CN112180951A - Intelligent obstacle avoidance method for unmanned vehicle and computer readable storage medium - Google Patents
Intelligent obstacle avoidance method for unmanned vehicle and computer readable storage medium Download PDFInfo
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- CN112180951A CN112180951A CN202011244356.1A CN202011244356A CN112180951A CN 112180951 A CN112180951 A CN 112180951A CN 202011244356 A CN202011244356 A CN 202011244356A CN 112180951 A CN112180951 A CN 112180951A
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- 238000005516 engineering process Methods 0.000 abstract description 6
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- G05D—SYSTEMS FOR CONTROLLING OR REGULATING NON-ELECTRIC VARIABLES
- G05D1/00—Control of position, course, altitude or attitude of land, water, air or space vehicles, e.g. using automatic pilots
- G05D1/02—Control of position or course in two dimensions
- G05D1/021—Control of position or course in two dimensions specially adapted to land vehicles
- G05D1/0231—Control of position or course in two dimensions specially adapted to land vehicles using optical position detecting means
- G05D1/0246—Control of position or course in two dimensions specially adapted to land vehicles using optical position detecting means using a video camera in combination with image processing means
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- G—PHYSICS
- G05—CONTROLLING; REGULATING
- G05D—SYSTEMS FOR CONTROLLING OR REGULATING NON-ELECTRIC VARIABLES
- G05D1/00—Control of position, course, altitude or attitude of land, water, air or space vehicles, e.g. using automatic pilots
- G05D1/02—Control of position or course in two dimensions
- G05D1/021—Control of position or course in two dimensions specially adapted to land vehicles
- G05D1/0257—Control of position or course in two dimensions specially adapted to land vehicles using a radar
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Abstract
The invention discloses an intelligent obstacle avoidance method of an unmanned automobile and a computer readable storage medium, which are used for avoiding front obstacles by acquiring a road image in front of the automobile in real time, identifying the front obstacles from the image based on an image identification technology, then acquiring the distance of the front obstacles and the current driving speed of the automobile, and controlling the speed and the steering angle based on the current driving speed of the automobile and the distance of the obstacles, thereby realizing intelligent obstacle avoidance operation and improving the safety of unmanned driving.
Description
Technical Field
The invention relates to the technical field of unmanned driving, in particular to an intelligent obstacle avoidance method of an unmanned vehicle and a computer readable storage medium.
Background
The unmanned vehicle is an intelligent vehicle which senses road environment through a vehicle-mounted sensing system, automatically plans a driving route and controls the vehicle to reach a preset target, and at present, many automobile manufacturers have already provided the unmanned vehicle. The unmanned automobile can meet many emergency situations in the driving process, and often can meet the situation that obstacles appear on the road surface in front of the driving, so that the key problem that how to effectively avoid the obstacles in front becomes the urgent need to be solved.
Disclosure of Invention
The invention provides an intelligent obstacle avoidance method of an unmanned vehicle and a computer readable storage medium, which can realize intelligent obstacle avoidance and improve the safety of unmanned driving.
According to one aspect of the invention, an intelligent obstacle avoidance method for an unmanned automobile is provided, which comprises the following steps:
step S1: acquiring a road surface image in front of a vehicle in real time, and identifying a front obstacle from the image;
step S2: acquiring the distance of a front obstacle;
step S3: acquiring the current running speed of the vehicle;
step S4: the vehicle speed and the vehicle steering are controlled to avoid the front obstacle based on the current running speed and the front obstacle distance.
Further, in step S4, the current driving speed and the distance to the obstacle ahead are input to the trained convolutional neural network as input factors, the convolutional neural network is used to automatically output the target vehicle speed and the target steering angle, and the vehicle is controlled to decelerate to the target vehicle speed and the steering wheel angle is adjusted to the target steering angle.
Further, the step S4 further includes the following steps:
and carrying out safety evaluation on the target steering angle, and if the target steering angle exceeds the maximum steering angle allowed by the current running speed of the vehicle, controlling the vehicle to brake emergently, or if the target steering angle does not exceed the maximum steering angle allowed by the current speed of the vehicle, controlling the steering wheel to steer according to the target steering angle.
Further, in the step S1, the size of the front obstacle is identified from the image, the size of the obstacle is compared with a preset safety threshold, if the size of the obstacle is smaller than the safety threshold, no measure is taken, otherwise, the steps S2 to S4 are performed.
Further, in step S1, the size of the front obstacle is identified from the image and is input as an input factor into the trained convolutional neural network.
Further, if it is determined in step S4 that the vehicle cannot avoid the front obstacle, the method further includes:
step S5: and sending a collision warning prompt to the personnel in the vehicle.
Further, the method also comprises the following steps:
step S6: and acquiring the current position information of the vehicle and sending rescue information to the rescue platform.
The invention also provides a computer-readable storage medium for storing a computer program for intelligent obstacle avoidance for an unmanned vehicle, which, when running on a computer, performs the steps of the method as described above.
The invention has the following effects:
according to the intelligent obstacle avoidance method for the unmanned automobile, the road surface image in front of the automobile is obtained in real time, the front obstacle is identified from the image based on the image identification technology, then the distance of the front obstacle and the current driving speed of the automobile are obtained, and the speed and the steering angle are controlled based on the current driving speed of the automobile and the distance of the obstacle, so that the front obstacle is avoided, the intelligent obstacle avoidance operation is realized, and the safety of unmanned driving is improved.
In addition to the objects, features and advantages described above, other objects, features and advantages of the present invention are also provided. The present invention will be described in further detail below with reference to the drawings.
Drawings
The accompanying drawings, which are incorporated in and constitute a part of this application, illustrate embodiments of the invention and, together with the description, serve to explain the invention and not to limit the invention. In the drawings:
fig. 1 is a schematic flow chart of a medical monitoring method according to a preferred embodiment of the present invention.
Fig. 2 is a schematic flow chart of another embodiment of a medical monitoring method according to a preferred embodiment of the present invention.
Fig. 3 is a schematic block diagram of a medical monitoring system according to another embodiment of the present invention.
Fig. 4 is a block diagram of a sub-module of the processor of fig. 3.
Detailed Description
The embodiments of the invention will be described in detail below with reference to the accompanying drawings, but the invention can be embodied in many different forms, which are defined and covered by the following description.
As shown in fig. 1, a preferred embodiment of the present invention provides an intelligent obstacle avoidance method for an unmanned vehicle, including the following steps:
step S1: acquiring a road surface image in front of a vehicle in real time, and identifying a front obstacle from the image;
step S2: acquiring the distance of a front obstacle;
step S3: acquiring the current running speed of the vehicle;
step S4: the vehicle speed and the vehicle steering are controlled to avoid the front obstacle based on the current running speed and the front obstacle distance.
It can be understood that, in the intelligent obstacle avoidance method for the unmanned vehicle of the embodiment, the road surface image in front of the vehicle is obtained in real time, the front obstacle is identified from the image based on the image identification technology, then the distance of the front obstacle and the current driving speed of the vehicle are obtained, and the vehicle speed and the steering angle are controlled based on the current driving speed of the vehicle and the distance of the obstacle, so as to avoid the front obstacle, thereby realizing the intelligent obstacle avoidance operation and improving the safety of unmanned driving.
It is understood that, in step S1, the front road surface image is captured by a camera on the vehicle.
It is understood that the obstacle distance in step S2 may be obtained by a laser radar on the vehicle, or may be obtained by an image recognition technique based on the image captured in step S1.
It can be understood that step S4 specifically includes: and inputting the current running speed and the distance between the front obstacles serving as input factors into a trained convolutional neural network, automatically outputting a target speed and a target steering angle by using the convolutional neural network, and controlling the vehicle to decelerate to the target speed and adjusting the steering wheel angle to the target steering angle. The method comprises the steps of taking the vehicle running speed and the obstacle distance as input factors, taking the target vehicle speed and the target steering angle as output factors, carrying out deep learning training on a convolutional neural network by adopting a large number of positive samples and negative samples, taking the trained convolutional neural network as a judgment tool to automatically output the target vehicle speed and the target steering angle, realizing intelligent control output based on the deep learning basis, and improving the accuracy and the safety of intelligent obstacle avoidance.
It is understood that, as a preferable mode, the step S4 further includes the following steps:
and carrying out safety evaluation on the target steering angle, and if the target steering angle exceeds the maximum steering angle allowed by the current running speed of the vehicle, controlling the vehicle to brake emergently, or if the target steering angle does not exceed the maximum steering angle allowed by the current speed of the vehicle, controlling the steering wheel to steer according to the target steering angle. After the convolutional neural network outputs the target steering angle, safety evaluation is carried out on the target steering angle, each running speed of the vehicle corresponds to a maximum steering angle, if the maximum steering angle is exceeded, the risk of rollover exists, and more serious accidents can be caused. And if the target steering angle does not exceed the maximum steering angle allowed by the current running speed of the vehicle, controlling the steering wheel to perform steering operation according to the target steering angle.
It is to be understood that, preferably, in the step S1, the size of the front obstacle is further identified from the image, and the size of the obstacle is compared with a preset safety threshold, if the size of the obstacle is smaller than the safety threshold, no measure is taken, otherwise, steps S2 to S4 are performed. The safety threshold is set according to the chassis size of the vehicle, for example, the length, the width and the height of the chassis of the vehicle, and if the size of the obstacle does not exceed the length, the width and the height of the chassis of the vehicle, the vehicle can directly drive over the obstacle without being scratched. When the size of the front obstacle exceeds the length, width and height of the vehicle chassis, the avoidance operation is required. By judging the size of the obstacle in advance, unnecessary deceleration and steering operations are avoided, and the safety of unmanned driving is further improved. Specifically, the size of the front obstacle is calculated by an image recognition technology, for example, the length, width and height of the obstacle are recognized by an edge detection algorithm.
It is to be understood that, alternatively, after the size of the front obstacle is identified from the image in the step S1, the size is input as an input factor into the trained convolutional neural network in the step S4. The size of the obstacle is further introduced into deep learning of the convolutional neural network, and the size of the obstacle is used as an influence factor of intelligent obstacle avoidance output, so that the intelligent obstacle avoidance accuracy and the unmanned safety are further improved.
It can be understood that, as shown in fig. 2, preferably, if it is determined in step S4 that the obstacle ahead cannot be avoided, the method for avoiding an obstacle in an unmanned vehicle further includes the following steps:
step S5: and sending a collision warning prompt to the personnel in the vehicle.
When the front barrier cannot be avoided, a collision warning prompt is sent to the passengers of the vehicle in time to remind the passengers to prepare for collision, and the injury degree is favorably reduced.
It can be understood that, as further preferable, the intelligent obstacle avoidance method for the unmanned automobile further comprises the following steps:
step S6: and acquiring the current position information of the vehicle and sending rescue information to the rescue platform.
When collision occurs, the current position of the vehicle and the distress message can be sent to rescue platforms such as hospitals, traffic rescue units or insurance companies, so that rapid rescue is facilitated.
It can be understood that, as shown in fig. 3, another embodiment of the present invention further provides an intelligent obstacle avoidance system for an unmanned vehicle, which preferably adopts the intelligent obstacle avoidance method as described above, and the system includes:
the camera is used for shooting road surface images in front of the running vehicle in real time;
the distance measuring device is used for measuring the distance of the front obstacle;
the speed sensor is used for measuring the current running speed of the vehicle;
and the processor is used for identifying the front obstacle from the image shot by the camera and controlling the vehicle speed and the vehicle steering to avoid the front obstacle based on the current running speed and the front obstacle distance.
It can be understood that the intelligent obstacle avoidance system of the unmanned vehicle of the embodiment acquires the road image in front of the vehicle in real time through the camera, identifies the front obstacle from the image based on the image identification technology, acquires the distance of the front obstacle through the distance measuring device, measures the current driving speed of the vehicle through the speed sensor, and controls the vehicle speed and the steering angle based on the current driving speed of the vehicle and the distance of the obstacle simultaneously, so as to avoid the front obstacle, thereby realizing the intelligent obstacle avoidance operation and improving the safety of unmanned driving.
It is understood that, as shown in fig. 4, the processor includes a prediction module for automatically outputting a target vehicle speed and a target steering angle according to the input current driving speed and the front obstacle distance based on the trained convolutional neural network, and a control module for controlling the vehicle to decelerate to the target vehicle speed and controlling the steering wheel to turn by the target steering angle. The method comprises the steps of taking the vehicle running speed and the obstacle distance as input factors of a prediction module, taking the target vehicle speed and the target steering angle as output factors, carrying out deep learning training on a convolutional neural network in the prediction module by adopting a large number of positive samples and negative samples, and taking the trained convolutional neural network as a judgment tool to automatically output the target vehicle speed and the target steering angle, so that intelligent control output is realized on the basis of deep learning, and the accuracy and the safety of intelligent obstacle avoidance are improved.
It is understood that, as a preferable mode, the processor further includes a safety evaluation module for performing safety evaluation on a target steering angle, and if the target steering angle exceeds a maximum steering angle allowed by a current running speed of the vehicle, the control module controls the vehicle to perform emergency braking, or if the target steering angle does not exceed the maximum steering angle allowed by the current running speed of the vehicle, the control module controls the steering wheel to steer according to the target steering angle. After the prediction module outputs the target steering angle, safety evaluation is carried out on the target steering angle, each running speed of the vehicle corresponds to a maximum steering angle, if the maximum steering angle is exceeded, the risk of rollover exists, and more serious accidents can be caused. And if the target steering angle does not exceed the maximum steering angle allowed by the current running speed of the vehicle, controlling the steering wheel to perform steering operation according to the target steering angle.
It is understood that, as a preferable mode, the processor further includes a size recognition module, which is used for recognizing the size of the obstacle in front in the image, and comparing the size of the obstacle with a preset safety threshold, if the size of the obstacle is smaller than the safety threshold, no measure is taken, otherwise, the size is input into the prediction module as an input factor. The safety threshold is set according to the chassis size of the vehicle, for example, the length, the width and the height of the chassis of the vehicle, and if the size of the obstacle does not exceed the length, the width and the height of the chassis of the vehicle, the vehicle can directly drive over the obstacle without being scratched. When the size of the front obstacle exceeds the length, width and height of the vehicle chassis, the avoidance operation is required. By judging the size of the obstacle in advance, unnecessary deceleration and steering operations are avoided, and the safety of unmanned driving is further improved. The size recognition module specifically calculates the size of the front obstacle through an image recognition technology, for example, an edge detection algorithm is adopted to recognize the length, width and height of the obstacle. In addition, the size of the obstacle is input into the prediction module as an input factor, the size of the obstacle is introduced into deep learning of the convolutional neural network, the size of the obstacle is used as an influence factor of intelligent obstacle avoidance output, and the intelligent obstacle avoidance accuracy and the unmanned safety are further improved
It is to be understood that, as a preferable mode, the processor further includes a collision prompt module, configured to send a collision warning prompt to the vehicle occupant when the prediction module determines that the vehicle occupant cannot avoid the front obstacle, for example, to output a prompt message on a display screen in the vehicle occupant. When the front barrier cannot be avoided, a collision warning prompt is sent to the passengers of the vehicle in time to remind the passengers to prepare for collision, and the injury degree is favorably reduced.
It is understood that the processor preferably further comprises an emergency rescue module for acquiring current location information of the vehicle and sending a rescue message to the rescue platform. After collision occurs, the current position of the vehicle and the distress message can be sent to rescue platforms such as hospitals, traffic rescue units or insurance companies through the emergency rescue module, so that rapid rescue is facilitated.
The invention also provides a computer-readable storage medium for a computer program for intelligent obstacle avoidance for an unmanned vehicle, which, when running on a computer, performs the steps of the method as described above.
The general form of computer readable media includes: floppy disk (floppy disk), flexible disk (flexible disk), hard disk, magnetic tape, any of its magnetic media, CD-ROM, any of the other optical media, punch cards (punch cards), paper tape (paper tape), any of the other physical media with patterns of holes, Random Access Memory (RAM), Programmable Read Only Memory (PROM), Erasable Programmable Read Only Memory (EPROM), FLASH erasable programmable read only memory (FLASH-EPROM), any of the other memory chips or cartridges, or any of the other media from which a computer can read. The instructions may further be transmitted or received by a transmission medium. The term transmission medium may include any tangible or intangible medium that is operable to store, encode, or carry instructions for execution by the machine, and includes digital or analog communications signals or intangible medium that facilitates communication of the instructions. Transmission media include coaxial cables, copper wire and fiber optics, including the wires that comprise a bus for transmitting a computer data signal.
The above description is only a preferred embodiment of the present invention and is not intended to limit the present invention, and various modifications and changes may be made by those skilled in the art. Any modification, equivalent replacement, or improvement made within the spirit and principle of the present invention should be included in the protection scope of the present invention.
Claims (8)
1. An intelligent obstacle avoidance method for an unmanned automobile, which is characterized in that,
the method comprises the following steps:
step S1: acquiring a road surface image in front of a vehicle in real time, and identifying a front obstacle from the image;
step S2: acquiring the distance of a front obstacle;
step S3: acquiring the current running speed of the vehicle;
step S4: the vehicle speed and the vehicle steering are controlled to avoid the front obstacle based on the current running speed and the front obstacle distance.
2. The intelligent obstacle avoidance method for unmanned vehicles as claimed in claim 1,
and in the step S4, inputting the current driving speed and the distance to the front obstacle as input factors into the trained convolutional neural network, automatically outputting the target vehicle speed and the target steering angle by using the convolutional neural network, and controlling the vehicle to decelerate to the target vehicle speed and adjusting the steering wheel angle to the target steering angle.
3. The intelligent obstacle avoidance method for unmanned vehicles as claimed in claim 2,
the step S4 further includes the steps of:
and carrying out safety evaluation on the target steering angle, and if the target steering angle exceeds the maximum steering angle allowed by the current running speed of the vehicle, controlling the vehicle to brake emergently, or if the target steering angle does not exceed the maximum steering angle allowed by the current speed of the vehicle, controlling the steering wheel to steer according to the target steering angle.
4. The intelligent obstacle avoidance method for unmanned vehicles as claimed in claim 1,
in the step S1, the size of the front obstacle is identified from the image, and the size of the obstacle is compared with a preset safety threshold, if the size of the obstacle is smaller than the safety threshold, no measure is taken, otherwise, the steps S2 to S4 are performed.
5. The intelligent obstacle avoidance method for unmanned vehicles as claimed in claim 2,
in step S1, the size of the front obstacle is also identified from the image and input as an input factor into the trained convolutional neural network.
6. The intelligent obstacle avoidance method for unmanned vehicles as claimed in claim 1,
if it is determined in step S4 that the vehicle cannot avoid the front obstacle, the method further includes:
step S5: and sending a collision warning prompt to the personnel in the vehicle.
7. The intelligent obstacle avoidance method for unmanned vehicles as claimed in claim 6,
further comprising the steps of:
step S6: and acquiring the current position information of the vehicle and sending rescue information to the rescue platform.
8. A computer-readable storage medium for storing a computer program for intelligent obstacle avoidance for an unmanned vehicle, wherein the computer program performs the steps of the method according to any one of claims 1 to 7 when running on a computer.
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Cited By (2)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
CN113486837A (en) * | 2021-07-19 | 2021-10-08 | 安徽江淮汽车集团股份有限公司 | Automatic driving control method for low-pass obstacle |
CN113848938A (en) * | 2021-10-14 | 2021-12-28 | 西安现代控制技术研究所 | Low-cost unmanned automobile keeps away barrier device |
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2020
- 2020-11-10 CN CN202011244356.1A patent/CN112180951A/en not_active Withdrawn
Cited By (2)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
CN113486837A (en) * | 2021-07-19 | 2021-10-08 | 安徽江淮汽车集团股份有限公司 | Automatic driving control method for low-pass obstacle |
CN113848938A (en) * | 2021-10-14 | 2021-12-28 | 西安现代控制技术研究所 | Low-cost unmanned automobile keeps away barrier device |
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Application publication date: 20210105 |