and the forecast of the traffic signal lighting time information;
所述驾驶动作包括:停止、直行、左转、右转或掉头。The driving action includes: stopping, going straight, turning left, turning right or turning around.
在一种可能的设计中,所述车道的标识包括以下至少一种:In a possible design, the lane markings include at least one of the following:
所述车道的车道线的标识、所述车道的车道停止线的标识、所述车道的车道中心线的标识、所述车道的车道节点的标识。The mark of the lane line of the lane, the mark of the lane stop line of the lane, the mark of the lane center line of the lane, and the mark of the lane node of the lane.
第二方面,本申请实施例提供一种信息处理方法,该方法包括:In the second aspect, an embodiment of the present application provides an information processing method, which includes:
获取至少一个交通信号灯的状态信息,向自动驾驶车辆发送交通信号灯的状态信息。Obtain the status information of at least one traffic signal, and send the status information of the traffic signal to the self-driving vehicle.
在该方法中,通过获取交通信号灯的状态信息并向自动驾驶车辆发送该状态信息,可以使得自动驾驶车辆获取到准确的交通信号灯状态信息,避免出现对交通信号灯的误判,进而保证自动驾驶车辆可以按照交通规则正确行驶。In this method, by acquiring the status information of the traffic signal and sending the status information to the autonomous vehicle, the autonomous vehicle can obtain accurate traffic signal status information, avoiding misjudgments of the traffic signal, and ensuring the autonomous vehicle You can drive correctly in accordance with traffic rules.
在一种可能的设计中,所述向自动驾驶车辆发送交通信号灯的状态信息,包括:In a possible design, the sending the state information of the traffic signal light to the self-driving vehicle includes:
接收目标自动驾驶车辆发送的请求信息,所述请求信息用于获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息,根据所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识,获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息;向所述目标自动驾驶车辆发送所述车道关联的交通信号灯的状态信息。Receive request information sent by the target autonomous vehicle, the request information is used to obtain the status information of the traffic signal associated with the lane where the target autonomous vehicle is currently located, according to the identifier of the traffic signal associated with the lane where the target autonomous vehicle is currently located Acquire the state information of the traffic signal lamp associated with the lane where the target autonomous driving vehicle is currently located; and send the state information of the traffic signal lamp associated with the lane to the target autonomous vehicle.
在该方法中,自动驾驶车辆通过向网络设备或云端发送请求信息以获取交通信号灯的状态信息,可以使得自动驾驶车辆按需进行消息发送和接收,减少处理的消息的数量。In this method, the self-driving vehicle obtains the status information of the traffic signal by sending request information to the network device or the cloud, so that the self-driving vehicle can send and receive messages on demand, reducing the number of processed messages.
在一种可能的设计中,所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识为所述请求信息的一部分。In a possible design, the identifier of the traffic signal light associated with the lane where the target autonomous driving vehicle is currently located is part of the request information.
在一种可能的设计中,所述向自动驾驶车辆发送交通信号灯的状态信息,包括:In a possible design, the sending the state information of the traffic signal light to the self-driving vehicle includes:
向至少一个自动驾驶车辆广播至少一个交通信号灯的状态信息。Broadcast the status information of at least one traffic light to at least one autonomous vehicle.
在该方法中,实时广播各交通信号灯的状态信息,使得自动驾驶车辆可以根据当前所在车道关联的交通信号灯的标识匹配出交通信号灯的状态信息,从而可以减少自动驾驶车辆与网络设备或云端之间的交互次数,提升处理速度。In this method, the status information of each traffic signal is broadcasted in real time, so that the autonomous vehicle can match the status information of the traffic signal according to the identifier of the traffic signal associated with the current lane, thereby reducing the communication between the autonomous vehicle and the network equipment or the cloud. The number of interactions increases the processing speed.
在一种可能的设计中,所述获取至少一个交通信号灯的状态信息,包括:In a possible design, the acquiring state information of at least one traffic signal light includes:
从交通信号灯控制系统获取至少一个交通信号灯的状态信息。Obtain the status information of at least one traffic light from the traffic light control system.
在一种可能的设计中,所述交通信号灯的状态信息包括以下信息中的至少一种:In a possible design, the state information of the traffic signal light includes at least one of the following information:
所述交通信号灯的标识、所述交通信号灯的类型、所述交通信号灯状态信息下发时刻、当前的亮灯颜色、亮灯时刻预报信息。The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
第三方面,本申请实施例提供一种自动驾驶控制装置,其特征在于,包括:处理单元;In a third aspect, an embodiment of the present application provides an automatic driving control device, which is characterized in that it includes: a processing unit;
所述处理单元,用于确定当前所在车道的标识,根据所述车道的标识,获取所述车道关联的交通信号灯的状态信息,以及,根据所述交通信号灯的状态信息进行驾驶控制。The processing unit is configured to determine the identifier of the current lane, obtain the state information of the traffic signal lamp associated with the lane according to the identifier of the lane, and perform driving control according to the state information of the traffic signal lamp.
在一种可能的设计中,所述处理单元具体用于:In a possible design, the processing unit is specifically configured to:
根据所述车道的标识确定所述车道关联的交通信号灯的标识;以及,从网络设备或云端获取所述车道关联的交通信号灯的状态信息。The identification of the traffic signal light associated with the lane is determined according to the identification of the lane; and the state information of the traffic signal light associated with the lane is obtained from a network device or the cloud.
在一种可能的设计中,所述装置还包括:收发单元。In a possible design, the device further includes: a transceiver unit.
所述收发单元,用于向所述网络设备或云端发送请求信息,所述请求信息用于获取所述车道关联的交通信号灯的状态信息;以及,接收来自所述网络设备或云端的所述车道关联的交通信号灯的状态信息。The transceiver unit is configured to send request information to the network device or the cloud, where the request information is used to obtain the status information of the traffic signal lamp associated with the lane; and, to receive the lane from the network device or the cloud The status information of the associated traffic lights.
在一种可能的设计中,所述车道关联的交通信号灯的标识为所述请求信息的一部分。In a possible design, the identifier of the traffic signal light associated with the lane is a part of the request information.
在一种可能的设计中,所述处理单元具体用于:In a possible design, the processing unit is specifically configured to:
接收来自所述网络设备或云端的至少一个交通信号灯的状态信息;以及,根据所述车道关联的交通信号灯的标识,从所述至少一个交通信号灯的状态信息中获取所述车道关联的交通信号灯的状态信息。Receiving the status information of at least one traffic signal light from the network device or the cloud; and, according to the identification of the traffic signal light associated with the lane, obtaining the status information of the traffic signal light associated with the lane from the status information of the at least one traffic light status information.
在一种可能的设计中,所述处理单元具体用于:In a possible design, the processing unit is specifically configured to:
在自动驾驶车辆与目标路口的距离小于预设阈值时,确定当前所在车道的标识。When the distance between the autonomous vehicle and the target intersection is less than the preset threshold, the identification of the current lane is determined.
在一种可能的设计中,所述处理单元具体用于:In a possible design, the processing unit is specifically configured to:
在自动驾驶车辆发生变道时,确定变道后所在车道的标识,并将所述变道后所在车道的标识作为当前所在车道的标识。When the automatic driving vehicle changes lanes, the identifier of the lane where the vehicle is located after the lane change is determined, and the identifier of the lane where it is located after the lane change is used as the identifier of the current lane.
在一种可能的设计中,所述车道关联的交通信号灯的状态信息包括以下信息中的至少一种:In a possible design, the state information of the traffic signal lamp associated with the lane includes at least one of the following information:
所述交通信号灯的标识、所述交通信号灯的类型、所述交通信号灯状态信息下发时刻、当前的亮灯颜色、亮灯时刻预报信息。The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
在一种可能的设计中,所述处理单元具体用于:In a possible design, the processing unit is specifically configured to:
根据以下信息中的至少一种确定自动驾驶车辆的驾驶动作:Determine the driving action of the autonomous vehicle based on at least one of the following information:
当前时刻、所述自动驾驶车辆与路口的距离、所述自动驾驶车辆当前行驶速度、所述交通信号灯状态信息下发时刻、所述交通信号灯当前的亮灯颜色、所述交通信号灯亮灯时刻预报信息;The current time, the distance between the autonomous driving vehicle and the intersection, the current driving speed of the autonomous driving vehicle, the time when the traffic signal status information is issued, the current lighting color of the traffic signal, and the forecast of the traffic signal lighting time information;
所述驾驶动作包括:停止、直行、左转、右转或掉头。The driving action includes: stopping, going straight, turning left, turning right or turning around.
在一种可能的设计中,所述车道的标识包括如下至少一种:In a possible design, the lane markings include at least one of the following:
所述车道的车道线的标识、所述车道的车道停止线的标识、所述车道的车道中心线的标识、所述车道的车道节点的标识。The identification of the lane line of the lane, the identification of the lane stop line of the lane, the identification of the lane center line of the lane, and the identification of the lane node of the lane.
第四方面,本申请实施例提供一种信息处理装置,包括:处理单元和收发单元。In a fourth aspect, an embodiment of the present application provides an information processing device, including: a processing unit and a transceiver unit.
所述处理单元,用于获取至少一个交通信号灯的状态信息;The processing unit is used to obtain state information of at least one traffic signal light;
所述收发单元,用于向自动驾驶车辆发送交通信号灯的状态信息。The transceiver unit is used to send the state information of the traffic signal light to the self-driving vehicle.
在一种可能的设计中,所述收发单元具体用于:In a possible design, the transceiver unit is specifically configured to:
接收目标自动驾驶车辆发送的请求信息,所述请求信息用于获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息。Receive request information sent by a target autonomous driving vehicle, where the request information is used to obtain status information of a traffic signal associated with the lane where the target autonomous driving vehicle is currently located.
所述处理单元还用于:根据所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识,获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息;The processing unit is further configured to: obtain state information of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located according to the identifier of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located;
所述收发单元具体用于:向所述目标自动驾驶车辆发送所述车道关联的交通信号灯的状态信息。The transceiver unit is specifically configured to send the state information of the traffic signal lamp associated with the lane to the target autonomous driving vehicle.
在一种可能的设计中,所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识为所述请求信息的一部分。In a possible design, the identifier of the traffic signal light associated with the lane where the target autonomous driving vehicle is currently located is part of the request information.
在一种可能的设计中,所述收发单元具体用于:In a possible design, the transceiver unit is specifically configured to:
向至少一个自动驾驶车辆广播至少一个交通信号灯的状态信息。Broadcast the status information of at least one traffic light to at least one autonomous vehicle.
在一种可能的设计中,所述处理单元具体用于:In a possible design, the processing unit is specifically configured to:
从交通信号灯控制系统获取至少一个交通信号灯的状态信息。Obtain the status information of at least one traffic light from the traffic light control system.
在一种可能的设计中,所述交通信号灯的状态信息包括以下信息中的至少一种:In a possible design, the state information of the traffic signal light includes at least one of the following information:
所述交通信号灯的标识、所述交通信号灯的类型、所述交通信号灯状态信息下发时刻、当前的亮灯颜色、亮灯时刻预报信息。The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
第五方面,本申请实施例提供一种通信装置,包括处理器,所述处理器与存储器相连,所述存储器用于存储计算机程序,所述处理器用于执行所述存储器中存储的计算机程序,以使得所述装置执行上述第一方面所述的方法。In a fifth aspect, an embodiment of the present application provides a communication device, including a processor, the processor is connected to a memory, the memory is used to store a computer program, and the processor is used to execute the computer program stored in the memory, So that the device executes the method described in the first aspect.
第六方面,本申请实施例提供一种通信装置,包括处理器,所述处理器与存储器相连,所述存储器用于存储计算机程序,所述处理器用于执行所述存储器中存储的计算机程序,以使得所述装置执行上述第二方面所述的方法。In a sixth aspect, an embodiment of the present application provides a communication device, including a processor, the processor is connected to a memory, the memory is used to store a computer program, and the processor is used to execute the computer program stored in the memory, So that the device executes the method described in the second aspect above.
第七方面,本申请实施例提供一种计算机可读存储介质,所述计算机可读存储介质存储有计算机程序,当所述计算机程序被运行时,实现上述第一方面所述的方法。In a seventh aspect, an embodiment of the present application provides a computer-readable storage medium, the computer-readable storage medium stores a computer program, and when the computer program is executed, the method described in the first aspect is implemented.
第八方面,本申请实施例提供一种计算机可读存储介质,所述计算机可读存储介质存储有计算机程序,当所述计算机程序被运行时,实现上述第二方面所述的方法。In an eighth aspect, an embodiment of the present application provides a computer-readable storage medium that stores a computer program, and when the computer program is executed, the method described in the second aspect is implemented.
第九方面,本申请实施例提供一种芯片,包括处理器和接口。In a ninth aspect, an embodiment of the present application provides a chip including a processor and an interface.
所述处理器用于读取指令以执行上述第一方面所述的自动驾驶控制方法。The processor is configured to read instructions to execute the automatic driving control method described in the first aspect.
第十方面,本申请实施例提供一种芯片,包括处理器和接口。In a tenth aspect, an embodiment of the present application provides a chip including a processor and an interface.
所述处理器用于读取指令以上述第二方面所述的信息处理方法。The processor is used to read instructions in the information processing method described in the second aspect.
第十一方面,本申请实施例提供一种计算机程序产品,所述计算机程序产品包括计算机程序代码,当所述计算机程序代码被计算机执行时,使得所述计算机执行上述第一方面所述的方法。In an eleventh aspect, an embodiment of the present application provides a computer program product. The computer program product includes computer program code. When the computer program code is executed by a computer, the computer executes the method described in the first aspect. .
第十二方面,本申请实施例提供一种计算机程序产品,所述计算机程序产品包括计算机程序代码,当所述计算机程序代码被计算机执行时,使得所述计算机执行上述第二方面所述的方法。In a twelfth aspect, an embodiment of the present application provides a computer program product, the computer program product includes computer program code, when the computer program code is executed by a computer, the computer executes the method described in the second aspect above .
第十三方面,本申请实施例提供一种通信系统,包括上述第五方面所述的通信装置、上述第六方面所述的通信装置以及交通信号灯控制系统。In a thirteenth aspect, an embodiment of the present application provides a communication system, including the communication device described in the fifth aspect, the communication device described in the sixth aspect, and a traffic signal light control system.
附图说明Description of the drawings
图1为现有技术中自动驾驶车辆识别交通信号灯的示意图;Fig. 1 is a schematic diagram of an automatic driving vehicle recognizing a traffic signal light in the prior art;
图2为车头偏离车道方向导致误判的示例图;Figure 2 is an example diagram of misjudgment caused by the deviation of the front of the vehicle from the lane direction;
图3为交通信号灯受到其他方向的交通信号灯的干扰的示例图;Figure 3 is an example diagram of traffic signal lights being interfered by traffic lights in other directions;
图4为相同方向存在不同颜色交通信号灯的示例图;Figure 4 is an example diagram of traffic signal lights of different colors in the same direction;
图5a为本申请实施例提供的自动驾驶控制方法的一种示例性系统架构图;Fig. 5a is an exemplary system architecture diagram of an automatic driving control method provided by an embodiment of the application;
图5b为本申请实施例提供的自动驾驶控制方法的另一种示例性系统架构图;FIG. 5b is another exemplary system architecture diagram of the automatic driving control method provided by the embodiment of the application; FIG.
图6为车道线的示例图;Figure 6 is an example diagram of lane lines;
图7为车道中心线的示例图;Figure 7 is an example diagram of the centerline of the lane;
图8为车道停止线的示例图;Figure 8 is an example diagram of a lane stop line;
图9为车道节点的示例图;Figure 9 is an example diagram of lane nodes;
图10为本申请实施例提供的自动驾驶控制方法的流程示意图;FIG. 10 is a schematic flowchart of an automatic driving control method provided by an embodiment of this application;
图11为本申请实施例提供的自动驾驶控制方法的一种交互流程图;FIG. 11 is an interactive flowchart of an automatic driving control method provided by an embodiment of this application;
图12a为自动驾驶车辆与网络设备的交互场景示意图;Figure 12a is a schematic diagram of an interaction scene between an autonomous driving vehicle and a network device;
图12b为自动驾驶车辆与云端的交互场景示意图;Figure 12b is a schematic diagram of an interaction scene between an autonomous vehicle and the cloud;
图13为本申请实施例提供的自动驾驶控制方法的另一种交互流程图;FIG. 13 is another interactive flowchart of the automatic driving control method provided by the embodiment of the application;
图14a为自动驾驶车辆与网络设备的交互场景示意图;Figure 14a is a schematic diagram of an interaction scene between an autonomous vehicle and a network device;
图14b为自动驾驶车辆与云端的交互场景示意图;Figure 14b is a schematic diagram of an interaction scene between an autonomous vehicle and the cloud;
图15为本申请实施例提供的一种自动驾驶控制装置的模块结构图;15 is a block diagram of an automatic driving control device provided by an embodiment of the application;
图16为本申请实施例提供的一种信息处理装置的模块结构图;FIG. 16 is a module structure diagram of an information processing device provided by an embodiment of this application;
图17为本申请实施例提供的一种通信装置的结构示意图。FIG. 17 is a schematic structural diagram of a communication device provided by an embodiment of this application.
具体实施方式Detailed ways
图1为现有技术中自动驾驶车辆识别交通信号灯的示意图,如图1所示,现有技术中的自动驾驶车辆基于纯视觉方式识别交通信号灯的信息。具体通过安装在车辆上的摄像头感知交通信号灯的信息。使用这种方式,在一些场景下可能出现对交通信号灯的信息的误判,进而导致自动驾驶车辆无法按照交通规则正确行驶。以下列举出可能出现对交通信号灯的信息误判的一些场景。Fig. 1 is a schematic diagram of an automatic driving vehicle in the prior art recognizing traffic signal lights. As shown in Fig. 1, the automatic driving vehicle in the prior art recognizes traffic signal information based on a purely visual manner. Specifically, the traffic signal light information is sensed by the camera installed on the vehicle. In this way, misjudgment of traffic signal information may occur in some scenarios, which may cause the autonomous vehicle to fail to drive correctly in accordance with traffic rules. The following lists some scenarios where misjudgment of traffic signal information may occur.
1、在阴雨天、雾霾天等天气可能出现误判。1. Misjudgment may occur in rainy, hazy and other weather.
纯视觉方式容易受到天气条件的影响,例如在阴雨天或雾霾天时,摄像头采集的图像中交通信号灯不够清晰,可能导致误判。The pure visual method is easily affected by weather conditions. For example, on a rainy or hazy day, the traffic signal lights in the image collected by the camera are not clear enough, which may lead to misjudgment.
2、在某些光线下可能出现误判。2. Misjudgment may occur under certain light.
纯视觉方式容易受到光线的影响,例如在黄昏时分,灯斑反射夕阳的光线,导致摄像头采集的图像中灯斑均为橘红色,从而导致误判。Pure visual methods are susceptible to the influence of light. For example, at dusk, the light spots reflect the light of the setting sun, causing the light spots in the images collected by the camera to be orange-red, which leads to misjudgment.
3、自动驾驶车辆被牵扯遮挡时,无法采集到交通信号灯的图像。3. When the self-driving vehicle is involved and obscured, the image of the traffic light cannot be collected.
4、自动驾驶车辆在左转弯待转区内时,无法采集到左转向交通信号灯的图像。4. When the autonomous vehicle is in the left-turn waiting area, the image of the left-turn traffic light cannot be collected.
5、相同方向存在不同颜色交通信号灯时可能出现图形识别失败。5. Graphic recognition failure may occur when there are traffic lights of different colors in the same direction.
图2为相同方向存在不同颜色交通信号灯的示例图,如图2所示,在自动驾驶车辆的前方存在两个交通信号灯,一个交通信号灯用于控制车辆,另一个交通信号灯用于控制行人,控制行人的交通信号灯上设置有人形标志。在一些情况下,自动驾驶车辆可能无法通过图形识别以识别出该人形标志,则自动驾驶车辆无法分辨出两个交通信号灯中的哪一个用于控制车辆,从而可能导致误判。Figure 2 is an example diagram of traffic lights of different colors in the same direction. As shown in Figure 2, there are two traffic lights in front of the autonomous vehicle. One traffic signal is used to control the vehicle, and the other traffic signal is used to control pedestrians. Pedestrian traffic lights are provided with human-shaped signs. In some cases, the self-driving vehicle may not be able to recognize the human-shaped sign through graphic recognition, and the self-driving vehicle cannot distinguish which of the two traffic lights is used to control the vehicle, which may lead to misjudgment.
6、交通信号灯受到其他方向的交通信号灯的干扰。6. The traffic lights are interfered by traffic lights in other directions.
图3为交通信号灯受到其他方向的交通信号灯的干扰的示例图,如图3所示,摄像头采集的图像中除了包括控制当前所在车道的交通信号灯外,还包括另一方向的交通信号灯,两个方向的交通信号灯的颜色不一致,可能导致自动驾驶车辆无法准确判断出当前所在车道的交通信号灯的颜色。Figure 3 is an example diagram of traffic lights being interfered by traffic lights in other directions. As shown in Figure 3, in addition to the traffic lights that control the current lane, the images captured by the camera also include traffic lights in the other direction. The color of the traffic lights in the direction is inconsistent, which may cause the autonomous vehicle to be unable to accurately determine the color of the traffic lights in the current lane.
7、自动驾驶车辆的车头偏离车道方向。7. The front of the autonomous vehicle deviates from the lane direction.
因为一些意外因素可能出现自动驾驶车辆的车头偏离车道方向,在这种场景下,控制 本车道的交通信号灯不在自动驾驶车辆中用于采集交通信号灯图像的摄像头的理想识别范围内,从而可能导致对交通信号灯的信息的误判。示例性的,图4为车头偏离车道方向导致误判的示例图,如图4所示,自动驾驶车辆当前位于左转车道,同时车头并未朝向车道的方向,因此,摄像头采集的图形中,用于控制左转到交通信号灯位于图像的边缘,可能导致对交通信号灯的误判。Because some unexpected factors may cause the front of the autonomous vehicle to deviate from the lane direction, in this scenario, the traffic signal that controls the lane is not within the ideal recognition range of the camera used to collect traffic signal images in the autonomous vehicle, which may lead to misunderstandings. Misjudgment of traffic signal information. Exemplarily, Fig. 4 is an example diagram of misjudgment caused by the deviation of the vehicle head from the lane direction. As shown in Fig. 4, the autonomous vehicle is currently in a left-turning lane and the vehicle head is not facing the direction of the lane. Therefore, in the image collected by the camera, The traffic signal used to control the left turn is located at the edge of the image, which may lead to misjudgment of the traffic signal.
考虑到现有技术中基于纯视觉方式识别交通信号灯的信息可能导致对交通信号灯的信息误判的问题,本申请实施例将车道与控制该车道的交通信号灯进行关联,可以直接获取到与车道关联的交通信号灯的信息并进行驾驶控制,从而避免出现对交通信号灯的信息误判的问题。Taking into account the problem that the identification of traffic signal information based on purely visual methods in the prior art may lead to misjudgment of the information of the traffic signal, the embodiment of the present application associates the lane with the traffic signal that controls the lane, and the association with the lane can be directly obtained. The information of the traffic signal light and the driving control are carried out, so as to avoid the problem of misjudgment of the information of the traffic signal light.
图5a为本申请实施例提供的自动驾驶控制方法的一种示例性系统架构图,如图5所示,本申请实施例涉及交通信号灯控制系统、网络设备以及自动驾驶车辆。其中,交通信号灯控制系统可以实时将交通信号灯的状态信息发送给网络设备,并由网络设备提供给自动驾驶车辆。本申请实施例中,网络设备可以是指部署在道路之上或者道路附近的车与外界连接(vehicle to everything,V2X)设备。示例性的,网络设备可以为路侧单元(roadside unit,RSU),该RSU可以与自动驾驶车辆通信,也可以与其他的路侧单元通信。Fig. 5a is an exemplary system architecture diagram of an automatic driving control method provided by an embodiment of the application. As shown in Fig. 5, the embodiment of the application relates to a traffic signal light control system, a network device, and an automatic driving vehicle. Among them, the traffic signal light control system can send the status information of the traffic signal light to the network device in real time, and the network device provides the self-driving vehicle. In the embodiments of the present application, the network device may refer to a vehicle to everything (V2X) device deployed on or near the road. Exemplarily, the network device may be a roadside unit (RSU), and the RSU may communicate with an autonomous vehicle, or may communicate with other roadside units.
图5b为本申请实施例提供的自动驾驶控制方法的另一种示例性系统架构图,如图5所示,本申请实施例涉及交通信号灯控制系统、云端以及自动驾驶车辆。其中,交通信号灯控制系统可以实时将交通信号灯的状态信息发送给云端,并由云端提供给自动驾驶车辆。本申请实施例中,云端可以处理、存储以及下发数据,该数据可以包括交通信号灯的信息以及地图数据等。云端可以是地图云,地图云中存储交通信号灯的状态信息及区域地图信息。云端还可以是云端资源或云地图等。FIG. 5b is another exemplary system architecture diagram of the automatic driving control method provided by the embodiment of the application. As shown in FIG. 5, the embodiment of the application relates to a traffic signal light control system, the cloud, and an automatic driving vehicle. Among them, the traffic signal light control system can send the status information of the traffic signal light to the cloud in real time, and the cloud provides the self-driving vehicle. In the embodiment of the present application, the cloud can process, store, and deliver data, and the data can include traffic signal information and map data. The cloud can be a map cloud, and the state information of traffic lights and regional map information are stored in the map cloud. The cloud can also be cloud resources or cloud maps.
在说明本申请实施例的技术方案之前,首先对本申请实施例涉及的技术术语进行解释。值得说明的是,车道是指在车行道上供单一纵列车辆行驶的部分,以下术语均是相对于某条车道而言,可以用于标识一个车道。Before describing the technical solutions of the embodiments of the present application, the technical terms involved in the embodiments of the present application are first explained. It is worth noting that the lane refers to the part on the roadway for a single column of vehicles to travel. The following terms are relative to a certain lane and can be used to identify a lane.
1、车道线1. Lane line
车道线是指道路上的车道分割线。示例性的,图6为车道线的示例图,如图6所示,某条道路上标识出了3条车道线,分别为车道线1、车道线2和车道线3。该3条车道线可以分割出两个车道,分别为车道1和车道2。在本申请实施例中,可以使用一条车道线标识一个车道。示例性的,可以使用车道线2标识车道1,使用车道线3标识车道2。The lane line refers to the lane dividing line on the road. Exemplarily, Fig. 6 is an example diagram of lane lines. As shown in Fig. 6, three lane lines are marked on a certain road, namely, lane line 1, lane line 2, and lane line 3. The three lane lines can be divided into two lanes, lane 1 and lane 2, respectively. In the embodiment of the present application, one lane line can be used to identify one lane. Exemplarily, lane line 2 may be used to identify lane 1, and lane line 3 may be used to identify lane 2.
2、车道线中心线2. Lane line center line
车道线中心线是指自动驾驶地图中的虚拟的线,实际的道路中可能并不存在该车道线中心线。车道线中心线规定了车辆在车道边线之间的轨迹。图7为车道中心线的示例图,如图7所示,某条道路上包括两个车道,分别为车道1和车道2,这两个车道通过车道线1、车道线2和车道线3进行分割。其中,车道1包括车道中心线1,车道2包括车道中心线2。在本申请实施例中,可以使用车道中心线标识车道。示例性的,可以使用车道线中心线1标识车道1,使用车道中心线2标识车道2。The lane line centerline refers to the virtual line in the autonomous driving map, and the lane line centerline may not exist in the actual road. The centerline of the lane line defines the trajectory of the vehicle between the sidelines of the lane. Figure 7 is an example diagram of the centerline of the lane. As shown in Figure 7, a road includes two lanes, lane 1 and lane 2, which pass through lane line 1, lane line 2, and lane line 3. segmentation. Among them, lane 1 includes lane centerline 1, and lane 2 includes lane centerline 2. In the embodiment of the present application, the lane center line may be used to identify the lane. Exemplarily, the lane centerline 1 may be used to identify the lane 1, and the lane centerline 2 may be used to identify the lane 2.
3、车道线停止线3. Lane line stop line
车道停止线是指一段车道结束的标志线。图8为车道停止线的示例图,如图8所示,某条道路在某个十字路口截止,该道路上包括三个车道,分别为车道1、车道2和车道3。 在道路截止处,分别包括三个车道停止线1、车道停止线2和车道停止线3,其中,车道停止线1为车道1的停止线,可以用于标识车道1。车道停止线2为车道2的停止线,可以用于标识车道2。车道停止线3为车道3的停止线,可以用于标识车道3。The lane stop line refers to the marking line at the end of a section of lane. Fig. 8 is an example diagram of a lane stop line. As shown in Fig. 8, a road ends at a certain intersection. The road includes three lanes, lane 1, lane 2, and lane 3. At the road cutoff, there are three lane stop lines 1, lane stop lines 2, and lane stop lines 3, respectively. Lane stop line 1 is the stop line of lane 1 and can be used to mark lane 1. Lane stop line 2 is the stop line of lane 2, which can be used to mark lane 2. Lane stop line 3 is the stop line of lane 3 and can be used to mark lane 3.
4、车道节点4. Lane node
车道节点可以指车道线和/或车道中心线的节点,是自动驾驶地图中的虚拟的节点,实际的道路中可能并不存在该车道节点。在自动驾驶地图中,车道线和/或车道中心线发生变化时需要打断,在打断的位置可以使用车道节点进行标识。图9为车道节点的示例图,如图9所示,某条道路上标识出了3条车道线,分别为车道线1、车道线2和车道线3。该3条车道线可以分割出两个车道,分别为车道1和车道2。其中,车道线1在车道节点1处发生变化,因此在此处设置车道节点1,车道线2在车道节点2处发生变化,因此在此处设置车道节点2,车道线3在车道节点3处发生变化,因此在此处设置车道节点3。因此,车道节点1与车道线1关联,车道节点2与车道线2关联,车道节点3与车道线3关联。The lane node may refer to the node of the lane line and/or the center line of the lane, and is a virtual node in the autonomous driving map. The lane node may not exist in the actual road. In the autonomous driving map, when the lane line and/or the center line of the lane change, it needs to be interrupted, and the location of the interruption can be marked by the lane node. Fig. 9 is an example diagram of lane nodes. As shown in Fig. 9, three lane lines are marked on a certain road, namely, lane line 1, lane line 2, and lane line 3. The three lane lines can be divided into two lanes, lane 1 and lane 2, respectively. Among them, lane line 1 changes at lane node 1, so lane node 1 is set here, lane line 2 changes at lane node 2, so lane node 2 is set here, and lane line 3 is at lane node 3. Change occurs, so lane node 3 is set here. Therefore, lane node 1 is associated with lane line 1, lane node 2 is associated with lane line 2, and lane node 3 is associated with lane line 3.
以车道线2为例,由于车道线2与车道节点2关联,而车道线2可以标识车道,因此,在将交通信号灯与车道节点关联时,可以使得交通信号灯与车道关联。因此,本申请实施例可以称为由车道节点标识车道。Taking lane line 2 as an example, since lane line 2 is associated with lane node 2 and lane line 2 can identify the lane, when associating traffic lights with lane nodes, the traffic lights can be associated with lanes. Therefore, the embodiment of the present application may be referred to as identifying the lane by the lane node.
5、自动驾驶地图5. Autonomous driving map
本申请实施例中,自动驾驶地图可以是高精地图,该自动驾驶地图中除了存储传统的道路信息外,还存储道路、车道、车道线、车道中心线、车道停止线以及车道线的节点的信息,以使得自动驾驶车辆可以实现更加精准的定位。自动驾驶车辆可以预先存储该自动驾驶地图。In the embodiments of this application, the autonomous driving map may be a high-precision map. In addition to storing traditional road information, the autonomous driving map also stores the nodes of roads, lanes, lane lines, lane center lines, lane stop lines, and lane lines. Information so that autonomous vehicles can achieve more precise positioning. The autonomous driving vehicle may pre-store the autonomous driving map.
为便于描述,本申请实施例以下将自动驾驶地图简称为地图。For ease of description, in the embodiments of the present application, the autonomous driving map is referred to as a map for short below.
图10为本申请实施例提供的自动驾驶控制方法的流程示意图,如图10所示,该方法包括:FIG. 10 is a schematic flowchart of an automatic driving control method provided by an embodiment of this application. As shown in FIG. 10, the method includes:
S1001、自动驾驶车辆确定当前所在车道的标识。S1001. The self-driving vehicle determines the identification of the current lane.
可选的,自动驾驶车辆当前所在车道的标识,可以指自动驾驶车辆在地图中当前所在车道的标识。Optionally, the identification of the lane where the autonomous vehicle is currently located may refer to the identification of the lane where the autonomous vehicle is currently located on the map.
自动驾驶车辆在运行过程中,可以实时获取在地图中所在的车道,进而可以确定出车道的标识。示例性的,自动驾驶车辆首先根据内置的全球定位系统(global positioning system,GPS)模块获知当前的概率位置,将该概率位置输入至地图中,利用地图进行高精定位,从而获取到当前所在车道,并确定出当前所在车道的标识。During the operation of the self-driving vehicle, the lane on the map can be obtained in real time, and then the identification of the lane can be determined. Exemplarily, the self-driving vehicle first obtains the current probabilistic position according to the built-in global positioning system (GPS) module, enters the probabilistic position into the map, and uses the map for high-precision positioning, thereby obtaining the current lane , And determine the sign of the current lane.
如前文所述,车道线、车道中心线、车道停止线以及车道节点均可以用于标识车道,因此,本申请实施例中,当前所在车道的标识,可以是指当前所在车道的车道线的标识、当前所在车道的车道中心线的标识、当前所在车道的车道停止线的标识以及当前所在车道的车道节点的标识中的至少一种。As mentioned above, lane lines, lane center lines, lane stop lines, and lane nodes can all be used to identify lanes. Therefore, in the embodiment of the present application, the current lane identifier may refer to the lane line identifier of the current lane At least one of the identification of the lane center line of the current lane, the identification of the lane stop line of the current lane, and the identification of the lane node of the current lane.
可选的,上述车道线的标识、车道中心线的标识、车道停止线的标识以及车道节点的标识,可以是编号、名称等,以使得所标识的车道线可以区别于特定范围内的其他车道线,车道中心线可以区别于特定范围内的其他车道中心线,车道停止线可以区别于特定范围内的其他车道停止线,车道节点可以区别于特定范围内的其他车道节点。Optionally, the above-mentioned lane line identification, lane center line identification, lane stop line identification, and lane node identification can be numbers, names, etc., so that the identified lane line can be distinguished from other lanes within a specific range The lane center line can be distinguished from other lane center lines in a specific range, the lane stop line can be distinguished from other lane stop lines in a specific range, and the lane node can be distinguished from other lane nodes in a specific range.
可选的,上述特定范围可以是指整个地图的范围,或者地图中的一部分范围。示例性 的,地图的范围为一个省,则上述特定的范围可以是指该省,也可以指属于该省的某个城市。Optionally, the above-mentioned specific range may refer to the range of the entire map, or a part of the range in the map. Exemplarily, if the scope of the map is a province, the above-mentioned specific scope can refer to that province, or it can refer to a certain city belonging to the province.
一种示例中,假设使用车道线标识车道,则自动驾驶车辆可以实时获取在地图中当前所在车道,并获取地图中当前所在车道的车道线的标识,进而确定当前所在车道的标识为该车道线的标识。以上述图6所示例的车道信息为例,假设自动驾驶车辆获取到在地图中当前所在的车道为车道1,同时,在地图中,车道1对应的车道线为车道线2,则自动驾驶车辆确定当前所在车道的标识为车道线2的标识。示例性的,车道线2的编号为2,则自动驾驶车辆确定当前车道的标识为2。In one example, assuming that lane lines are used to identify the lane, the autonomous vehicle can obtain the current lane on the map in real time, and obtain the lane line identification of the current lane on the map, and then determine that the current lane is the lane line. Of the logo. Taking the lane information illustrated in Figure 6 as an example, suppose that the autonomous vehicle obtains that the current lane on the map is lane 1. At the same time, in the map, the lane line corresponding to lane 1 is lane line 2, then the autonomous vehicle Determine that the current lane marking is the marking of lane line 2. Exemplarily, if the number of the lane line 2 is 2, the autonomous driving vehicle determines that the current lane identifier is 2.
另一种示例中,假设使用车道中心线标识车道,则自动驾驶车辆可以实时获取在地图中当前所在车道,并获取地图中当前所在车道的车道中心线的标识,进而确定当前所在车道的标识为该车道中心线的标识。以上述图7所示例的车道信息为例,假设自动驾驶车辆获取到在地图中当前所在的车道为车道1,同时,在地图中,车道1对应的车道中心线为车道中心线1,则自动驾驶车辆确定当前所在车道的标识为车道中心线1的标识。In another example, assuming that the lane centerline is used to identify the lane, the autonomous vehicle can obtain the current lane on the map in real time, and obtain the lane centerline identification of the current lane on the map, and then determine that the current lane identification is The mark of the centerline of the lane. Taking the lane information illustrated in Figure 7 as an example, suppose that the autonomous vehicle has acquired the current lane on the map as lane 1. At the same time, in the map, the lane center line corresponding to lane 1 is lane center line 1, then automatically The driving vehicle determines that the current lane marking is the marking of the lane centerline 1.
再一种示例中,假设使用车道停止线标识车道,则自动驾驶车辆可以实时获取在地图中当前所在车道,并获取地图中当前所在车道的车道停止线的标识,进而确定当前所在车道的标识为该车道停止线的标识。以上述图8所示例的车道信息为例,假设自动驾驶车辆获取到在地图中当前所在的车道为车道1,同时,在地图中,车道1对应的车道停止线为车道停止线1,则自动驾驶车辆确定当前所在车道的标识为车道停止线1的标识。In another example, assuming that the lane is marked with a lane stop line, the autonomous vehicle can obtain the current lane on the map in real time, and obtain the lane stop line identification of the current lane on the map, and then determine that the current lane identification is The mark of the stop line in this lane. Taking the lane information illustrated in Figure 8 as an example, suppose that the autonomous vehicle acquires that the current lane on the map is lane 1. At the same time, in the map, the lane stop line corresponding to lane 1 is lane stop line 1, then automatically The driving vehicle determines that the sign of the current lane is the sign of the lane stop line 1.
又一种示例中,假设使用车道节点标识车道,则自动驾驶车辆可以实时获取在地图中当前所在车道,并获取地图中当前所在车道节点的标识,进而确定当前所在车道的标识为地图中该车道对应的车道节点的标识。In another example, assuming that the lane node is used to identify the lane, the autonomous vehicle can obtain the current lane on the map in real time, and obtain the identification of the node of the current lane in the map, and then determine that the identification of the current lane is the lane in the map The identifier of the corresponding lane node.
应理解,具体实施时,自动驾驶车辆可以固定使用上述车道线、车道中心线、车道停止线和车道节点中的一种来标识车道,或者,也可以在不同的时段或者不同的情况下使用不同的信息来标识车道。示例性的,自动驾驶车辆可以默认使用车道线来标识车道,在某些情况下,自动驾驶车辆无法准确获取到车道线的标识时,可以使用车道中心线来标识车道。It should be understood that in specific implementation, the autonomous vehicle may use one of the above-mentioned lane line, lane center line, lane stop line, and lane node to identify the lane, or it may use different lanes in different time periods or under different circumstances. Information to identify the lane. Exemplarily, the autonomous vehicle may use the lane line to identify the lane by default. In some cases, the autonomous vehicle may use the center line of the lane to identify the lane when it cannot accurately obtain the identification of the lane line.
可选的,自动驾驶车辆在运行的过程中,可以在满足某个或某些条件时确定当前所在车道的标识,进而执行下述步骤S1002-S1003以完成驾驶控制。示例性的,自动驾驶车辆基于当前在自动驾驶地图中的位置,判断自动驾驶车辆与目标路口的距离是否小于预设阈值。其中,该目标路口可以是指地图中距离自动驾驶车辆当前在自动驾驶地图中的位置最近的一个路口,该路口例如可以是十字路口、丁字路口等可能设置有交通信号灯的路口。或者,该路口还可以是与某个建筑物的出口连接的设置有交通信号灯道路位置。示例性的,某个道路的某个位置与某个学校的出口相连,为了保证学生的安全,在该道路的该位置上设置交通信号灯。因此,该设置有交通信号灯的位置也属于路口。如果判断出自动驾驶车辆与路口的距离小于预设阈值,则表明自动驾驶车辆即将到达路口,因此自动驾驶车辆可以确定当前所在车道的标识,并执行下述步骤S1002-S1003以完成驾驶控制。Optionally, during the operation of the autonomous vehicle, the identification of the current lane can be determined when certain or certain conditions are met, and then the following steps S1002-S1003 are executed to complete the driving control. Exemplarily, the self-driving vehicle determines whether the distance between the self-driving vehicle and the target intersection is less than a preset threshold based on the current position on the self-driving map. Wherein, the target intersection may refer to an intersection on the map that is closest to the current position of the autonomous vehicle in the autonomous driving map. The intersection may be, for example, an intersection, a T-junction, and other intersections where traffic lights may be set. Alternatively, the intersection may also be a location on a road with traffic lights connected to an exit of a certain building. Exemplarily, a certain position on a certain road is connected to an exit of a certain school, and in order to ensure the safety of students, a traffic signal light is set at that position on the road. Therefore, the location where the traffic signal light is installed also belongs to the intersection. If it is determined that the distance between the self-driving vehicle and the intersection is less than the preset threshold, it indicates that the self-driving vehicle is about to arrive at the intersection. Therefore, the self-driving vehicle can determine the identification of the current lane and execute the following steps S1002-S1003 to complete the driving control.
预设阈值可由自动驾驶车辆预设,示例性的,阈值可为500m、200m、或50m。预设阈值可以由自动驾驶车辆车主动态改变,例如根据交通拥堵情况及车辆行驶路径特点自由设置。The preset threshold may be preset by an autonomous vehicle, and for example, the threshold may be 500m, 200m, or 50m. The preset threshold value can be dynamically changed by the owner of the self-driving vehicle, for example, it can be set freely according to the traffic jam and the characteristics of the vehicle driving path.
自动驾驶车辆在经过上述过程确定出当前所在车道的标识之后,在到达路口之前,可能发生变道,如果自动驾驶车辆发生变道,则自动驾驶车辆可以确定变道后所在车道的标识,并将变道后所在车道的标识作为当前所在车道的标识。After the self-driving vehicle has determined the sign of the current lane through the above process, it may change lanes before reaching the intersection. If the self-driving vehicle changes lanes, the self-driving vehicle can determine the sign of the lane after the lane change, and The sign of the lane where you are after changing lanes is used as the sign of the current lane.
示例性的,自动驾驶车辆获取变道之后在地图中的车道,并确定该车道对应的车道线的标识为变道后的车道的标识,并将变道后的车道的标识作为新的当前所在车道的标识。后续步骤中,自动驾驶车辆基于该车道的标识获取交通信号灯的状态信息以及进行驾驶控制。Exemplarily, the self-driving vehicle obtains the lane in the map after the lane change, and determines that the lane line corresponding to the lane is the lane mark after the lane change, and uses the lane mark after the lane change as the new current location The identification of the lane. In the subsequent steps, the self-driving vehicle obtains the status information of the traffic lights and performs driving control based on the lane markings.
应理解,本申请实施例中所述的自动驾驶车辆的运行,是指自动驾驶车辆的系统的运行,在系统运行后,控制车辆的行为,该行为可以包括行驶或者停止等。It should be understood that the operation of the self-driving vehicle described in the embodiments of the present application refers to the operation of the system of the self-driving vehicle. After the system is operated, the behavior of the vehicle is controlled, and the behavior may include driving or stopping.
S1002、自动驾驶车辆根据上述车道的标识,获取上述车道关联的交通信号灯的状态信息。S1002. The self-driving vehicle obtains state information of the traffic signal light associated with the lane according to the identification of the lane.
本申请实施例中,可以预先将车道与交通信号灯进行关联,其中,与某个车道关联的某个交通信号灯用于控制行驶在该车道上的自动驾驶车辆的行为。示例性的,某个车道为左转车道,则该左转车道关联的交通信号灯为控制待左转车辆的交通信号灯。In the embodiment of the present application, a lane and a traffic signal light may be associated in advance, wherein a certain traffic signal light associated with a certain lane is used to control the behavior of an autonomous vehicle driving in the lane. Exemplarily, if a certain lane is a left-turn lane, the traffic signal light associated with the left-turn lane is a traffic signal light that controls the vehicle to be turned left.
可选的,车道与交通信号灯的关联关系可以预先保存在自动驾驶车辆中,和/或,预先保存在提供交通信号灯的状态信息的网络设备或云端。Optionally, the association relationship between the lane and the traffic light can be pre-stored in the autonomous vehicle, and/or, pre-stored in the network device or cloud that provides status information of the traffic light.
车道与交通信号的具体关联方式将在下述实施例中详细说明。The specific association between lanes and traffic signals will be described in detail in the following embodiments.
自动驾驶车辆确定出当前所在车道的标识之后,基于车道与交通信号灯的关联关系可以获取到当前所在车道关联的交通信号灯的状态信息。After the self-driving vehicle determines the sign of the current lane, it can obtain the state information of the traffic signal associated with the current lane based on the association relationship between the lane and the traffic light.
S1003、自动驾驶车辆根据上述交通信号灯的状态信息进行驾驶控制。S1003. The autonomous vehicle performs driving control according to the state information of the above-mentioned traffic signal light.
可选的,上述交通信号灯的状态信息可以表示交通信号灯在当前时刻的亮灯信息以及交通信号灯在未来某一段时间的变化情况等,自动驾驶车辆基于交通信号灯的状态信息,结合自动驾驶车辆的车速等信息,可以进行驾驶控制。示例性的,控制自动驾驶车辆按照到达十字路口之前的速度通过十字路口,或者,控制自动驾驶车辆停止在车道停止线之内。Optionally, the above-mentioned status information of the traffic signal may indicate the lighting information of the traffic signal at the current moment and the change of the traffic signal in a certain period of time in the future, etc. The autonomous vehicle is based on the traffic signal status information combined with the speed of the autonomous vehicle And other information, you can carry out driving control. Exemplarily, the autonomous driving vehicle is controlled to pass through the intersection at a speed before reaching the intersection, or the autonomous driving vehicle is controlled to stop within the lane stop line.
自动驾驶车辆基于交通信号灯的状态信息进行驾驶控制的具体方式将在下述实施例中详细说明。The specific method for the autonomous driving vehicle to perform driving control based on the state information of the traffic signal will be described in detail in the following embodiments.
本实施例中,自动驾驶车辆在确定出当前所在车道的标识之后,根据当前所在车道的标识,可以确定出当前所在车道关联的交通信号灯的状态信息,并根据交通信号灯的状态信息进行驾驶控制。该过程中,自动驾驶车辆是基于车道与交通信号灯之间的关联关系获取控制该条车道上车辆的交通信号灯的状态信息,因此,即使在一些特殊场景下,例如自动驾驶车辆的车头偏离车道方向、交通信号灯被其他方向的交通信号灯干扰、恶劣天气等场景下,自动驾驶车辆仍然可以准确确定出与当前所在车道关联的交通信号灯的状态信息,从而避免出现对交通信号灯的信息的误判,进而保证自动驾驶车辆可以按照交通规则正确行驶。In this embodiment, after the self-driving vehicle determines the sign of the current lane, according to the sign of the current lane, the status information of the traffic signal associated with the current lane can be determined, and the driving control is performed according to the status information of the traffic signal. In this process, the autonomous vehicle obtains the state information of the traffic signal light that controls the vehicle on the lane based on the association relationship between the lane and the traffic light. Therefore, even in some special scenarios, for example, the head of the autonomous vehicle deviates from the lane direction. , Traffic signal lights are interfered by traffic lights in other directions, bad weather and other scenarios, autonomous vehicles can still accurately determine the status information of the traffic lights associated with the current lane, so as to avoid misjudgment of the information of the traffic lights, and then Ensure that autonomous vehicles can drive correctly in accordance with traffic regulations.
在预先将车道与交通信号灯关联时,作为一种可选的方式,可以预先将车道的标识与交通信号灯的标识进行关联。如前文所述,车道的标识可以是指车道线的标识、车道中心线的标识、车道停止线的标识或者车道节点的标识。因此,在具体实施过程中,可以预先将车道线的标识与交通信号灯的标识进行关联,或者,将车道中心线的标识与交通信号灯的标识进行关联,或者,将车道停止线的标识与交通信号灯的标识进行关联,或者,将车 道节点的标识与交通信号灯的标识进行关联。When associating the lanes with the traffic lights in advance, as an optional way, the lane markings can be associated with the traffic lights markings in advance. As mentioned above, the lane markings may refer to the markings of the lane lines, the markings of the center lines of the lanes, the markings of the lane stop lines, or the markings of the lane nodes. Therefore, in the specific implementation process, you can associate the lane mark with the traffic light mark in advance, or associate the lane center line mark with the traffic light mark, or link the lane stop line mark with the traffic light mark. Associate the identification of the lane node with the identification of the traffic light.
应理解,当车道的标识唯一标识某个特定范围内的一个车道时,其所关联的交通信号灯的标识相应地唯一标识该特定范围或大于该特定范围的范围内的一个交通信号灯。It should be understood that when the lane identifier uniquely identifies a lane within a specific range, the associated traffic signal identifier correspondingly uniquely identifies a traffic signal within the specific range or a range larger than the specific range.
下述表1为对车道线的标识与交通信号灯的标识进行关联的示例。The following Table 1 is an example of associating the markings of lane lines with the markings of traffic lights.
表1Table 1
字段名称Field Name 类型type 取值范围Ranges 描述describe
Lane_IDLane_ID intint  To 车道线的编号Lane number
TrafficLight_IDTrafficLight_ID intint  To 交通信号灯的编号Number of traffic lights
上述表1可以是记录车道线要素的表格,在该表格中,Lane_ID字段可以是车道线的编号,用于在前述的某个特定范围内唯一标识一条车道线,该表格中还可以记录其他该车道线的要素,例如车道线的类型为白实线等。除此之外,该表格中可以记录上述的TrafficLight_ID字段,该TrafficLight_ID字段可以是交通信号灯的编号,该编号用于在某个特定范围内唯一标识一个交通信号灯。The above table 1 can be a table for recording lane line elements. In this table, the Lane_ID field can be the number of the lane line, which is used to uniquely identify a lane line in the aforementioned specific range. The table can also record other lane lines. The elements of the lane line, for example, the type of the lane line is a white solid line. In addition, the above-mentioned TrafficLight_ID field can be recorded in the table, and the TrafficLight_ID field can be the number of a traffic light, and the number is used to uniquely identify a traffic light in a certain range.
利用上述表1所记录的关联关系,自动驾驶车辆在确定出车道的标识后,可以从表1中查询出与车道关联的交通信号灯的标识。Using the associations recorded in Table 1 above, after the autonomous vehicle has determined the lane markings, it can query the traffic signal lights associated with the lanes from Table 1.
下述表2为对车道中心线的标识与交通信号灯的标识进行关联的示例。The following Table 2 is an example of associating the mark of the center line of the lane with the mark of the traffic light.
表1Table 1
字段名称Field Name 类型type 取值范围Ranges 描述describe
MidLane_IDMidLane_ID intint  To 车道中心线的编号Number of lane centerline
TrafficLight_IDTrafficLight_ID intint  To 交通信号灯的编号Number of traffic lights
上述表2可以是记录车道中心线要素的表格,在该表格中,MidLane_ID字段可以是车道中心线的编号,用于在前述的某个特定范围内唯一标识一条车道中心线,该表格中还可以记录其他该车道中心线的要素。除此之外,该表格中可以记录上述的TrafficLight_ID字段,该TrafficLight_ID字段可以是交通信号灯的编号,该编号用于在某个特定范围内唯一标识一个交通信号灯。The above table 2 can be a table for recording the centerline elements of the lane. In the table, the MidLane_ID field can be the number of the centerline of the lane, which is used to uniquely identify a centerline of the lane in the aforementioned specific range. The table can also Record other elements of the centerline of the lane. In addition, the above-mentioned TrafficLight_ID field can be recorded in the table, and the TrafficLight_ID field can be the number of a traffic light, and the number is used to uniquely identify a traffic light in a certain range.
利用上述表2所记录的关联关系,自动驾驶车辆在确定出车道的标识后,可以从表1中查询出与车道关联的交通信号灯的标识。Using the associations recorded in Table 2 above, after the autonomous vehicle has determined the lane markings, it can query the traffic light markings associated with the lanes from Table 1.
下述表3为对车道停止线的标识与交通信号灯的标识进行关联的示例。The following Table 3 is an example of associating the signs of the lane stop line with the signs of the traffic lights.
表3table 3
字段名称Field Name 类型type 取值范围Ranges 描述describe
StopLine_IDStopLine_ID intint  To 车道停止线的编号Lane stop line number
TrafficLight_IDTrafficLight_ID intint  To 交通信号灯的编号Number of traffic lights
上述表3可以是记录车道停止线要素的表格,在该表格中,StopLine_ID字段可以是车道停止线的编号,用于在前述的某个特定范围内唯一标识一条车道停止线,该表格中还可以记录其他该车道停止线的要素。除此之外,该表格中可以记录上述的TrafficLight_ID字段,该TrafficLight_ID字段可以是交通信号灯的编号,该编号用于在某个特定范围内唯一 标识一个交通信号灯。The above table 3 can be a table for recording lane stop line elements. In this table, the StopLine_ID field can be the number of the lane stop line, which is used to uniquely identify a lane stop line within the aforementioned specific range. The table can also Record other elements of the stop line of the lane. In addition, the above-mentioned TrafficLight_ID field can be recorded in the table. The TrafficLight_ID field can be the number of a traffic light, and the number is used to uniquely identify a traffic light in a certain range.
利用上述表3所记录的关联关系,自动驾驶车辆在确定出车道的标识后,可以从表1中查询出与车道关联的交通信号灯的标识。Using the associations recorded in Table 3 above, after the autonomous vehicle has determined the lane markings, it can query the traffic signal lights associated with the lanes from Table 1.
下述表4为对车道节点的标识与交通信号灯的标识进行关联的示例。The following Table 4 is an example of associating the identification of the lane node with the identification of the traffic light.
表4Table 4
字段名称Field Name 类型type 取值范围Ranges 描述describe
Node_IDNode_ID intint  To 车道节点的编号The number of the lane node
TrafficLight_IDTrafficLight_ID intint  To 交通信号灯的编号Number of traffic lights
上述表4可以是记录车道节点要素的表格,在该表格中,Node_ID字段可以是车道节点的编号,用于在前述的某个特定范围内唯一标识一个车道节点,该表格中还可以记录其他该车道节点的要素。除此之外,该表格中可以记录上述的TrafficLight_ID字段,该TrafficLight_ID字段可以是交通信号灯的编号,该编号用于在某个特定范围内唯一标识一个交通信号灯。The above table 4 can be a table for recording lane node elements. In this table, the Node_ID field can be the number of the lane node, which is used to uniquely identify a lane node in the aforementioned specific range. The table can also record other lane nodes. Elements of lane nodes. In addition, the above-mentioned TrafficLight_ID field can be recorded in the table, and the TrafficLight_ID field can be the number of a traffic light, and the number is used to uniquely identify a traffic light in a certain range.
利用上述表4所记录的关联关系,自动驾驶车辆在确定出车道的标识后,可以从表1中查询出与车道关联的交通信号灯的标识。Using the associations recorded in Table 4 above, after the autonomous vehicle has determined the lane markings, it can query the traffic signal lights associated with the lanes from Table 1.
在上述预先将车道的标识与交通信号灯的标识进行关联的基础上,上述步骤S1002的一种可选实施方式包括:Based on the foregoing pre-association of the lane markings with the traffic signal lights markings, an optional implementation manner of the foregoing step S1002 includes:
自动驾驶车辆根据所确定的车道的标识确定车道关联的交通信号灯的标识,再从网络设备或云端获取车道关联的交通信号灯的状态。The self-driving vehicle determines the identification of the traffic light associated with the lane according to the identification of the determined lane, and then obtains the state of the traffic light associated with the lane from the network device or the cloud.
自动驾驶车辆可以保存上述的关联关系。The self-driving vehicle can save the above-mentioned association relationship.
示例性的,假设使用车道线标识车道,自动驾驶车辆可以预先记录上述表1的信息。自动驾驶车辆在确定出当前所在车道的标识,即车道线的标识后,可以从表1中查询与该车道线的标识关联的交通信号灯的标识,再基于该交通信号灯的标识,从网络设备或云端获取该交通信号灯的标识。Exemplarily, assuming that lane lines are used to identify the lane, the autonomous vehicle may record the information in Table 1 above in advance. After the self-driving vehicle has determined the identification of the current lane, that is, the identification of the lane line, it can query the identification of the traffic light associated with the identification of the lane line from Table 1, and then based on the identification of the traffic light, from the network equipment or The cloud obtains the identification of the traffic light.
本实施例中,使用车道的标识与交通信号灯的标识的关联关系来记录车道与交通信号灯的关联关系,当自动驾驶车辆确定出所在车道的标识后,可以根据车道的标识确定出关联的交通信号灯的标识,并据此获取交通信号灯的状态。由于车道的标识和交通信号灯的标识分别可以在特定范围内唯一标识一个车道和一个交通信号灯,因此,利用车道的标识确定交通信号灯的标识,可以保证所确定出的交通信号灯的准确性。In this embodiment, the association relationship between the lane mark and the traffic light mark is used to record the association relationship between the lane and the traffic light. After the autonomous vehicle determines the lane mark, the associated traffic light can be determined according to the lane mark. , And obtain the status of traffic lights based on this. Since the lane mark and the traffic light mark can uniquely identify a lane and a traffic light within a specific range, respectively, using the lane mark to determine the traffic light mark can ensure the accuracy of the determined traffic light.
以下说明自动驾驶车辆确定出车道关联的交通信号灯的标识之后,从网络设备或云端获取车道关联的交通信号灯的状态信息的方法。The following describes a method for an autonomous vehicle to obtain the status information of the traffic signal light associated with the lane from the network device or the cloud after the identification of the traffic signal light associated with the lane is determined.
可选的,自动驾驶车辆可以使用以下两种可选方式中的任意一种从网络设备或云端获取交通信号灯的状态信息。Optionally, the self-driving vehicle can use any of the following two optional methods to obtain traffic signal status information from a network device or the cloud.
第一种可选方式中,自动驾驶车辆可以主动请求网络设备或云端向自动驾驶车辆提供当前所在车道关联的交通信号灯的状态信息,在这种方式下,自动驾驶车辆在确定当前车道对应的交通信号灯的标识后,向网络设备或者云端发送请求信息。In the first alternative, the self-driving vehicle can actively request the network device or the cloud to provide the self-driving vehicle with the status information of the traffic signal associated with the current lane. In this way, the self-driving vehicle is determining the traffic corresponding to the current lane. After the semaphore is identified, the request information is sent to the network device or the cloud.
第二种可选方式中,由网络设备或云端广播各交通信号灯的状态信息,自动驾驶车辆从广播的状态信息中获取当前所在车道关联的交通信号灯的状态信息。In the second alternative, the network device or the cloud broadcasts the status information of each traffic signal, and the autonomous vehicle obtains the status information of the traffic signal associated with the current lane from the broadcast status information.
在网络设备或云端侧,可以获取至少一个交通信号灯的状态信息,并向自动驾驶车辆发送交通信号灯的状态信息。其中,网络设备或云端可以使用上述两种可选方式中相应的方法向自动驾驶车辆发送交通信号灯的状态信息。On the network device or the cloud side, the status information of at least one traffic signal can be acquired, and the status information of the traffic signal can be sent to the autonomous vehicle. Among them, the network device or the cloud can use the corresponding method of the above two optional methods to send the status information of the traffic signal to the autonomous vehicle.
以下分别对上述两种方式进行说明。The above two methods are described below respectively.
图11为本申请实施例提供的自动驾驶控制方法的一种交互流程图,如图11所示,基于上述第一种可选方式的自动驾驶控制交互流程包括:FIG. 11 is an interactive flow chart of the automatic driving control method provided by an embodiment of the application. As shown in FIG. 11, the automatic driving control interaction flow based on the above-mentioned first optional method includes:
S1101、自动驾驶车辆确定当前所在车道的标识。S1101. The self-driving vehicle determines the identification of the current lane.
该步骤的具体执行过程与上述步骤S1001相同,可以参照上述步骤S1001,此处不再赘述。The specific execution process of this step is the same as the above step S1001, and you can refer to the above step S1001, which will not be repeated here.
S1102、自动驾驶车辆根据当前所在车道的标识确定车道关联的交通信号灯的标识。S1102. The self-driving vehicle determines the identifier of the traffic signal light associated with the lane according to the identifier of the current lane.
该步骤的具体执行过程可以参照前述实施例的描述,此处不再赘述。For the specific execution process of this step, reference may be made to the description of the foregoing embodiment, which will not be repeated here.
S1103、自动驾驶车辆向网络设备或云端发送请求信息,该请求信息用于获取当前所在车道关联的交通信号灯的状态信息。S1103. The self-driving vehicle sends request information to the network device or the cloud, where the request information is used to obtain the status information of the traffic signal lamp associated with the current lane.
一种可选方式中,自动驾驶车辆可以将车道关联的交通信号灯的标识携带在上述请求信息中发送给网络设备或云端,即车道关联的交通信号灯的标识为上述请求信息的一部分。相应的,网络设备或云端可以从请求信息中读取到交通信号灯的标识。In an optional manner, the self-driving vehicle may carry the identifier of the traffic signal light associated with the lane in the above request information and send it to the network device or the cloud, that is, the identifier of the traffic signal light associated with the lane is part of the above request information. Correspondingly, the network device or the cloud can read the identification of the traffic light from the request information.
通过在请求信息中携带交通信号灯的标识,可以减少交互信令数,节约传输资源,提升传输效率。By carrying the identifier of the traffic light in the request information, the number of interactive signaling can be reduced, transmission resources can be saved, and transmission efficiency can be improved.
另一种可选方式中,上述请求信息中可以不携带车道关联的交通信号灯的标识,网络设备或云端接收到请求信息后,再指示自动驾驶车辆提供交通信号灯的标识,进而获取到交通信号灯的标识。In another optional manner, the above request information may not carry the traffic signal identifier associated with the lane. After the network device or the cloud receives the request information, it instructs the autonomous vehicle to provide the traffic signal identifier, and then obtains the traffic signal identifier. Logo.
值得说明的是,该可选方式中的自动驾驶车辆可以称为目标驾驶车辆,由目标驾驶车辆向网络设备或云端发送请求信息。It is worth noting that the self-driving vehicle in this optional manner may be referred to as a target driving vehicle, and the target driving vehicle sends request information to the network device or the cloud.
S1104、网络设备或云端根据自动驾驶车辆当前所在车道关联的交通信号灯的标识,获取该交通信号灯的状态信息。S1104. The network device or the cloud obtains the status information of the traffic signal light according to the identifier of the traffic signal light associated with the lane where the autonomous vehicle is currently located.
如前文所述,交通信号灯控制系统可以实时向网络设备或云端提供各交通信号灯的状态信息,因此,网络设备或云端可以根据交通信号灯的标识,获取到该交通信号灯的状态信息。As mentioned above, the traffic signal control system can provide the network equipment or the cloud with the status information of each traffic signal in real time. Therefore, the network equipment or the cloud can obtain the status information of the traffic signal according to the identification of the traffic signal.
S1105、网络设备或云端向自动驾驶车辆发送当前所在车道关联的交通信号灯的状态信息。S1105: The network device or the cloud sends the state information of the traffic signal lamp associated with the current lane to the autonomous vehicle.
相应的,自动驾驶车辆接收来自网络设备或云端的当前所在车道关联的交通信号灯的状态信息。Correspondingly, the self-driving vehicle receives the state information of the traffic signal light associated with the current lane from the network device or the cloud.
图12a为自动驾驶车辆与网络设备的交互场景示意图,如图12a所示,自动驾驶车辆向网络设备发送请求信息,网络设备从交通信号灯控制系统获取交通信号灯的状态信息,并发送给自动驾驶车辆。图12b为自动驾驶车辆与云端的交互场景示意图,如图12b所所示,自动驾驶车辆向云端发送请求信息,云端从交通信号灯控制系统获取交通信号灯的状态信息,并发送给自动驾驶车辆。Figure 12a is a schematic diagram of the interaction scene between an autonomous vehicle and a network device. As shown in Figure 12a, the autonomous vehicle sends request information to the network device, and the network device obtains traffic signal status information from the traffic signal control system and sends it to the autonomous vehicle . Figure 12b is a schematic diagram of the interaction scene between the autonomous vehicle and the cloud. As shown in Figure 12b, the autonomous vehicle sends request information to the cloud, and the cloud obtains the status information of the traffic light from the traffic light control system and sends it to the self-driving vehicle.
S1106、自动驾驶车辆根据当前所在车道关联的交通信号灯的状态信息进行驾驶控制。S1106. The self-driving vehicle performs driving control according to the state information of the traffic signal light associated with the current lane.
本实施例中,自动驾驶车辆通过向网络设备或云端发送请求信息以获取交通信号灯的 状态信息,可以使得自动驾驶车辆按需进行消息发送和接收,减少处理的消息的数量。In this embodiment, the self-driving vehicle obtains the status information of the traffic signal by sending request information to the network device or the cloud, so that the self-driving vehicle can send and receive messages on demand, reducing the number of processed messages.
图13为本申请实施例提供的自动驾驶控制方法的另一种交互流程图,如图13所示,基于上述第二种可选方式的自动驾驶控制交互流程包括:FIG. 13 is another interaction flow chart of the automatic driving control method provided by the embodiment of the application. As shown in FIG. 13, the automatic driving control interaction flow based on the above-mentioned second optional method includes:
S1301、自动驾驶车辆确定当前所在车道的标识。S1301. The self-driving vehicle determines the identification of the current lane.
该步骤的具体执行过程与上述步骤S1001相同,可以参照上述步骤S1001,此处不再赘述。The specific execution process of this step is the same as the above step S1001, and you can refer to the above step S1001, which will not be repeated here.
S1302、自动驾驶车辆根据当前所在车道的标识确定车道关联的交通信号灯的标识。S1302. The self-driving vehicle determines the identifier of the traffic signal light associated with the lane according to the identifier of the current lane.
该步骤的具体执行过程可以参照前述实施例的描述,此处不再赘述。For the specific execution process of this step, reference may be made to the description of the foregoing embodiment, which will not be repeated here.
S1303、网络设备或云端广播至少一个交通信号灯的状态信息。S1303: The network device or the cloud broadcasts the state information of at least one traffic signal light.
值得说明的是,该步骤为网络设备或云端侧主动执行的操作,该操作独立于自动驾驶车辆的操作。因此,步骤与上述步骤S1301-S1302的执行顺序不分先后。It is worth noting that this step is an operation actively performed by the network device or the cloud side, and this operation is independent of the operation of the self-driving vehicle. Therefore, the order of execution of the steps and the aforementioned steps S1301-S1302 is in no particular order.
可选的,网络设备或云端可以实时向各交通信号灯所在区域内的所有自动驾驶车辆广播各交通信号灯的状态信息。示例性的,某个十字路口安装了4个交通信号灯,则网络设备或云端可以实时向该十字路口所在区域内的所有自动驾驶车辆广播该4个交通信号灯的状态信息。Optionally, the network device or the cloud can broadcast the status information of each traffic signal to all autonomous vehicles in the area where each traffic signal is located in real time. Exemplarily, if 4 traffic lights are installed at a certain intersection, the network device or the cloud can broadcast the status information of the 4 traffic lights to all autonomous vehicles in the area where the intersection is located in real time.
相应的,当前述步骤中所涉及的自动驾驶车辆行驶至该区域时,可以接收来自网络设备或云端的至少一个交通信号灯的状态信息。Correspondingly, when the autonomous vehicle involved in the foregoing steps travels to the area, it can receive the state information of at least one traffic signal from the network device or the cloud.
S1304、自动驾驶车辆根据当前所在车道关联的交通信号灯的标识,从上述至少一个交通信号灯的状态信息中获取当前所在车道关联的交通信号灯的状态信息。S1304. The self-driving vehicle obtains the status information of the traffic signal associated with the current lane from the status information of the at least one traffic signal according to the identifier of the associated traffic signal of the current lane.
网络设备或云端在广播每个交通信号灯的状态信息时,可以将交通信号灯的标识以及交通信号灯的状态信息同时广播出去,自动驾驶车辆通过对广播信息中的标识与上述步骤S1302得到的交通信号灯的标识进行匹配,可以得到属于当前所在车道关联的交通信号灯的状态信息。When the network device or cloud broadcasts the status information of each traffic signal light, it can broadcast the traffic signal identification and the traffic signal status information at the same time. The autonomous driving vehicle can compare the identification in the broadcast information with the traffic signal status information obtained in step S1302. The identification is matched, and the status information of the traffic signal lamp associated with the current lane can be obtained.
图14a为自动驾驶车辆与网络设备的交互场景示意图,如图14a所示,网络设备实时向十字路口所在区域的各自动驾驶车辆广播安装在该十字路口的各交通信号灯的状态信息,自动驾驶车辆通过匹配交通信号灯的标识,得到属于当前所在车道关联的交通信号灯的状态信息。图14b为自动驾驶车辆与云端的交互场景示意图,如图14b所示,云端实时向十字路口所在区域的各自动驾驶车辆广播安装在该十字路口的各交通信号灯的状态信息,自动驾驶车辆通过匹配交通信号灯的标识,得到属于当前所在车道关联的交通信号灯的状态信息。Figure 14a is a schematic diagram of the interactive scene between the autonomous vehicle and the network device. As shown in Figure 14a, the network device broadcasts the status information of the traffic lights installed at the intersection to the autonomous vehicles in the area where the intersection is located in real time. By matching the identifier of the traffic signal light, the status information of the traffic signal light associated with the current lane is obtained. Figure 14b is a schematic diagram of the interactive scene between autonomous vehicles and the cloud. As shown in Figure 14b, the cloud broadcasts the status information of the traffic lights installed at the intersection to the autonomous vehicles in the area where the intersection is located in real time, and the autonomous vehicles pass the matching The identification of the traffic signal light obtains the status information of the traffic signal light associated with the current lane.
S1305、自动驾驶车辆根据当前所在车道关联的交通信号灯的状态信息进行驾驶控制。S1305. The autonomous vehicle performs driving control according to the state information of the traffic signal light associated with the current lane.
本实施例中,网络设备或云端实时广播各交通信号灯的状态信息,自动驾驶车辆根据当前所在车道关联的交通信号灯的标识匹配出交通信号灯的状态信息,从而可以减少自动驾驶车辆与网络设备或云端之间的交互次数,提升处理速度。In this embodiment, the network equipment or the cloud broadcasts the status information of each traffic signal in real time, and the autonomous vehicle matches the status information of the traffic signal according to the identifier of the traffic signal associated with the current lane, thereby reducing the number of autonomous vehicles and network equipment or the cloud. The number of interactions between them improves the processing speed.
以下说明上述步骤S1003、步骤S1106以及步骤S1305中根据交通信号灯的状态信息进行驾驶控制的具体过程。The following describes the specific process of driving control according to the state information of the traffic light in the above step S1003, step S1106, and step S1305.
如前文所述,交通信号灯的状态信息表示交通信号灯在当前时刻的亮灯信息以及交通信号灯在未来某一段时间的变化情况等。As mentioned above, the status information of the traffic signal indicates the lighting information of the traffic signal at the current moment and the change of the traffic signal in a certain period of time in the future.
作为一种可选的实施方式,交通信号灯的状态信息可以包括如下至少一项:As an optional implementation manner, the state information of the traffic signal light may include at least one of the following:
交通信号灯的标识、交通信号灯的类型、交通信号灯的状态信息下发时刻、当前的亮灯颜色以及亮灯时刻预报信息等。The sign of the traffic signal, the type of the traffic signal, the time when the status information of the traffic signal is issued, the current light color, and the forecast information of the light time, etc.
其中,交通信号灯的状态信息下发时刻可以指网络设备或云端下发状态信息的时刻。当前的亮灯颜色可以包括:绿色、红色、黄色以及灭灯。亮灯时刻预报信息可以包括红灯时刻预报信息、黄灯时刻预报信息以及绿灯时刻预报信息。示例性的,红灯时刻预报信息可以指下两次红灯点亮的时刻。Among them, the time when the state information of the traffic signal lamp is issued may refer to the time when the state information is issued by the network device or the cloud. The current lighting colors can include: green, red, yellow, and off. The light-on time forecast information may include red light time forecast information, yellow light time forecast information, and green light time forecast information. Exemplarily, the red light time forecast information may refer to the time when the next red light is on.
下述表5为交通信号灯的状态信息的格式示例。The following Table 5 is an example of the format of the status information of traffic lights.
表5table 5
Figure PCTCN2020076251-appb-000001
Figure PCTCN2020076251-appb-000001
Figure PCTCN2020076251-appb-000002
Figure PCTCN2020076251-appb-000002
基于上述的交通信号灯的状态信息,自动驾驶车辆可以根据以下信息中的至少一种确定自动驾驶车辆的驾驶动作:Based on the above-mentioned state information of the traffic signal, the autonomous vehicle can determine the driving action of the autonomous vehicle according to at least one of the following information:
当前时刻、自动驾驶车辆与路口的距离、自动驾驶车辆当前行驶速度、交通信号灯状态信息下发时刻、交通信号灯当前的亮灯颜色、交通信号灯亮灯时刻预报信息。The current time, the distance between the self-driving vehicle and the intersection, the current speed of the self-driving vehicle, the time when the traffic signal status information is issued, the current color of the traffic signal, and the forecast information about the time when the traffic signal is on.
其中,上述驾驶动作包括:停止、直行、左转、右转或掉头。Among them, the aforementioned driving actions include: stop, go straight, turn left, turn right, or turn around.
以下列举出自动驾驶车辆基于上述至少一种信息进行驾驶控制时的处理方式。The following is a list of processing methods when an autonomous vehicle performs driving control based on at least one of the above-mentioned information.
第一种方式中,自动驾驶车辆可以根据当前时刻、自动驾驶车辆与路口的距离、自动驾驶车辆当前行驶速度以及交通信号灯亮灯时刻预报信息提前预测出自动驾驶车辆到达路口时的亮灯颜色,并按照预测出的颜色控制车辆的驾驶动作,当预测结果为绿灯时,需根据自动驾驶车辆速度变化对预测结果进行动态更新,当预测结果为黄灯或红灯时,则减速。In the first method, the self-driving vehicle can predict the light color of the self-driving vehicle when it arrives at the intersection in advance based on the current time, the distance between the self-driving vehicle and the intersection, the current speed of the self-driving vehicle, and the forecast information of the time when the traffic signal lights are on. The driving action of the vehicle is controlled according to the predicted color. When the prediction result is a green light, the prediction result needs to be dynamically updated according to the speed change of the autonomous vehicle. When the prediction result is a yellow light or a red light, the vehicle will decelerate.
一种示例中,自动驾驶车辆基于当前时刻、自动驾驶车辆与路口的距离以及自动驾驶车辆当前行驶速度可以确定出自动驾驶车辆到达路口的时刻,同时,自动驾驶车辆根据交通信号灯亮灯时刻预报信息确定出在车辆到达路口时绿灯亮,则自动驾驶车辆继续监控车辆速度,当车辆速度变化时,再次使用上述方式预测到达路口时的亮灯颜色,并在实际到达路口时按照最新预测的亮灯颜色控制自动驾驶车辆继续向某一方向行驶或停止。In one example, the autonomous vehicle can determine the time when the autonomous vehicle arrives at the intersection based on the current time, the distance between the autonomous vehicle and the intersection, and the current driving speed of the autonomous vehicle. At the same time, the autonomous vehicle forecasts information based on the time when the traffic signal lights are on. It is determined that the green light is on when the vehicle arrives at the intersection, and the autonomous vehicle continues to monitor the vehicle speed. When the vehicle speed changes, the above method is used again to predict the color of the light when it arrives at the intersection, and the light will be lighted according to the latest prediction when it actually arrives at the intersection. The color controls the autonomous vehicle to continue driving in a certain direction or stop.
另一种示例中,自动驾驶车辆基于当前时刻、自动驾驶车辆与路口的距离以及自动驾驶车辆当前行驶速度可以确定出自动驾驶车辆到达路口的时刻,同时,自动驾驶车辆根据交通信号灯亮灯时刻预报信息确定出在车辆到达路口时红灯亮,则自动驾驶车辆可以控制自动驾驶车辆减速。In another example, the self-driving vehicle can determine the time when the self-driving vehicle arrives at the intersection based on the current time, the distance between the self-driving vehicle and the intersection, and the current driving speed of the self-driving vehicle. At the same time, the self-driving vehicle predicts the time when the traffic signal lights are on. The information determines that the red light is on when the vehicle arrives at the intersection, and the autonomous vehicle can control the autonomous vehicle to decelerate.
第二种方式中,自动驾驶车辆可以在到达路口时根据当前时刻、交通信号灯的状态信息下发时刻、当前的亮灯颜色来判断交通信号灯当前的亮灯颜色并控制车辆的驾驶动作。In the second method, when an autonomous vehicle arrives at an intersection, it can determine the current light color of the traffic signal light and control the driving action of the vehicle based on the current time, the time when the traffic signal status information is issued, and the current light color.
示例性的,自动驾驶车辆到达路口时根据当前时刻以及交通信号灯的状态信息下发时刻,可以获知当前时刻的亮灯颜色是否为下发的状态信息中当前的亮灯颜色,若是,则按照当前的亮灯颜色控制自从驾驶车辆继续向某一方向行驶或停止。例如,当前时刻为2点01分,交通信号灯的状态信息下发时刻为2点05秒,即当前时刻距离下发状态信息的时间经过了55秒,假设状态信息中当前时刻的亮灯颜色的亮灯时长为90秒,则说明当前时刻还未超过交通信号灯颜色转换的时刻,因此当前时刻实际的亮灯颜色为状态信息中当前的亮灯颜色,因此,自动驾驶车辆可以按照状态信息中当前的亮灯颜色控制自动驾驶车辆继续向某一方向行驶或停止。Exemplarily, when an autonomous vehicle arrives at an intersection, according to the current time and the time when the status information of the traffic signal is issued, it can be known whether the light color at the current time is the current light color in the issued status information. The color of the light is controlled since the vehicle continues to drive in a certain direction or stops. For example, the current time is 2:01, and the traffic signal status information is issued at 2:05 seconds, that is, 55 seconds have elapsed since the time the status information was issued. The lighting time is 90 seconds, which means that the current time has not passed the time of the traffic signal color conversion. Therefore, the actual lighting color at the current time is the current lighting color in the status information. Therefore, the self-driving vehicle can follow the current status in the status information. The color of the lights controls the autonomous vehicle to continue driving in a certain direction or stop.
第三种方式中,自动驾驶车辆从与路口的距离为预设距离时开始,按照预设周期不断获取当前的亮灯颜色,并依据到达路口前最后一个周期中的当前的亮灯颜色控制自动驾驶车辆的驾驶动作。In the third method, the self-driving vehicle starts when the distance from the intersection is the preset distance, and continuously obtains the current lighting color according to the preset cycle, and controls the automatic control based on the current lighting color in the last cycle before reaching the intersection. The driving action of driving a vehicle.
示例性的,自动驾驶车辆到达路口前最后一个周期的当前的亮灯颜色为红色,则自动驾驶车辆到达路口时停止。Exemplarily, the current lighting color of the last cycle before the autonomous vehicle arrives at the intersection is red, and the autonomous vehicle stops when it reaches the intersection.
示例性的,上述的周期可以是距离的周期,例如,每50米为一个周期,或者,也可以是时间的周期,例如,每0.5秒为一个周期。Exemplarily, the aforementioned period may be a period of distance, for example, every 50 meters is a period, or it may also be a period of time, for example, every 0.5 second is a period.
在上述实施例中,自动驾驶车辆能够获取到的上述的至少一种状态信息,基于这些状态信息,自动驾驶车辆可以在未到达路口时即开始控制自动车辆减速等,使得自动驾驶控制与实际的路况更加匹配。In the above-mentioned embodiment, at least one of the above-mentioned state information that the autonomous driving vehicle can obtain, based on the state information, the autonomous driving vehicle can start to control the automatic vehicle deceleration before reaching the intersection, so that the automatic driving control is in line with the actual The road conditions are more matched.
图15为本申请实施例提供的一种自动驾驶控制装置的模块结构图,该装置可以为前述的自动驾驶车辆,也可以为能够使得自动驾驶车辆实现本申请实施例提供的方法中的自动驾驶车辆的功能的装置,例如该装置可以是自动驾驶车辆中的装置或芯片系统。如图15所示,该装置包括:处理单元1501。FIG. 15 is a block diagram of an automatic driving control device provided by an embodiment of the application. The device may be the aforementioned automatic driving vehicle, or it may be capable of enabling the automatic driving vehicle to realize the automatic driving in the method provided by the embodiment of the application. The device of the vehicle function, for example, the device may be a device or a chip system in an autonomous driving vehicle. As shown in FIG. 15, the device includes: a processing unit 1501.
处理单元1501,用于确定当前所在车道的标识,根据所述车道的标识,获取所述车道关联的交通信号灯的状态信息,以及,根据所述交通信号灯的状态信息进行驾驶控制。The processing unit 1501 is configured to determine the identifier of the current lane, obtain state information of the traffic signal lamp associated with the lane according to the lane identifier, and perform driving control according to the state information of the traffic signal lamp.
作为一种可选的实施方式,处理单元1501具体用于:As an optional implementation manner, the processing unit 1501 is specifically configured to:
根据所述车道的标识确定所述车道关联的交通信号灯的标识;以及,从网络设备或云端获取所述车道关联的交通信号灯的状态信息。The identification of the traffic signal light associated with the lane is determined according to the identification of the lane; and the state information of the traffic signal light associated with the lane is obtained from a network device or the cloud.
继续参照图15,作为一种可选的实施方式,上述装置还包括:收发单元1502。Continuing to refer to FIG. 15, as an optional implementation manner, the foregoing apparatus further includes: a transceiver unit 1502.
收发单元1502,用于向所述网络设备或云端发送请求信息,所述请求信息用于获取所述车道关联的交通信号灯的状态信息;以及,接收来自所述网络设备或云端的所述车道关联的交通信号灯的状态信息。The transceiver unit 1502 is configured to send request information to the network device or the cloud, where the request information is used to obtain the status information of the traffic signal lamp associated with the lane; and to receive the lane association from the network device or the cloud Information about the status of traffic lights.
作为一种可选的实施方式,所述车道关联的交通信号灯的标识为所述请求信息的一部分。As an optional implementation manner, the identifier of the traffic signal lamp associated with the lane is a part of the request information.
作为一种可选的实施方式,处理单元1501具体用于:As an optional implementation manner, the processing unit 1501 is specifically configured to:
接收来自所述网络设备或云端的至少一个交通信号灯的状态信息;以及,根据所述车道关联的交通信号灯的标识,从所述至少一个交通信号灯的状态信息中获取所述车道关联的交通信号灯的状态信息。Receiving the status information of at least one traffic signal light from the network device or the cloud; and, according to the identification of the traffic signal light associated with the lane, obtaining the status information of the traffic signal light associated with the lane from the status information of the at least one traffic light status information.
作为一种可选的实施方式,处理单元1501具体用于:As an optional implementation manner, the processing unit 1501 is specifically configured to:
在自动驾驶车辆与目标路口的距离小于预设阈值时,确定当前所在车道的标识。When the distance between the autonomous vehicle and the target intersection is less than the preset threshold, the identification of the current lane is determined.
作为一种可选的实施方式,处理单元1501具体用于:As an optional implementation manner, the processing unit 1501 is specifically configured to:
在自动驾驶车辆发生变道时,确定变道后所在车道的标识,并将所述变道后所在车道的标识作为当前所在车道的标识。When the automatic driving vehicle changes lanes, the identifier of the lane where the vehicle is located after the lane change is determined, and the identifier of the lane where it is located after the lane change is used as the identifier of the current lane.
作为一种可选的实施方式,所述车道关联的交通信号灯的状态信息包括以下信息中的至少一种:As an optional implementation manner, the state information of the traffic signal lamp associated with the lane includes at least one of the following information:
所述交通信号灯的标识、所述交通信号灯的类型、所述交通信号灯状态信息下发时刻、当前的亮灯颜色、亮灯时刻预报信息。The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
作为一种可选的实施方式,处理单元1501具体用于:As an optional implementation manner, the processing unit 1501 is specifically configured to:
根据以下信息中的至少一种确定自动驾驶车辆的驾驶动作:Determine the driving action of the autonomous vehicle based on at least one of the following information:
当前时刻、所述自动驾驶车辆与路口的距离、所述自动驾驶车辆当前行驶速度、所述交通信号灯状态信息下发时刻、所述交通信号灯当前的亮灯颜色、所述交通信号灯亮灯时刻预报信息。The current time, the distance between the autonomous driving vehicle and the intersection, the current driving speed of the autonomous driving vehicle, the time when the traffic signal status information is issued, the current lighting color of the traffic signal, and the forecast of the traffic signal lighting time information.
所述驾驶动作包括:停止、直行、左转、右转或掉头。The driving action includes: stopping, going straight, turning left, turning right or turning around.
作为一种可选的实施方式,所述车道的标识包括如下至少一种:As an optional implementation manner, the lane markings include at least one of the following:
所述车道的车道线的标识、所述车道的车道停止线的标识、所述车道的车道中心线的 标识、所述车道的车道节点的标识。The mark of the lane line of the lane, the mark of the lane stop line of the lane, the mark of the lane center line of the lane, and the mark of the lane node of the lane.
本申请实施例提供的自动驾驶控制装置,可以执行上述方法实施例中的方法步骤,其实现原理和技术效果类似,在此不再赘述。The automatic driving control device provided in the embodiment of the present application can execute the method steps in the above method embodiment, and its implementation principles and technical effects are similar, and will not be repeated here.
图16为本申请实施例提供的一种信息处理装置的模块结构图,该装置可以为前述的网络设备或云端,也可以为能够使得网络设备或云端实现本申请实施例提供的方法中的网络设备或云端的功能的装置,例如该装置可以是网络设备或云端中的装置或芯片系统。如图16所示,该装置包括:处理单元1601和收发单元1602。FIG. 16 is a module structure diagram of an information processing device provided by an embodiment of this application. The device can be the aforementioned network device or cloud, or it can enable the network device or cloud to implement the network in the method provided by the embodiment of this application. A device or a cloud-enabled device. For example, the device may be a network device or a device in the cloud or a chip system. As shown in FIG. 16, the device includes: a processing unit 1601 and a transceiver unit 1602.
处理单元1601,用于获取至少一个交通信号灯的状态信息。The processing unit 1601 is configured to obtain state information of at least one traffic signal light.
收发单元1602,用于向自动驾驶车辆发送交通信号灯的状态信息。The transceiver unit 1602 is used to send traffic signal status information to the autonomous vehicle.
作为一种可选的实施方式,收发单元1602具体用于:As an optional implementation manner, the transceiver unit 1602 is specifically configured to:
接收目标自动驾驶车辆发送的请求信息,所述请求信息用于获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息。Receive request information sent by a target autonomous driving vehicle, where the request information is used to obtain status information of a traffic signal associated with the lane where the target autonomous driving vehicle is currently located.
处理单元1601还用于:根据所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识,获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息。The processing unit 1601 is further configured to: obtain state information of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located according to the identifier of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located.
收发单元1602具体用于:向所述目标自动驾驶车辆发送所述车道关联的交通信号灯的状态信息。The transceiver unit 1602 is specifically configured to send the state information of the traffic signal lamp associated with the lane to the target autonomous driving vehicle.
作为一种可选的实施方式,所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识为所述请求信息的一部分。As an optional implementation manner, the identifier of the traffic signal light associated with the lane where the target autonomous driving vehicle is currently located is part of the request information.
作为一种可选的实施方式,收发单元1602具体用于:As an optional implementation manner, the transceiver unit 1602 is specifically configured to:
向至少一个自动驾驶车辆广播至少一个交通信号灯的状态信息。Broadcast the status information of at least one traffic light to at least one autonomous vehicle.
作为一种可选的实施方式,处理单元1601具体用于:As an optional implementation manner, the processing unit 1601 is specifically configured to:
从交通信号灯控制系统获取至少一个交通信号灯的状态信息。Obtain the status information of at least one traffic light from the traffic light control system.
本申请实施例提供的信息处理装置,可以执行上述方法实施例中的方法步骤,其实现原理和技术效果类似,在此不再赘述。The information processing device provided in the embodiment of the present application can execute the method steps in the above method embodiment, and its implementation principles and technical effects are similar, and will not be repeated here.
需要说明的是,应理解以上装置的各个模块的划分仅仅是一种逻辑功能的划分,实际实现时可以全部或部分集成到一个物理实体上,也可以物理上分开。且这些模块可以全部以软件通过处理元件调用的形式实现;也可以全部以硬件的形式实现;还可以部分模块通过处理元件调用软件的形式实现,部分模块通过硬件的形式实现。例如,确定模块可以为单独设立的处理元件,也可以集成在上述装置的某一个芯片中实现,此外,也可以以程序代码的形式存储于上述装置的存储器中,由上述装置的某一个处理元件调用并执行以上确定模块的功能。其它模块的实现与之类似。此外这些模块全部或部分可以集成在一起,也可以独立实现。这里所述的处理元件可以是一种集成电路,具有信号的处理能力。在实现过程中,上述方法的各步骤或以上各个模块可以通过处理器元件中的硬件的集成逻辑电路或者软件形式的指令完成。It should be noted that it should be understood that the division of the various modules of the above device is only a division of logical functions, and may be fully or partially integrated into a physical entity during actual implementation, or may be physically separated. And these modules can all be implemented in the form of software called by processing elements; they can also be implemented in the form of hardware; some modules can be implemented in the form of calling software by processing elements, and some of the modules can be implemented in the form of hardware. For example, the determining module may be a separately established processing element, or it may be integrated in a certain chip of the above-mentioned device for implementation. In addition, it may also be stored in the memory of the above-mentioned device in the form of program code, which is determined by a certain processing element of the above-mentioned device. Call and execute the functions of the above-identified module. The implementation of other modules is similar. In addition, all or part of these modules can be integrated together or implemented independently. The processing element described here may be an integrated circuit with signal processing capability. In the implementation process, each step of the above method or each of the above modules can be completed by an integrated logic circuit of hardware in the processor element or instructions in the form of software.
例如,以上这些模块可以是被配置成实施以上方法的一个或多个集成电路,例如:一个或多个特定集成电路(application specific integrated circuit,ASIC),或,一个或多个微处理器(digital signal processor,DSP),或,一个或者多个现场可编程门阵列(field programmable gate array,FPGA)等。再如,当以上某个模块通过处理元件调度程序代码 的形式实现时,该处理元件可以是通用处理器,例如中央处理器(central processing unit,CPU)或其它可以调用程序代码的处理器。再如,这些模块可以集成在一起,以片上系统(system-on-a-chip,SOC)的形式实现。For example, the above modules may be one or more integrated circuits configured to implement the above methods, such as: one or more application specific integrated circuits (ASIC), or one or more microprocessors (digital signal processor, DSP), or, one or more field programmable gate arrays (FPGA), etc. For another example, when one of the above modules is implemented in the form of processing element scheduling program code, the processing element may be a general-purpose processor, such as a central processing unit (CPU) or other processors that can call program codes. For another example, these modules can be integrated together and implemented in the form of a system-on-a-chip (SOC).
在上述实施例中,可以全部或部分地通过软件、硬件、固件或者其任意组合来实现。当使用软件实现时,可以全部或部分地以计算机程序产品的形式实现。所述计算机程序产品包括一个或多个计算机指令。在计算机上加载和执行所述计算机程序指令时,全部或部分地产生按照本申请实施例所述的流程或功能。所述计算机可以是通用计算机、专用计算机、计算机网络、或者其他可编程装置。所述计算机指令可以存储在计算机可读存储介质中,或者从一个计算机可读存储介质向另一个计算机可读存储介质传输,例如,所述计算机指令可以从一个网站站点、计算机、服务器或数据中心通过有线(例如同轴电缆、光纤、数字用户线(DSL))或无线(例如红外、无线、微波等)方式向另一个网站站点、计算机、服务器或数据中心进行传输。所述计算机可读存储介质可以是计算机能够存取的任何可用介质或者是包含一个或多个可用介质集成的服务器、数据中心等数据存储设备。所述可用介质可以是磁性介质,(例如,软盘、硬盘、磁带)、光介质(例如,DVD)、或者半导体介质(例如固态硬盘solid state disk(SSD))等。In the above embodiments, it may be implemented in whole or in part by software, hardware, firmware, or any combination thereof. When implemented by software, it can be implemented in the form of a computer program product in whole or in part. The computer program product includes one or more computer instructions. When the computer program instructions are loaded and executed on the computer, the processes or functions described in the embodiments of the present application are generated in whole or in part. The computer may be a general-purpose computer, a special-purpose computer, a computer network, or other programmable devices. The computer instructions may be stored in a computer-readable storage medium, or transmitted from one computer-readable storage medium to another computer-readable storage medium. For example, the computer instructions may be transmitted from a website, computer, server, or data center. Transmission to another website, computer, server or data center via wired (such as coaxial cable, optical fiber, digital subscriber line (DSL)) or wireless (such as infrared, wireless, microwave, etc.). The computer-readable storage medium may be any available medium that can be accessed by a computer or a data storage device such as a server or a data center integrated with one or more available media. The usable medium may be a magnetic medium (for example, a floppy disk, a hard disk, and a magnetic tape), an optical medium (for example, a DVD), or a semiconductor medium (for example, a solid state disk (SSD)).
当自动驾驶处理装置为自动驾驶车辆时,当信息处理装置为网络设备或云端时,收发单元1502和收发单元1602在发送信息时可以为发送单元或发射器,收发单元1502和收发单元1602在接收信息时可以为接收单元或接收器,收发单元可以为收发器,此收发器、发射器或接收器可以为射频电路。当自动驾驶处理装置和信息处理装置包含存储单元时,该存储单元用于存储计算机指令,处理单元1501或处理单元1601与存储单元通信连接,处理单元1501或处理单元1601执行存储单元存储的计算机指令,使自动驾驶处理装置和信息处理装置执行图10-图13实施例涉及的方法。其中,处理单元可以是一个通用中央处理器(CPU),微处理器,特定ASIC。When the automatic driving processing device is an automatic driving vehicle, and when the information processing device is a network device or the cloud, the transceiver unit 1502 and the transceiver unit 1602 can be a transmitting unit or a transmitter when sending information, and the transceiver unit 1502 and the transceiver unit 1602 are receiving The information can be a receiving unit or a receiver, the transceiver unit can be a transceiver, and the transceiver, transmitter or receiver can be a radio frequency circuit. When the automatic driving processing device and the information processing device include a storage unit, the storage unit is used to store computer instructions, and the processing unit 1501 or 1601 is in communication with the storage unit, and the processing unit 1501 or 1601 executes the computer instructions stored in the storage unit , Make the automatic driving processing device and the information processing device execute the methods involved in the embodiments of Figs. 10-13. Among them, the processing unit may be a general-purpose central processing unit (CPU), a microprocessor, or a specific ASIC.
当自动驾驶处理装置或信息处理装置为芯片时,收发单元1502和收发单元1602可以是输入和/或输出接口、管脚或电路等。处理单元1501或处理单元1601可执行存储单元存储的计算机执行指令,以使该自动驾驶处理装置或信息处理装置内的芯片执行图10-图13所涉及的方法。可选地,所述存储单元为所述芯片内的存储单元,如寄存器、缓存等,所述存储单元还可以是所述自动驾驶处理装置或信息处理装置内的位于所述芯片外部的存储单元,如只读存储器(Read Only Memory,ROM)或可存储静态信息和指令的其他类型的静态存储设备,随机存取存储器(Random Access Memory,RAM)等。When the automatic driving processing device or the information processing device is a chip, the transceiving unit 1502 and the transceiving unit 1602 may be input and/or output interfaces, pins, or circuits. The processing unit 1501 or the processing unit 1601 can execute the computer-executable instructions stored in the storage unit, so that the automatic driving processing device or the chip in the information processing device executes the methods involved in FIGS. 10 to 13. Optionally, the storage unit is a storage unit in the chip, such as a register, a cache, etc., and the storage unit may also be a storage unit located outside the chip in the automatic driving processing device or the information processing device , Such as read only memory (Read Only Memory, ROM) or other types of static storage devices that can store static information and instructions, random access memory (Random Access Memory, RAM), etc.
图17为本申请实施例提供的一种通信装置的结构示意图。该通信装置可以为前述实施例中所述的自动驾驶车辆,也可以为前述实施例中所述的网络设备或云端。如图17所示,该通信装置1700可以包括:处理器171(例如CPU)、存储器172、收发器173;收发器173耦合至处理器171,处理器171控制收发器173的收发动作。存储器172中可以存储各种指令,以用于完成各种处理功能以及实现本申请实施例中自动驾驶车辆或网络设备或云端执行的方法步骤。FIG. 17 is a schematic structural diagram of a communication device provided by an embodiment of this application. The communication device may be the self-driving vehicle described in the foregoing embodiment, or may be the network device or the cloud described in the foregoing embodiment. As shown in FIG. 17, the communication device 1700 may include: a processor 171 (for example, a CPU), a memory 172, and a transceiver 173; the transceiver 173 is coupled to the processor 171, and the processor 171 controls the transceiver 173 to send and receive actions. Various instructions may be stored in the memory 172 to complete various processing functions and implement method steps executed by the autonomous vehicle or network device or cloud in the embodiments of the present application.
可选的,本申请实施例涉及的通信装置还可以包括:电源174、系统总线175以及通信端口176。收发器173可以集成在通信装置的收发信机中,也可以为通信装置上独立的收发天线。系统总线175用于实现元件之间的通信连接。上述通信端口176用于实现通信 装置与其他外设之间进行连接通信。Optionally, the communication device involved in the embodiment of the present application may further include: a power supply 174, a system bus 175, and a communication port 176. The transceiver 173 may be integrated in the transceiver of the communication device, or may be an independent transceiver antenna on the communication device. The system bus 175 is used to implement communication connections between components. The above-mentioned communication port 176 is used to realize connection and communication between the communication device and other peripherals.
在本申请实施例中,上述处理器171用于与存储器172耦合,读取并执行存储器172中的指令,以实现上述方法实施例中自动驾驶车辆或网络设备或云端执行的方法步骤。收发器173与处理器171耦合,由处理器171控制收发器173进行消息收发,其实现原理和技术效果类似,在此不再赘述。In the embodiment of the present application, the above-mentioned processor 171 is configured to couple with the memory 172 to read and execute instructions in the memory 172 to implement the method steps executed by the autonomous vehicle or network device or the cloud in the above method embodiment. The transceiver 173 is coupled with the processor 171, and the processor 171 controls the transceiver 173 to send and receive messages. The implementation principles and technical effects are similar, and will not be repeated here.
该图17中提到的系统总线可以是外设部件互连标准(peripheral component interconnect,PCI)总线或扩展工业标准结构(extended industry standard architecture,EISA)总线等。所述系统总线可以分为地址总线、数据总线、控制总线等。为便于表示,图中仅用一条粗线表示,但并不表示仅有一根总线或一种类型的总线。通信接口用于实现数据库访问装置与其他设备(例如客户端、读写库和只读库)之间的通信。存储器可能包含RAM,也可能还包括非易失性存储器(non-volatile memory),例如至少一个磁盘存储器。The system bus mentioned in FIG. 17 may be a peripheral component interconnect standard (PCI) bus or an extended industry standard architecture (EISA) bus, etc. The system bus can be divided into an address bus, a data bus, a control bus, and the like. For ease of representation, only one thick line is used in the figure, but it does not mean that there is only one bus or one type of bus. The communication interface is used to realize the communication between the database access device and other devices (such as the client, the read-write library and the read-only library). The memory may include RAM, or may also include non-volatile memory, such as at least one disk memory.
该图17中提到的处理器可以是通用处理器,包括中央处理器CPU、网络处理器The processor mentioned in Figure 17 may be a general-purpose processor, including a central processing unit (CPU) and a network processor.
(network processor,NP)等;还可以是数字信号处理器DSP、专用集成电路ASIC、现场可编程门阵列FPGA或者其他可编程逻辑器件、分立门或者晶体管逻辑器件、分立硬件组件。(network processor, NP), etc.; it can also be a digital signal processor DSP, an application specific integrated circuit ASIC, a field programmable gate array FPGA or other programmable logic devices, discrete gates or transistor logic devices, discrete hardware components.
可选的,本申请实施例还提供一种可读存储介质,所述存储介质中存储有指令,当其在计算机上运行时,使得计算机执行如上述图10至图13所示实施例的方法。Optionally, an embodiment of the present application further provides a readable storage medium, which stores instructions in the storage medium, which when run on a computer, causes the computer to execute the method in the above-mentioned embodiments shown in FIGS. 10 to 13 .
可选的,本申请实施例还提供一种运行指令的芯片,所述芯片用于执行上述图10至图13所示实施例的方法。Optionally, an embodiment of the present application further provides a chip for executing instructions, and the chip is configured to execute the method of the embodiment shown in FIG. 10 to FIG. 13.
本申请实施例还提供一种程序产品,所述程序产品包括计算机程序,所述计算机程序存储在存储介质中,至少一个处理器可以从所述存储介质读取所述计算机程序,所述至少一个处理器执行所述计算机程序时可实现上述图10至图13所示实施例的方法。An embodiment of the present application further provides a program product, the program product includes a computer program, the computer program is stored in a storage medium, at least one processor can read the computer program from the storage medium, and the at least one When the processor executes the computer program, the method of the embodiment shown in FIG. 10 to FIG. 13 can be implemented.
在本申请实施例中,“至少一个”是指一个或者多个,“多个”是指两个或两个以上。“和/或”,描述关联对象的关联关系,表示可以存在三种关系,例如,A和/或B,可以表示:单独存在A,同时存在A和B,单独存在B的情况,其中A,B可以是单数或者复数。字符“/”一般表示前后关联对象是一种“或”的关系;在公式中,字符“/”,表示前后关联对象是一种“相除”的关系。“以下至少一项(个)”或其类似表达,是指的这些项中的任意组合,包括单项(个)或复数项(个)的任意组合。例如,a,b,或c中的至少一项(个),可以表示:a,b,c,a-b,a-c,b-c,或a-b-c,其中,a,b,c可以是单个,也可以是多个。In the embodiments of the present application, "at least one" refers to one or more, and "multiple" refers to two or more. "And/or" describes the association relationship of the associated objects, indicating that there can be three relationships, for example, A and/or B, which can mean: A alone exists, A and B exist at the same time, and B exists alone, where A, B can be singular or plural. The character "/" generally indicates that the associated objects before and after are in an "or" relationship; in the formula, the character "/" indicates that the associated objects before and after are in a "division" relationship. "The following at least one item (a)" or similar expressions refers to any combination of these items, including any combination of a single item (a) or a plurality of items (a). For example, at least one of a, b, or c can mean: a, b, c, ab, ac, bc, or abc, where a, b, and c can be single or multiple indivual.
可以理解的是,在本申请实施例中涉及的各种数字编号仅为描述方便进行的区分,并不用来限制本申请实施例的范围。It can be understood that the various numerical numbers involved in the embodiments of the present application are only for easy distinction for description, and are not used to limit the scope of the embodiments of the present application.
可以理解的是,在本发明的实施例中,上述各过程的序号的大小并不意味着执行顺序的先后,各过程的执行顺序应以其功能和内在逻辑确定,而不应对本申请实施例的实施过程构成任何限定。It can be understood that, in the embodiments of the present invention, the size of the sequence numbers of the above-mentioned processes does not mean the order of execution. The execution order of the processes should be determined by their functions and internal logic, and should not correspond to the embodiments of the present application. The implementation process constitutes any limitation.
最后应说明的是:以上各实施例仅用以说明本发明的技术方案,而非对其限制;尽管参照前述各实施例对本发明进行了详细的说明,本领域的普通技术人员应当理解:其依然可以对前述各实施例所记载的技术方案进行修改,或者对其中部分或者全部技术特征进行等同替换;而这些修改或者替换,并不使相应技术方案的本质脱离本发明各实施例技术方案的范围。Finally, it should be noted that the above embodiments are only used to illustrate the technical solutions of the present invention, not to limit them; although the present invention has been described in detail with reference to the foregoing embodiments, those of ordinary skill in the art should understand that: The technical solutions recorded in the foregoing embodiments can still be modified, or some or all of the technical features can be equivalently replaced; and these modifications or replacements do not cause the essence of the corresponding technical solutions to deviate from the technical solutions of the embodiments of the present invention. Scope.

Claims (37)

  1. 一种自动驾驶控制方法,其特征在于,包括:An automatic driving control method, characterized in that it includes:
    自动驾驶车辆确定当前所在车道的标识;The self-driving vehicle determines the sign of the current lane;
    所述自动驾驶车辆根据所述车道的标识,获取所述车道关联的交通信号灯的状态信息;Acquiring, by the autonomous vehicle, the state information of the traffic signal light associated with the lane according to the lane mark;
    所述自动驾驶车辆根据所述交通信号灯的状态信息进行驾驶控制。The self-driving vehicle performs driving control according to the state information of the traffic signal light.
  2. 根据权利要求1所述的方法,其特征在于,所述自动驾驶车辆根据所述车道的标识,获取所述车道关联的交通信号灯的状态信息,包括:The method according to claim 1, wherein the self-driving vehicle obtains state information of traffic signal lights associated with the lane according to the lane markings, comprising:
    所述自动驾驶车辆根据所述车道的标识确定所述车道关联的交通信号灯的标识;Determining, by the self-driving vehicle, the identifier of the traffic signal light associated with the lane according to the identifier of the lane;
    所述自动驾驶车辆从网络设备或云端获取所述车道关联的交通信号灯的状态信息。The autonomous vehicle obtains the state information of the traffic signal light associated with the lane from a network device or the cloud.
  3. 根据权利要求2所述的方法,其特征在于,所述自动驾驶车辆从网络设备或云端获取所述车道关联的交通信号灯的状态信息,包括:The method according to claim 2, wherein the self-driving vehicle obtains the state information of the traffic signal light associated with the lane from a network device or the cloud, comprising:
    所述自动驾驶车辆向所述网络设备或云端发送请求信息,所述请求信息用于获取所述车道关联的交通信号灯的状态信息;Sending, by the autonomous vehicle, request information to the network device or the cloud, where the request information is used to obtain the status information of the traffic signal lamp associated with the lane;
    所述自动驾驶车辆接收来自所述网络设备或云端的所述车道关联的交通信号灯的状态信息。The self-driving vehicle receives state information of the traffic signal light associated with the lane from the network device or the cloud.
  4. 根据权利要求3所述的方法,其特征在于,所述车道关联的交通信号灯的标识为所述请求信息的一部分。The method according to claim 3, wherein the identifier of the traffic signal light associated with the lane is a part of the request information.
  5. 根据权利要求2所述的方法,其特征在于,所述自动驾驶车辆从网络设备或云端获取所述车道关联的交通信号灯的状态信息,包括:The method according to claim 2, wherein the self-driving vehicle obtains the state information of the traffic signal lamp associated with the lane from a network device or the cloud, comprising:
    所述自动驾驶车辆接收来自所述网络设备或云端的至少一个交通信号灯的状态信息;The autonomous vehicle receives state information of at least one traffic signal from the network device or the cloud;
    所述自动驾驶车辆根据所述车道关联的交通信号灯的标识,从所述至少一个交通信号灯的状态信息中获取所述车道关联的交通信号灯的状态信息。The autonomous vehicle obtains the state information of the traffic signal light associated with the lane from the state information of the at least one traffic signal light according to the identifier of the traffic light associated with the lane.
  6. 根据权利要求1-5任一项所述的方法,其特征在于,所述自动驾驶车辆确定当前所在车道的标识,包括:The method according to any one of claims 1 to 5, wherein the automatic driving vehicle determining the identifier of the current lane comprises:
    若所述自动驾驶车辆与目标路口的距离小于预设阈值,则所述自动驾驶车辆确定当前所在车道的标识。If the distance between the self-driving vehicle and the target intersection is less than a preset threshold, the self-driving vehicle determines the identity of the lane where it is currently located.
  7. 根据权利要求6所述的方法,其特征在于,所述自动驾驶车辆确定当前所在车道的标识,还包括:The method according to claim 6, wherein the automatic driving vehicle determining the identifier of the current lane further comprises:
    若所述自动驾驶车辆发生变道,则所述自动驾驶车辆确定变道后所在车道的标识;If the automatic driving vehicle changes lanes, the automatic driving vehicle determines the lane markings where the automatic driving vehicle is located after the lane change;
    所述自动驾驶车辆将所述变道后所在车道的标识作为当前所在车道的标识。The self-driving vehicle uses the identifier of the lane where the vehicle is located after the lane change as the identifier of the lane where it is currently located.
  8. 根据权利要求1-7任一项所述的方法,其特征在于,所述车道关联的交通信号灯的状态信息包括以下信息中的至少一种:The method according to any one of claims 1-7, wherein the state information of the traffic signal lamp associated with the lane includes at least one of the following information:
    所述交通信号灯的标识、所述交通信号灯的类型、所述交通信号灯状态信息下发时刻、当前的亮灯颜色、亮灯时刻预报信息。The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
  9. 根据权利要求1-8任一项所述的方法,其特征在于,所述自动驾驶车辆根据所述交通信号灯的状态信息进行驾驶控制,包括:The method according to any one of claims 1-8, wherein the self-driving vehicle performs driving control according to the state information of the traffic signal light, comprising:
    所述自动驾驶车辆根据以下信息中的至少一种确定所述自动驾驶车辆的驾驶动作:The self-driving vehicle determines the driving action of the self-driving vehicle according to at least one of the following information:
    当前时刻、所述自动驾驶车辆与路口的距离、所述自动驾驶车辆当前行驶速度、所述交通信号灯状态信息下发时刻、所述交通信号灯当前的亮灯颜色、所述交通信号灯亮灯时 刻预报信息;The current time, the distance between the autonomous driving vehicle and the intersection, the current driving speed of the autonomous vehicle, the time when the traffic signal status information is issued, the current lighting color of the traffic signal, and the forecast of the traffic signal lighting time information;
    所述驾驶动作包括:停止、直行、左转、右转或掉头。The driving action includes: stopping, going straight, turning left, turning right or turning around.
  10. 根据权利要求1-9任一项所述的方法,其特征在于,所述车道的标识包括标识中的至少一种:The method according to any one of claims 1-9, wherein the identification of the lane includes at least one of the identifications:
    所述车道的车道线的标识、所述车道的车道停止线的标识、所述车道的车道中心线的标识、所述车道的车道节点的标识。The identification of the lane line of the lane, the identification of the lane stop line of the lane, the identification of the lane center line of the lane, and the identification of the lane node of the lane.
  11. 一种信息处理方法,其特征在于,包括:An information processing method, characterized in that it comprises:
    获取至少一个交通信号灯的状态信息;Acquiring status information of at least one traffic signal;
    向自动驾驶车辆发送交通信号灯的状态信息。Send status information of traffic lights to autonomous vehicles.
  12. 根据权利要求11所述的方法,其特征在于,所述向自动驾驶车辆发送交通信号灯的状态信息,包括:The method according to claim 11, wherein the sending the state information of the traffic signal light to the self-driving vehicle comprises:
    接收目标自动驾驶车辆发送的请求信息,所述请求信息用于获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息;Receiving request information sent by a target autonomous driving vehicle, where the request information is used to obtain status information of a traffic signal associated with the lane where the target autonomous driving vehicle is currently located;
    根据所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识,获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息;Acquiring the status information of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located according to the identifier of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located;
    向所述目标自动驾驶车辆发送所述车道关联的交通信号灯的状态信息。Sending the state information of the traffic signal light associated with the lane to the target autonomous vehicle.
  13. 根据权利要求12所述的方法,其特征在于,所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识为所述请求信息的一部分。The method according to claim 12, wherein the identifier of the traffic signal light associated with the lane where the target autonomous driving vehicle is currently located is part of the request information.
  14. 根据权利要求11所述的方法,其特征在于,所述向自动驾驶车辆发送交通信号灯的状态信息,包括:The method according to claim 11, wherein the sending the state information of the traffic signal light to the self-driving vehicle comprises:
    向至少一个自动驾驶车辆广播至少一个交通信号灯的状态信息。Broadcast the status information of at least one traffic light to at least one autonomous vehicle.
  15. 根据权利要求11-14任一项所述的方法,其特征在于,所述获取至少一个交通信号灯的状态信息,包括:The method according to any one of claims 11-14, wherein the acquiring state information of at least one traffic signal light comprises:
    从交通信号灯控制系统获取至少一个交通信号灯的状态信息。Obtain the status information of at least one traffic light from the traffic light control system.
  16. 一种自动驾驶控制装置,其特征在于,包括:处理单元;An automatic driving control device, characterized by comprising: a processing unit;
    所述处理单元,用于确定当前所在车道的标识,根据所述车道的标识,获取所述车道关联的交通信号灯的状态信息,以及,根据所述交通信号灯的状态信息进行驾驶控制。The processing unit is configured to determine the identifier of the current lane, obtain the state information of the traffic signal lamp associated with the lane according to the identifier of the lane, and perform driving control according to the state information of the traffic signal lamp.
  17. 根据权利要求16所述的装置,其特征在于,所述处理单元具体用于:The device according to claim 16, wherein the processing unit is specifically configured to:
    根据所述车道的标识确定所述车道关联的交通信号灯的标识;以及,Determine the identifier of the traffic signal light associated with the lane according to the identifier of the lane; and,
    从网络设备或云端获取所述车道关联的交通信号灯的状态信息。Obtain the state information of the traffic signal light associated with the lane from a network device or the cloud.
  18. 根据权利要求17所述的装置,其特征在于,所述装置还包括:收发单元;The device according to claim 17, wherein the device further comprises: a transceiver unit;
    所述收发单元,用于向所述网络设备或云端发送请求信息,所述请求信息用于获取所述车道关联的交通信号灯的状态信息;以及,接收来自所述网络设备或云端的所述车道关联的交通信号灯的状态信息。The transceiver unit is configured to send request information to the network device or the cloud, where the request information is used to obtain the status information of the traffic signal lamp associated with the lane; and, to receive the lane from the network device or the cloud The status information of the associated traffic lights.
  19. 根据权利要求18所述的装置,其特征在于,所述车道关联的交通信号灯的标识为所述请求信息的一部分。The device according to claim 18, wherein the identifier of the traffic signal lamp associated with the lane is a part of the request information.
  20. 根据权利要求17所述的装置,其特征在于,所述处理单元具体用于:The device according to claim 17, wherein the processing unit is specifically configured to:
    接收来自所述网络设备或云端的至少一个交通信号灯的状态信息;以及,根据所述车道关联的交通信号灯的标识,从所述至少一个交通信号灯的状态信息中获取所述车道关联 的交通信号灯的状态信息。Receiving the status information of at least one traffic signal light from the network device or the cloud; and, according to the identification of the traffic signal light associated with the lane, obtaining the status information of the traffic signal light associated with the lane from the status information of the at least one traffic light status information.
  21. 根据权利要求16-20任一项所述的装置,其特征在于,所述处理单元具体用于:The device according to any one of claims 16-20, wherein the processing unit is specifically configured to:
    在自动驾驶车辆与目标路口的距离小于预设阈值时,确定当前所在车道的标识。When the distance between the autonomous vehicle and the target intersection is less than the preset threshold, the identification of the current lane is determined.
  22. 根据权利要求21所述的装置,其特征在于,所述处理单元具体用于:The device according to claim 21, wherein the processing unit is specifically configured to:
    在自动驾驶车辆发生变道时,确定变道后所在车道的标识,并将所述变道后所在车道的标识作为当前所在车道的标识。When the automatic driving vehicle changes lanes, the identifier of the lane where the vehicle is located after the lane change is determined, and the identifier of the lane where it is located after the lane change is used as the identifier of the current lane.
  23. 根据权利要求16-22任一项所述的装置,其特征在于,所述车道关联的交通信号灯的状态信息包括以下信息中的至少一种:The device according to any one of claims 16-22, wherein the state information of the traffic signal lamp associated with the lane comprises at least one of the following information:
    所述交通信号灯的标识、所述交通信号灯的类型、所述交通信号灯状态信息下发时刻、当前的亮灯颜色、亮灯时刻预报信息。The identifier of the traffic signal light, the type of the traffic signal light, the time when the traffic signal status information is issued, the current light color, and the light time forecast information.
  24. 根据权利要求16-23任一项所述的装置,其特征在于,所述处理单元具体用于:The device according to any one of claims 16-23, wherein the processing unit is specifically configured to:
    根据以下信息中的至少一种确定自动驾驶车辆的驾驶动作:Determine the driving action of the autonomous vehicle based on at least one of the following information:
    当前时刻、所述自动驾驶车辆与路口的距离、所述自动驾驶车辆当前行驶速度、所述交通信号灯状态信息下发时刻、所述交通信号灯当前的亮灯颜色、所述交通信号灯亮灯时刻预报信息;The current time, the distance between the autonomous driving vehicle and the intersection, the current driving speed of the autonomous driving vehicle, the time when the traffic signal status information is issued, the current lighting color of the traffic signal, and the forecast of the traffic signal lighting time information;
    所述驾驶动作包括:停止、直行、左转、右转或掉头。The driving action includes: stopping, going straight, turning left, turning right or turning around.
  25. 根据权利要求16-24任一项所述的装置,其特征在于,所述车道的标识包括如下至少一种:The device according to any one of claims 16-24, wherein the lane markings comprise at least one of the following:
    所述车道的车道线的标识、所述车道的车道停止线的标识、所述车道的车道中心线的标识、所述车道的车道节点的标识。The identification of the lane line of the lane, the identification of the lane stop line of the lane, the identification of the lane center line of the lane, and the identification of the lane node of the lane.
  26. 一种信息处理装置,其特征在于,包括:处理单元和收发单元;An information processing device, characterized by comprising: a processing unit and a transceiver unit;
    所述处理单元,用于获取至少一个交通信号灯的状态信息;The processing unit is used to obtain state information of at least one traffic signal light;
    所述收发单元,用于向自动驾驶车辆发送交通信号灯的状态信息。The transceiver unit is used to send the state information of the traffic signal light to the self-driving vehicle.
  27. 根据权利要求26所述的装置,其特征在于,所述收发单元具体用于:The device according to claim 26, wherein the transceiver unit is specifically configured to:
    接收目标自动驾驶车辆发送的请求信息,所述请求信息用于获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息;Receiving request information sent by a target autonomous driving vehicle, where the request information is used to obtain status information of a traffic signal associated with the lane where the target autonomous driving vehicle is currently located;
    所述处理单元还用于:根据所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识,获取所述目标自动驾驶车辆当前所在车道关联的交通信号灯的状态信息;The processing unit is further configured to: obtain state information of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located according to the identifier of the traffic signal associated with the lane where the target autonomous driving vehicle is currently located;
    所述收发单元具体用于:向所述目标自动驾驶车辆发送所述车道关联的交通信号灯的状态信息。The transceiver unit is specifically configured to send the state information of the traffic signal lamp associated with the lane to the target autonomous driving vehicle.
  28. 根据权利要求27所述的装置,其特征在于,所述目标自动驾驶车辆当前所在车道关联的交通信号灯的标识为所述请求信息的一部分。The device according to claim 27, wherein the identifier of the traffic signal light associated with the lane where the target autonomous driving vehicle is currently located is part of the request information.
  29. 根据权利要求26所述的装置,其特征在于,所述收发单元具体用于:The device according to claim 26, wherein the transceiver unit is specifically configured to:
    向至少一个自动驾驶车辆广播至少一个交通信号灯的状态信息。Broadcast the status information of at least one traffic light to at least one autonomous vehicle.
  30. 根据权利要求26-29任一项所述的装置,其特征在于,所述处理单元具体用于:The device according to any one of claims 26-29, wherein the processing unit is specifically configured to:
    从交通信号灯控制系统获取至少一个交通信号灯的状态信息。Obtain the status information of at least one traffic light from the traffic light control system.
  31. 一种通信装置,包括处理器,所述处理器与存储器相连,所述存储器用于存储计算机程序,所述处理器用于执行所述存储器中存储的计算机程序,以使得所述装置执行如权利要求1至10中任一项所述的方法。A communication device includes a processor, the processor is connected to a memory, the memory is used to store a computer program, and the processor is used to execute the computer program stored in the memory, so that the device executes as claimed in the claims The method of any one of 1 to 10.
  32. 一种通信装置,包括处理器,所述处理器与存储器相连,所述存储器用于存储计算机程序,所述处理器用于执行所述存储器中存储的计算机程序,以使得所述装置执行如权利要求11至15中任一项所述的方法。A communication device includes a processor, the processor is connected to a memory, the memory is used to store a computer program, and the processor is used to execute the computer program stored in the memory, so that the device executes as claimed in the claims The method of any one of 11-15.
  33. 一种计算机可读存储介质,其特征在于,所述计算机可读存储介质存储有计算机程序,当所述计算机程序被运行时,实现如权利要求1至10中任一项所述的方法。A computer-readable storage medium, wherein the computer-readable storage medium stores a computer program, and when the computer program is executed, the method according to any one of claims 1 to 10 is implemented.
  34. 一种计算机可读存储介质,其特征在于,所述计算机可读存储介质存储有计算机程序,当所述计算机程序被运行时,实现如权利要求11至15中任一项所述的方法。A computer-readable storage medium, wherein the computer-readable storage medium stores a computer program, and when the computer program is executed, the method according to any one of claims 11 to 15 is implemented.
  35. 一种芯片,其特征在于,包括处理器和接口;A chip, characterized in that it includes a processor and an interface;
    所述处理器用于读取指令以执行权利要求1至10中任一项所述的自动驾驶控制方法。The processor is configured to read instructions to execute the automatic driving control method according to any one of claims 1 to 10.
  36. 一种芯片,其特征在于,包括处理器和接口;A chip, characterized in that it includes a processor and an interface;
    所述处理器用于读取指令以执行权利要求11至15中任一项所述的信息处理方法。The processor is used to read instructions to execute the information processing method according to any one of claims 11 to 15.
  37. 一种通信系统,其特征在于,包括权利要求31所述的通信装置、权利要求32所述的通信装置以及交通信号灯控制系统。A communication system, characterized by comprising the communication device according to claim 31, the communication device according to claim 32, and a traffic signal light control system.
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