CA3129725A1 - Autonomous and user controlled vehicle summon to a target - Google Patents
Autonomous and user controlled vehicle summon to a target Download PDFInfo
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01C—MEASURING DISTANCES, LEVELS OR BEARINGS; SURVEYING; NAVIGATION; GYROSCOPIC INSTRUMENTS; PHOTOGRAMMETRY OR VIDEOGRAMMETRY
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- G05D1/0044—Control of position, course, altitude or attitude of land, water, air or space vehicles, e.g. using automatic pilots associated with a remote control arrangement by providing the operator with a computer generated representation of the environment of the vehicle, e.g. virtual reality, maps
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- G05D1/0033—Control of position, course, altitude or attitude of land, water, air or space vehicles, e.g. using automatic pilots associated with a remote control arrangement by having the operator tracking the vehicle either by direct line of sight or via one or more cameras located remotely from the vehicle
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- G05D1/0212—Control of position or course in two dimensions specially adapted to land vehicles with means for defining a desired trajectory
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- G05D1/60—Intended control result
- G05D1/656—Interaction with payloads or external entities
- G05D1/686—Maintaining a relative position with respect to moving targets, e.g. following animals or humans
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- G08G1/141—Traffic control systems for road vehicles indicating individual free spaces in parking areas with means giving the indication of available parking spaces
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Abstract
Description
TO A TARGET
CROSS-REFERENCE TO RELATED APPLICATIONS
100011 This application is a continuation of, and claims priority to, U.S. Patent App. No.
16/272,273 titled "AUTONOMOUS AND USER CONTROLLED VEHICLE SUMMON TO A
TARGET" and filed on February 11, 2019, the disclosure of which is hereby incorporated herein by reference in its entirety.
BACKGROUND OF THE INVENTION
The maneuver often involves walking towards one's vehicle, three-point turns, edging out of tight spots without touching neighboring vehicles or walls, and driving towards a location that one previously came from. Although some vehicles are capable of being remotely operated, the route driven by the vehicle is typically limited to a single straight-line path in either the forwards or reverse direction with limited steering range and no intelligence in navigating the vehicle along its own path.
SUMMARY
calculating at least a portion of a path to a target location corresponding to the received geographical location using the generated representation of the at least portion of the environment surrounding the vehicle; and providing at least one command to automatically navigate the vehicle based on the determined path and updated sensor data from at least a portion of the one or more sensors of the vehicle.
utilizing a neural network to generate a representation of at least a portion of an environment surrounding the vehicle using sensor data from one or more sensors of the vehicle; calculating at least a portion of a path to a target location corresponding to the received geographical location using the generated representation of the at least portion of the environment surrounding the vehicle; and providing at least one command to automatically navigate the vehicle based on the determined path and updated sensor data from at least a portion of the one or more sensors of the vehicle.
BRIEF DESCRIPTION OF THE DRAWINGS
DETAILED DESCRIPTION
target geographical location is provided and a vehicle automatically navigates to the target location. For example, a user provides a location by dropping a pin on a graphical map user interface at the destination location. As another example, a user summons the vehicle to the user's location by specifying the user's location as the destination location.
The user may also select a destination location based on viable paths detected for the vehicle.
The destination location may update (for example if the user moves around) leading the car to update its path to the destination location. Using the specified destination location, the vehicle navigates by utilizing sensor data such as vision data captured by cameras to generate a representation of the environment surrounding the vehicle. In some embodiments, the representation is an occupancy grid detailing drivable and non-drivable space. In some embodiments, the occupancy grid is generated using a neural network from camera sensor data. The representation of the environment may be further augmented with auxiliary data such as additional sensor data (including radar data), map data, or other inputs. Using the generated representation, a path is planned from the vehicle's current location towards the destination location.
In some embodiments, the path is generated based on the vehicle's operating parameters such as the model's turning radius, vehicle width, vehicle length, etc. An optimal path is selected based on selection parameters such as distance, speed, number of changes in gear, etc.
As the vehicle automatically navigates using the selected path, the representation of the environment is continuously updated. For example, as the vehicle travels to the destination, new sensor data is captured and the occupancy grid is updated. Safety checks are continuously performed that can override or modify the automatic navigation. For example, ultrasonic sensors may be utilized to detect potential collisions. A user can monitor the navigation and cancel the summoned vehicle at any time. In some embodiments, the vehicle must continually receive a virtual heartbeat signal from the user for the vehicle to continue navigating. The virtual heartbeat may be used to indicate that the user is actively monitoring the progress of the vehicle. In some embodiments, the user selects the path and the user remotely controls the vehicle. For example, the user can control the steering angle, direction, and/or speed of the vehicle to remotely control the vehicle.
As the user remotely controls the vehicle, safety checks are continuously performed that can override and/or modify the user controls. For example, the vehicle can be stopped if an object is detected.
calendar event may include the location of the event and a time, such as the ending time. The destination is selected based on the location of the event and the time is selected based on the ending time of the event.
The vehicle automatically navigates to arrive at the location at the ending time, such as the end of a dinner party, a wedding, a restaurant reservation, etc. In some embodiments, the vehicle navigates to the target destination using a specified time, such as an arrival or departure time.
For example, a user can specify the time the vehicle should begin automatically navigating or departing to the specified destination. As another example, a user can specify the time the vehicle should arrive at the specified destination. The vehicle will then depart in advance of the specified time in order to arrive at the destination at the specified time. In some embodiments, the arrival time is configured with a threshold time to allow for differences between the estimated travel time and the actual travel time. In various embodiments, the process of Figure 1 is run on an autonomous vehicle. In some embodiments, a remote server in communication with the autonomous vehicle executes portions of the summon functionality. In some embodiments, the process of Figure 1 is implemented at least in part using the autonomous vehicle system of Figure 7.
Once the parking lot is identified, instructions and/or traffic flow for entering and/or exiting the parking lot are determined and used for selecting a destination. The destination is then provided to the vehicle summons module.
The waypoints may be used to pick up one or more additional passengers, etc. For example, delays and/or pauses can be incorporated into the destination to pick up and/or drop off passengers or objects.
In some embodiments, the paths are determined using a path planner module, such as path planner module 705 of Figure 7. In various embodiments, the path planner module may be implemented using a cost function with appropriate weights applied to different paths to the destination. In some embodiments, the path selected is based on potential path arcs originating from the vehicle location. The potential path arcs are limited to the vehicle's operating dynamics, such as the vehicles steering range. In various embodiments, each potential path has a cost. For example, potential paths with sharp turns are have higher cost than paths that are smoother. As another example, a potential path with a large change in speed has higher cost than a path with a small change in speed. As yet another example, a potential path with more changes in gear (e.g., changes from reverse to forward) has higher cost than a path with fewer changes in gear. In some embodiments, a path with a higher likelihood of encountering certain objects is weighted differently than a path with a lower likelihood of encountering objects. For example, a path is weighted based on the likelihood of encountering pedestrians, vehicles, animals, traffic, poor lighting, poor weather, tolls, etc. In various embodiments, high cost paths are not preferred over lower cost paths when determining the path to take to the destination.
In some embodiments, the paths include actions such as opening a garage door, closing a garage door, passing through a parking gate, waiting for a car lift, confirming a toll payment, charging, making a call, sending a message, etc. The additional actions may require stopping the vehicle and/or executing actions to manipulate the surrounding environment. In some scenarios, the final destination is a destination that is close to the destination received at 101. For example, in some scenarios, the destination received at 101 is not reachable so the final destination closely approximates reaching that destination. For example, in the event a user selects a sidewalk, the final destination is a position on a road adjacent to the sidewalk. As another example, in the event the user selects a crosswalk, the final destination is a position on a road near the crosswalk but not in the crosswalk.
One or more exterior lights may be turned on, such as blinkers, parking, and/or hazard lights.
Exterior lights, such as front headlights, may be activated to increase visibility for passengers approaching the vehicle. Actuated directional lights may be directed towards the expected direction from which passengers will be arriving to reach the vehicle. In some embodiments, audio notifications such as an audio alert or music are played. Welcome music or similar audio may be played in the cabin based on preferences of the user. Similarly, the climate control of the vehicle may be enabled to prepare the climate of the cabin for passengers such as warming up or cooling the cabin to a desired temperature and/or humidity. Seats may be heated (or ventilated).
A heated steering wheel may be activated. Air vents can be redirected based on preferences.
The doors may be unlocked and may be opened for the passengers. In the event the destination is an electric charging station, the vehicle can be oriented so that its charger port aligns with the charger. In some embodiments, a user can configure the preferences of the vehicle, including cabin climate, interior lighting, exterior lighting, audio system, and other vehicle preferences, in anticipation of passengers.
The annotated map may be updated to reflect potential obstacles, traffic signals, parking preferences, traffic patterns, pedestrian walking patterns, and/or other appropriate path planning metadata that may be useful for future navigation and/or path planning. For example, a speed bump, crosswalk, potholes, empty parking spots, charging locations, gas stations, etc. that are encountered are updated to an annotated map. In some embodiments, the data corresponding to the encounters is used as potential training data to improve summon functionality, such as the perception, path planning, safety validation, and other functionality, for the current vehicle/user as well as other vehicles and users. For example, empty parking spots may be used for the path planning of other vehicles. As another example, an electric charging station or gas station is used for path planning. The vehicle can be routed to an electric charging station and oriented so that its charger port aligns with the charger.
In some embodiments, the process of Figure 2 is performed at 101 of Figure 1.
In some embodiments, an altitude is provided as well. For example, an altitude associated with a particular floor of a parking garage is provided. In various embodiments, the destination location is provided from a user via a smartphone device, via the media console of a vehicle, or by another means. In some embodiments, the location is received along with a time associated with departing or arriving at the destination. In some embodiments, one or more destinations are received. For example, in some scenarios, a multi-step destination is received that includes more than one stop. In some embodiments, the destination location includes an orientation or heading.
For example, the heading indicates the direction the vehicle should face once it has arrived at the destination.
The destination may include a two-dimensional location, such as a latitude and longitude location. Alternatively, in some embodiments, a destination includes an altitude. For example, certain drivable areas, such as multi-level parking garages, bridges, etc., have multiple drivable planes for the same two-dimensional location. The destination may also include a heading to specify the orientation the vehicle should face when arriving at the destination. In some embodiments, the path planner module is path planner module 705 of Figure 7.
In some embodiments, the destination includes an altitude and/or a time. In various embodiments, the destination is received using the process of Figure 2. In some embodiments, the destination is dynamic and a new destination may be received as appropriate. For example, in the event a user selects a "find me" feature, the destination is updated to follow the location of the user.
Essentially the vehicle can follow the user like a pet.
Drivable space includes areas that the vehicle can travel. In various embodiments, the drivable space is free of obstacles such that the vehicle can travel using a path through the determined drivable space. In various embodiments, a machine learning model is trained to determine drivable space and deployed on the vehicle to automatically analyze and determine the drivable space from image data.
The drivability value at each location may be a probability that the location is drivable. For example, a sidewalk may be designed to have a zero drivability value while gravel has a 0.5 drivability value. The drivability value may be a normalized probability having a range between 0 and 1 and is based on the drivable space determined at 305. In some embodiments, each location of the grid includes a cost metric associated with the cost (or penalty/reward) of traversing through that location. The cost value of each grid location in the occupancy grid is based on the drivable value. The cost value may further depend on additional data such as preference data. For example, path preferences can be configured to avoid toll roads, carpool lanes, school zones, etc.
In various embodiments, the path preference data can be learned via a machine learning model and is determined at 305 as part of drivable space. In some embodiments, the path preference data is configured by the user and/or an operator to optimize the path taken for navigation to the destination received at 301. For example, the path preferences can be optimized to improve safety, convenience, travel time, and/or comfort, among other goals. In various embodiments, the preferences are additional weights used to determine the cost value of each location grid.
may be used as well. In various embodiments, an annotated map may be used in part to generate the occupancy grid. For example, roads and their properties (speed limit, lanes, etc.) can be used to augment the vision data for generating the occupancy grid. As another example, occupancy data from other vehicles can be used to update the occupancy grid. For example, a neighboring vehicle with similarly equipped functionality can share sensor data and/or occupancy grid results.
In some embodiments, the vehicle includes an altitude value, for example, to support navigation between different floors of a parking garage. Although arc path primitives are used to define the goal path, other appropriate geometric primitives may be used as well. In some embodiments, each path includes speed parameters. For example, a speed parameter can be used to suggest travel speeds along the path. An initial speed, a max speed, an acceleration, a max acceleration, and other speed parameters can be used to control how the vehicle navigates along the path. In some embodiments, a maximum speed is set to a low speed and used to keep the vehicle from traveling too quickly. For example, a low maximum speed may be enforced to allow a user to quickly intervene.
The path goal(s) may be received as a set of path points along the path to navigate. In some embodiments, the vehicle controller converts path primitives, such as arcs, to path points. In various embodiments, the vehicle is controlled by sending actuator parameters from the vehicle controller to vehicle actuators. In some embodiments, the vehicle controller is vehicle controller 707 of Figure 7 and vehicle actuators are vehicle actuators 713 of Figure 7.
Using the vehicle actuators, the steering, braking, acceleration, and/or other operating functionality is actuated.
may be used to provide relevant sensor data. In various embodiments, the sensor data is paired with corresponding vehicle data to help identify features of the sensor data.
For example, location and change in location data can be used to identify the location of relevant features in the sensor data such as lane lines, traffic control signals, objects, etc. In some embodiments, the training data is prepared to train a machine learning model to identify drivable space. The prepared training data may include data for training, validation, and testing.
In some embodiments, the format of the data is compatible with a machine learning model used on a deployed deep learning application.
Vision sensors may include image sensors such as a camera mounted behind a windshield, forward and/or side facing cameras mounted in the pillars, rear-facing cameras, etc. In various embodiments, the sensor data is in the format or is converted into a format that the machine learning model trained at 403 utilizes as input. For example, the sensor data may be raw or processed image data. In some embodiments, the sensor data is data captured from ultrasonic sensors, radar, LiDAR sensors, microphones, or other appropriate technology.
In some embodiments, the sensor data is preprocessed using an image pre-processor such as an image pre-processor during a pre-processing step. For example, the image may be normalized to remove distortion, noise, etc.
For example, the occupancy grid is generated and then presented to the user to examine, such as via a GUI on a smartphone device or via a display in the vehicle. The user can view the occupancy grid and select a target destination. The user can specify which part of the curb the user would like the vehicle to pull up to. Once selected, the vehicle can navigate to the target destination.
Similarly, previously blocked spaces may be open.
Safety checks allow the navigation to be terminated and/or modified. For example, virtual heartbeat can be implemented that requires a user to continuously maintain contact to the vehicle to confirm the user is monitoring the vehicle's progress. In some embodiments, the navigation utilizes a path goal to navigate the vehicle along an optimal path to the destination target. The path goal may be received as path primitives, such as arcs, a set of points along the selected path, and/or another form of path primitives. In some embodiments, the process of Figure 6 is performed at 105 of Figure 1 and/or 311 of Figure 3. In some embodiments, the process is performed using the autonomous vehicle system of Figure 7.
In some embodiments, the vehicle adjustments are determined by a vehicle controller such as vehicle controller 707 of Figure 7. In some embodiments, the vehicle controller determines the distance, speed, orientation, and/or other driving parameters for controlling the vehicle. In some embodiments, a maximum vehicle speed is determined and used to limit the speed of the vehicle.
The maximum speed may be enforced to increase the safety of the navigation and/or allow the user sufficient reaction time to terminate a summon functionality.
The vehicle actuators adjust the steering and/or speed of the vehicle. In various embodiments, all adjustments are logged and can be uploaded to a remote server for later review. For example, in the event of a safety concern, the vehicle actuations, path goal, destination location, current location, travel speed, and/or other driving parameters may be reviewed to identify potential areas of improvement.
In the event an obstacle is detected, processing continues to 611. In the event an obstacle is not detected, processing continues to 605 where the vehicle's operating continues to be monitored. In some embodiments, obstacles are detected by collision or object sensors, such as an ultrasonic sensor.
In some embodiments, obstacles may be communicated via a network interface.
For example, obstacles detected by another vehicle may be shared and received. In various embodiments, a detected obstacle may be used to inform other components of the autonomous vehicle system, such as those related to occupancy grid generation, but is also received at a navigation component to allow the vehicle to immediately adjust for the detected obstacle.
For example, a virtual heartbeat is sent from the user. The heartbeat may be sent from a smartphone device of the user or another appropriate device such as a key fob.
In some embodiments, as long as the user activates the virtual heartbeat, the virtual heartbeat will be received and contact will not be lost. In response to the user no longer sending the virtual heartbeat, contact with the user is considered lost and the navigation of the vehicle responds appropriately at 611.
Remote interface component 751 is one or more remote components that may be used remotely from the vehicle to automatically navigate the vehicle. For example, remote interface component 751 includes a smartphone application running on a smartphone device, a key fob, a GUI such as a website to control the vehicle, and/or another remote interface component. Navigation server 761 is an optional server used to facilitate navigation features. Navigation server 761 is a remote server and can function as a remote cloud server and/or storage. In some embodiments, the autonomous vehicle system of Figure 7 is used to implement the processes of Figures 1-6 and the functionality associated with the user interfaces of Figure 8-9.
The output of path planner module 705 and sensor data from additional sensors 709 is fed to vehicle controller 707. In some embodiments, the output of vehicle controller 707 is vehicle control commands that are fed to vehicle actuators 713 for controlling the operation of the vehicle such as the speed, braking, and/or steering, etc. of the vehicle. In some embodiments, sensor data from additional sensors 709 is fed to vehicle actuators 713 to perform additional safety checks. In various embodiments, safety controller 711 is connected to one or more components such as perception module 703, vehicle controller 707, and/or vehicle actuators 713 to implement safety checks at each module. For example, safety controller 711 may receive additional sensor data from additional sensors 709 for overriding automatic navigation.
In some embodiments, onboard components 700 may include additional or fewer components as appropriate. For example, in some embodiments, onboard components 700 include an image pre-processor (not shown) to enhance sensor data. As another example, an image pre-processor may be used to normalize an image or to transform an image. In some embodiments, noise, distortion, and/or blurriness is removed or reduced during a pre-processing step. In various embodiments, the image is adjusted or normalized to improve the result of machine learning analysis. For example, the white balance of the image is adjusted to account for different lighting operating conditions such as daylight, sunny, cloudy, dusk, sunrise, sunset, and night conditions, among others. As another example, an image captured with a fisheye lens may be warped and an image pre-processor may be used to transform the image to remove or modify the warping. In various embodiments, one or more components of onboard components may be distributed to a remote server such as navigation server 761.
Vision sensors 701 may include both image sensors capable of capturing still images and/or video. The data may be captured over a period of time, such as a sequence of captured data over a period of time.
Scene data may include scene tags describing the environment around the vehicle, such as raining, wet roads, snowing, muddy, high density traffic, highway, urban, school zone, etc. In some embodiments, perception module 703 is utilized at 103 of Figure 1, 305 and/or 309 of Figure 3, 411 of Figure 4, and/or the process of Figure 5.
The path planning component may utilize an occupancy grid and a cost function for selecting an optimal route. In some embodiments, potential paths are made up of one or more path primitives, such as arc primitives, that model the operating characteristics of the vehicle. In some embodiments, path planner module 705 is utilized at step 103 of Figure 1 and/or step 309 of Figure 3. In various embodiments, path planner module 705 runs at a slower frequency or is updated less often than other components such as perception module 703 and vehicle controller 707.
directions. In some embodiments, additional sensors 709 include radar, audio, LiDAR, inertia, odometry, location, and/or ultrasonic sensors, among others. The ultrasonic and/or radar sensors may be used to capture surrounding details. For example, twelve ultrasonic sensors may be affixed to the vehicle to detect both hard and soft objects. In some embodiments, a forward-facing radar is utilized to capture data of the surrounding environment. In various embodiments, radar sensors are able to capture surrounding detail despite heavy rain, fog, dust, and other vehicles. The various sensors are used to capture the environment surrounding the vehicle and the captured image is provided for deep learning analysis.
For example, remote interface component 751 includes a smartphone application running on a smartphone device, a key fob, a GUI such as a website to control the vehicle, and/or another remote interface component. A user can initiate a summon functionality to automatically navigate a vehicle to a selected destination target specified by a geographical location. For example, a user can have a vehicle find and then follow the user. As another example, the user can specify a parking location using remote interface component 751 and the vehicle will automatically navigate to the specified location or to the closest location to the specified location that is safe to reach.
In some embodiments, valid summon area element 807 takes into account the line of sight from the user to the vehicle and only areas with a line of sight are allowed for automatic navigation.
Similarly, as a user moves, user locator element 809 is updated to reflect the user's new location.
In some embodiments, a trail shows the change in the user's location. In various embodiments, the user must keep contact with a virtual heartbeat button to allow the automatic navigation to continue. Once the user releases the virtual heartbeat button, the automatic navigation will stop.
In some embodiments, the heartbeat button is the "Find Me" button of dialog window 803. In some embodiments, separate forward and reverse buttons function as virtual heartbeat buttons to confirm automatic navigation in forward and reverse directions, respectively (not shown).
To clear the selected location associated with destination target element 911, the user can select the "clear pin" dialog of dialog window 903. To initiate automatic navigation, the user selects the "Start" button of dialog window 903. In some embodiments, once the automatic navigation is enabled, the selected path is displayed on the user interface (not shown in Figure 9). As the vehicle navigates to the destination target location, vehicle locator element 905 is updated to reflect the vehicle's new location. Similarly, as a user moves, user locator element 909 is updated to reflect the user's new location. In some embodiments, a trail shows the change in the user's location. In various embodiments, the user must keep contact with a virtual heartbeat button to allow the automatic navigation to continue. Once the user releases the virtual heartbeat button, the automatic navigation will stop. In some embodiments, the heartbeat button is the "Start" button of dialog window 903. In some embodiments, separate forward and reverse buttons function as virtual heartbeat buttons to confirm automatic navigation in forward and reverse directions, respectively (not shown).
Claims (20)
a processor configured to:
receive an identification of a geographical location associated with a target specified by a user remote from a vehicle;
utilize a machine learning model to generate a representation of at least a portion of an environment surrounding the vehicle using sensor data from one or more sensors of the vehicle;
calculate at least a portion of a path to a target location corresponding to the received geographical location using the generated representation of the at least portion of the environment surrounding the vehicle; and provide at least one command to automatically navigate the vehicle based on the determined path and updated sensor data from at least a portion of the one or more sensors of the vehicle; and a memory coupled to the processor and configured to provide the processor with instructions.
receiving an identification of a geographical location associated with a target specified by a user remote from a vehicle;
utilizing a neural network to generate a representation of at least a portion of an environment surrounding the vehicle using sensor data from one or more sensors of the vehicle;
calculating at least a portion of a path to a target location corresponding to the received geographical location using the generated representation of the at least portion of the environment surrounding the vehicle; and providing at least one command to automatically navigate the vehicle based on the determined path and updated sensor data from at least a portion of the one or more sensors of the vehicle.
receiving an identification of a geographical location associated with a target specified by a user remote from a vehicle;
utilizing a neural network to generate a representation of at least a portion of an environment surrounding the vehicle using sensor data from one or more sensors of the vehicle;
calculating at least a portion of a path to a target location corresponding to the received geographical location using the generated representation of the at least portion of the environment surrounding the vehicle; and providing at least one command to automatically navigate the vehicle based on the determined path and updated sensor data from at least a portion of the one or more sensors of the vehicle.
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