Autonomous vehicles, such as vehicles which do not require a human driver, may be used to aid in the transport of passengers or items from one location to another. An important component of an autonomous vehicle is the perception system, which allows the vehicle to perceive and interpret its surroundings using various sensors such as cameras, radar, lasers, and other similar devices. For example, autonomous vehicles may use the sensors to gather and interpret images and sensor data about its surrounding environment, e.g., parked cars, trees, buildings, etc. Information from the perception system may be used by these vehicles to make numerous decisions while the autonomous vehicle is in motion, such as speeding up, slowing down, stopping, turning, etc.
When testing autonomous vehicles, it can be difficult, expensive, and dangerous to set up certain real-life scenarios. For example, to test the autonomous vehicle's reaction to a jaywalker stepping in front of the vehicle, it would be dangerous to use a real person, and expensive and time consuming to set up a realistic dummy.
One aspect of the disclosure provides a method of testing an autonomous vehicle using virtual objects. The method includes maneuvering, by one or more computing devices, the autonomous vehicle in an autonomous driving mode, receiving sensor data corresponding to objects in the autonomous vehicle's environment, and receiving virtual object data corresponding to a virtual object in the autonomous vehicle's environment, the virtual object representing a real object that is not in the vehicle's environment. The method further includes maneuvering, by the one or more computing devices, the autonomous vehicle based on both the sensor data and the virtual object data, and logging, by the one or more computing devices, information about the maneuvering of the vehicle based on both the sensor data and the virtual object data.
Another aspect of the disclosure provides an autonomous vehicle. The autonomous vehicle includes one or more maneuvering systems, including a steering system, an acceleration system, and a deceleration system. The vehicle further includes a perception system adapted to detect real objects in the autonomous vehicle's environment, and one or more processors configured to receive virtual object data corresponding to a virtual object in the autonomous vehicle's environment, the virtual object representing a real object that is not in the vehicle's environment. At least one of the one or more maneuvering systems is adapted to maneuver the autonomous vehicle based on both the real object data and the virtual object data.
A further aspect of the disclosure provides a system for testing an autonomous vehicle using virtual objects. The system includes one or more memories storing virtual object data and one or more computing devices in communication with the one or more memories. The one or more computing devices are configured to receive real object data corresponding to real objects detected in the autonomous vehicle's environment, receive virtual object data corresponding to a virtual object in the autonomous vehicle's environment, the virtual object representing a real object that is not in the vehicle's environment, and maneuver the autonomous vehicle based on both the real object data and the virtual object data.
The technology relates to testing the behavior, dynamics and response time of autonomous vehicles in various scenarios. When testing autonomous vehicles, it can be difficult, expensive and even dangerous to set up certain real-life scenarios. For example, it would be inherently dangerous to test the situation of a jaywalker using a real person and could be expensive (and even dangerous) to use a dummy or other object. Typical simulations may involve off-line testing of an autonomous vehicle's computers in a lab setting, but these simulations may rely too much of computer estimates of how the vehicle would drive on a physical road, thus lacking some aspects of unpredictability in the response of an actual physical vehicle. In this regard, it can very helpful to test an autonomous vehicle in various scenarios on actual roadways using virtual objects.
In order to test an autonomous vehicle, a user must first create the features of the scenario. This may include inputting information about a virtual object. For example, a user may specify a virtual object and its type, such as car, pedestrian, bicyclist, construction object, etc. Each object may be given an initial geographic location for a particular time when the object will appear as shown in
In some cases, such as a vehicle or pedestrian, the object may be given a behavior plan. A behavior plan may be based on a behavior that the user would like the virtual object to follow. Thus, example behaviors may include a pedestrian walking in front of the vehicle, other vehicles tailgating, other vehicles cutting into a lane in front or behind the autonomous vehicle.
A behavior plan may include an object path. The simplest object path may include a linear path between the initial geographic location and a second geographic location. The path may also include information about the speed of the object (accelerating, decelerating, both at different times, etc.). Another example of a path may include a series of locations as opposed to only two. Again this type of path would also include information about the speed of the object. In a third more complex example, the path may include a reactive feature where the object will react to the autonomous vehicle or another object (such as other vehicles or a stop sign).
Once the features have been provided, the features may be converted into fictitious sensor data. The fictitious sensor data may correspond to information provided to the autonomous vehicle's computers by the vehicle's perception system. A perception system may include various sensors such as radar, laser, sonar, cameras, etc. that the autonomous vehicle's computer relies upon to detect objects in the autonomous vehicle's environment. As an example, the fictitious sensor data may include information such as location, direction, speed, physical characteristics (size, shape, etc.) for each virtual object at a series of different times (t=0, 1, 2,. . . n) when the autonomous vehicle would interact with the virtual object given the locations of the autonomous vehicle and the virtual object.
As the autonomous vehicle is driving along a roadway in an autonomous driving mode as shown in
During this time, the autonomous vehicle's computer may log the results of the scenario including vehicle's behavior, dynamics and response time as shown in
The results of scenario may then be evaluated. This evaluation may occur at the autonomous vehicle, for example, by the autonomous vehicle's computer or another testing computer, or at a later time by downloading the logged information and reviewing it offline. The valuation may be based on specialized, customized criteria, such as whether the vehicle collided (or nearly collided) with a virtual object, whether the vehicle accelerated, decelerated and steered appropriately for the scenario, whether the vehicle reached its intended destination, etc.
As noted above, a user may create or otherwise designate the features of the scenario in advance; however the scenarios may be triggered or started in various ways. For example, a user in the autonomous vehicle could initiate a scenario while the autonomous vehicle is driving itself. For instance, the user could use a computer connected to the autonomous vehicle to inject a virtual object such as a pedestrian into the autonomous vehicle's environment.
In addition, when identifying the features of a scenario, a user may provide a virtual object with flexibility. In this regard, the same virtual object could be provided with alternative behaviors. For example, a virtual object corresponding to a pedestrian could have two or more different object paths; one where the pedestrian crosses a roadway at time t=1 and another where the pedestrian crosses the roadway at time t=2 as shown in
The scenarios may also be used to simulate features other than virtual objects. For example, the user may also specify state information about the autonomous vehicle's environment such as the state of traffic signals (red, yellow, green) at different times as well as failure conditions for various systems of the vehicle such as sensors or computers.
The aspects described above allow for the testing of autonomous vehicles in real world situations. Rather than testing the vehicle using real objects, such as people or dummies which would be dangerous and costly, the scenarios may be used numerous times with such costs or risks. Thus, in many cases, these testing scenarios described above may be repeated as needed for the sake of regression testing. In addition, as noted above, such simulations in real world environments may provide for better information about the dynamics of a vehicle and reaction speed in certain situations.
As shown in
The memory 130 stores information accessible by the one or more processors 120, including data 132 and instructions 134 that may be executed or otherwise used by the processor(s) 120. The memory 130 may be of any type capable of storing information accessible by the processor(s), including a computing device-readable medium, or other medium that stores data that may be read with the aid of an electronic device, such as a hard-drive, memory card, ROM, RAM, DVD or other optical disks, as well as other write-capable and read-only memories. Systems and methods may include different combinations of the foregoing, whereby different portions of the instructions and data are stored on different types of media.
The data 132 may be retrieved, stored or modified by processor(s) 120 in accordance with the instructions 132. For instance, although the claimed subject matter is not limited by any particular data structure, the data may be stored in computing device registers, in a relational database as a table having a plurality of different fields and records, XML documents or flat files. The data may also be formatted in any computing device-readable format.
The instructions 134 may be any set of instructions to be executed directly (such as machine code) or indirectly (such as scripts) by the processor. For example, the instructions may be stored as computing device code on the computing device-readable medium. In that regard, the terms “instructions” and “programs” may be used interchangeably herein. The instructions may be stored in object code format for direct processing by the processor, or in any other computing device language including scripts or collections of independent source code modules that are interpreted on demand or compiled in advance. Functions, methods and routines of the instructions are explained in more detail below.
The one or more processors 120 may be any conventional processors, such as commercially available CPUs. Alternatively, the one or more processors may be a dedicated device such as an ASIC or other hardware-based processor, such as a field programmable gate array (FPGA). Although
Computing device 110 may have all of the components normally used in connection with a computing device such as the processor and memory described above, as well as a user input 150 (e.g., a mouse, keyboard, touch screen and/or microphone) and various electronic displays (e.g., a monitor having a screen, a small LCD touch-screen or any other electrical device that is operable to display information). In this example, the vehicle includes an internal electronic display 152. In this regard, internal electronic display 152 may be located within a cabin of vehicle 100 and may be used by computing device 110 to provide information to passengers within the vehicle 100.
In one example, computing device 110 may be an autonomous driving computing system incorporated into vehicle 100. The autonomous driving computing system may capable of communicating with various components of the vehicle as needed in order to control the vehicle in fully autonomous (without input from a driver) as well as semi-autonomous (some input from a driver) driving modes.
As an example,
Returning to
In this regard, computing device 110 may be in communication various systems of vehicle 100, such as deceleration system 160, acceleration system 162, steering system 164, signaling system 166, navigation system 168, positioning system 170, and perception system 172, such that one or more systems working together may control the movement, speed, direction, etc. of vehicle 100 in accordance with the instructions 134 stored in memory 130. Although these systems are shown as external to computing device 110, in actuality, these systems may also be incorporated into computing device 110, again as an autonomous driving computing system for controlling vehicle 100.
As an example, computing device 110 may interact with deceleration system 160 and acceleration system 162 in order to control the speed of the vehicle. Similarly, steering system 164 may be used by computing device 110 in order to control the direction of vehicle 100. For example, if vehicle 100 configured for use on a road, such as a car or truck, the steering system may include components to control the angle of wheels to turn the vehicle. Signaling system 166 may be used by computing device 110 in order to signal the vehicle's intent to other drivers or vehicles, for example, by lighting turn signals or brake lights when needed.
Navigation system 168 may be used by computing device 110 in order to determine and follow a route to a location. In this regard, the navigation system 168 and/or data 132 may store map information, e.g., highly detailed maps identifying the shape and elevation of roadways, lane lines, intersections, crosswalks, speed limits, traffic signals, buildings, signs, real time traffic information, vegetation, or other such objects and information.
Positioning system 170 may be used by computing device 110 in order to determine the vehicle's relative or absolute position on a map or on the earth. For example, the position system 170 may include a GPS receiver to determine the device's latitude, longitude and/or altitude position. Other location systems such as laser-based localization systems, inertial-aided GPS, or camera-based localization may also be used to identify the location of the vehicle. The location of the vehicle may include an absolute geographical location, such as latitude, longitude, and altitude as well as relative location information, such as location relative to other cars immediately around it which can often be determined with less noise that absolute geographical location.
The positioning system 170 may also include other devices in communication with computing device 110, such as an accelerometer, gyroscope or another direction/speed detection device to determine the direction and speed of the vehicle or changes thereto. By way of example only, an acceleration device may determine its pitch, yaw or roll (or changes thereto) relative to the direction of gravity or a plane perpendicular thereto. The device may also track increases or decreases in speed and the direction of such changes. The device's provision of location and orientation data as set forth herein may be provided automatically to the computing device 110, other computing devices and combinations of the foregoing.
The perception system 172 also includes one or more components for detecting and performing analysis on objects external to the vehicle such as other vehicles, obstacles in the roadway, traffic signals, signs, trees, etc. For example, the perception system 172 may include lasers, sonar, radar, cameras, or any other detection devices which record data which may be processed by computing device 110. In the case where the vehicle is a small passenger vehicle such as a car, the car may include a laser mounted on the roof or other convenient location as well as other sensors such as cameras, radars, sonars, and additional lasers. The computing device 110 may control the direction and speed of the vehicle by controlling various components. The vehicle's perception system 172 and/or computing device 110 (using information received from the perception system) may thus rely on any known techniques for detecting and identifying objects in the vehicle's environment.
By way of example, if the vehicle is operating completely autonomously, computing device 110 may navigate the vehicle to a location using data from the detailed map information and navigation system 168. Computing device 110 may use the positioning system 170 to determine the vehicle's location and use the perception system 172 to detect, identify, and respond to objects when needed to reach the location safely. In order to do so, computing device 110 may cause the vehicle to accelerate (e.g., by increasing fuel or other energy provided to the engine by acceleration system 162), decelerate (e.g., by decreasing the fuel supplied to the engine or by applying brakes by deceleration system 160), change direction (e.g., by turning the front or rear wheels of vehicle 100 by steering system 164), and signal such changes (e.g. by lighting turn signals of signaling system 166).
Testing computing device 180 may be used to test sensors and responses of the vehicle 100. For example, the testing computing device 180 may supply fictitious sensor data to the vehicle's sensors. The fictitious sensor data may include a virtual object in the vehicle's environment, wherein the virtual object corresponds to a real object that is not in the vehicle's environment. For example, a virtual object representing a pedestrian crossing an intersection may be fed to the vehicle's perception system 172.
Types of virtual objects, such as pedestrians, bicyclists, cones, etc., may vary. Additionally, scenarios may be created for any of the virtual objects, giving the virtual objects a predefined behavior, such as moving in a particular direction, at a particular location, at a particular rate of speed. The scenarios may include environmental state information, such as weather or a color of a traffic light. The scenarios may further simulate failure situations, such as failure of sensors, systems, computers, etc.
The testing computing device 180 may also be used to analyze the vehicle's response to the fictitious sensor data. For example, the testing computing device 180 may measure response times, accuracy, and the like, and may maintain a record of such information. Alternatively or additionally, records of the vehicle's response may be maintained in the memory 130.
While the testing computing device 180 is shown in
In addition, the detailed map information includes a network of rails 340, 342, 344, 346 which provide the vehicle's computer with guidelines for maneuvering the vehicle so that the vehicle follows the rails and obeys traffic laws. As an example, a vehicle's computer may maneuver the vehicle from point A to point B (two fictitious locations not actually part of the detailed map information) by following rail 340, transitioning to rail 344, and subsequently transitioning to rail 346 in order to make a right turn at intersection 302.
In addition to the operations described above and illustrated in the figures, various operations will now be described. It should be understood that the following operations do not have to be performed in the precise order described below. Rather, various steps can be handled in a different order or simultaneously, and steps may also be added or omitted.
The predefined virtual objects execute predefined behavior plans, as described above in connection with
Reaction information for the vehicle 100 may be recorded and used for analysis of the vehicle's sensors and other systems, such as steering, braking, etc.
Whether the vehicle 100 made contact with the virtual object may be determined based on a path of the locations 824. For example, the locations 824 may be compared with the locations of the virtual object to determine whether the autonomous vehicle crossed a given location of the virtual object at a time when the virtual object was at the given location.
Whether or not the vehicle made contact with the virtual object, errors may be determined and recorded. For example, if the vehicle did make contact with the virtual object, it may have attempted to stop but failed because the vehicle skidded. Other types of errors may include turning too hard, maneuvers that do not work as expected, mechanical errors such as faulty brakes, etc.
While the reaction information shown in
In some examples, when defining a scenario, a virtual object may be provided with alternative behavior plans. For example,
In some examples, the scenarios may be used to simulate other features in addition or as an alternative to virtual object behavior. For example, the scenario can define a state of a traffic signal (red, yellow, or green). Further, the scenario can be defined to simulate failure conditions. For example, failure of sensors, steering systems, braking systems, computers, etc. may be simulated to test the vehicle's response. Any of the scenarios may be initiated in response to feedback from the vehicle. For example, when the vehicle reaches a predetermined position on the roadway, a virtual pedestrian can suddenly appear.
In block 1210, the autonomous vehicle maneuvers in an autonomous driving mode on a roadway. As the vehicle maneuvers, it receives sensor information corresponding to objects in its environment (block 1220). For example, the vehicle's sensors may detect lane markings, curbs, street signs, and the like.
In block 1230, the vehicle receives fictitious sensor data corresponding to a virtual object, the virtual object representing an actual object that is not in the vehicle's environment. The virtual object may be a representation of a pedestrian, cyclist, vehicle, animal, or any other object. The fictitious sensor data further includes behavior information for the virtual object, the behavior information including at least one object path. For example, the behavior information may define presence of the virtual object at a first location at a first time, and at a second location at a second time.
In block 1240, the autonomous vehicle maneuvers on the roadway based on both the sensor data received at block 1220 and the fictitious sensor data received at block 1230. For example, the vehicle may detect a virtual pedestrian and a guardrail. While the vehicle may take action to avoid the virtual pedestrian, it will also try to avoid the guardrail if possible. Therefore, the vehicle may slow down and stop as opposed to veering.
In block 1250, information pertaining to the maneuvering of the vehicle is logged. This information may be reviewed (block 1260) to evaluate the vehicle's response. For example, it may be determined whether the vehicle avoided the virtual object or otherwise reacted appropriately. Moreover, it may be determined whether errors occurred or whether any of the vehicle's systems are faulty.
The features described above allow for testing of autonomous vehicles in real world situations. Rather than testing using live people, which would be dangerous, or dummies, which is time consuming and costly, the testing is based on virtual object data that is input to the vehicle's sensor systems. Accordingly, scenarios may be run multiple times without variation to more efficiently gauge whether changes to the vehicle were effective. Moreover, different scenarios may be selected at random or based on any other criteria and run one after another without down time in between.
Although the examples described above relate to autonomous vehicles, this information may be used in non-autonomous vehicles or autonomous vehicle's operating in semi-autonomous or manual driving modes. In this regard, when the fictional sensor data indicates a virtual object in the vehicle's path, a notification may be provided to the driver indicating the presence of the virtual object, for example, along with a warning. In more sophisticated systems, a vehicle's one or more computing devices may automatically apply the vehicle's brakes or otherwise limit or reduce the acceleration of the vehicle (prevent acceleration, reduce gas flow, or limit electricity flowing to the vehicle's engine) to slow the vehicle down.
Unless otherwise stated, the foregoing alternative examples are not mutually exclusive, but may be implemented in various combinations to achieve unique advantages. As these and other variations and combinations of the features discussed above can be utilized without departing from the subject matter defined by the claims, the foregoing description of the embodiments should be taken by way of illustration rather than by way of limitation of the subject matter defined by the claims. In addition, the provision of the examples described herein, as well as clauses phrased as “such as,” “including” and the like, should not be interpreted as limiting the subject matter of the claims to the specific examples; rather, the examples are intended to illustrate only one of many possible embodiments. Further, the same reference numbers in different drawings can identify the same or similar elements.
This application is a continuation of U.S. application Ser. No. No. 14/744,891, filed on Jun. 19, 2015, the disclosure of which is incorporated herein by reference.
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Number | Date | Country | |
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Parent | 14744891 | Jun 2015 | US |
Child | 15797318 | US |