Multi-surface model-based tracking
Systems and methods for detecting a vehicle. One system includes a controller. The controller is configured to receive images from a camera mounted on a first vehicle, identify a surface of a second vehicle located around the first vehicle based on the images, and generate a three-dimensional model associated with the second vehicle. The model includes a first plane and a second plane approximately perpendicular to the first plane. The first plane of the model is associated with the identified surface of the second vehicle. The controller is further configured to track a position of the second vehicle using the three-dimensional model after the identified surface falls at least partially outside of a field-of-view of the at least one camera.
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The present application claims priority to U.S. Provisional Patent Application No. 61/615,596, filed Mar. 26, 2012, the entire content of which is herein incorporated by reference.
BACKGROUNDExisting adaptive cruise control (“ACC”) and forward collision warning (“FCW”) systems provide radar sensor solutions optionally supplemented by a forward-looking monochrome camera. Radar sensors work well for longitudinal distance and velocity measurements but may not be able to detect certain traffic situations that rely on precise and robust lateral tracking. For example, existing radar systems often cannot detect neighboring lane disturbances that can occur when a vehicle is overtaking other vehicle, such as semi-trucks, at low relative speeds. In particular, radar systems may see sporadic reflections in the driving neighboring lane due to the mass of the truck side and may not be able to maintain tracking of previously-seen vehicles. Existing radar systems also may not be able to provide proper reactions when a target vehicle in the same lane slows and turns sharply into another street (often referred to as “McDonald's turns”). For example, existing radar systems may unnecessarily decelerate the vehicle or provide warnings in this situation. Furthermore, many existing radar systems cannot properly detect “late” vehicles, such as when a vehicle abruptly cuts into a lane.
These situations may be mitigated to a certain degree by a camera that can provide information on lane position and vehicle detection. However, existing monochrome cameras need to see most of or the entire backside of a vehicle to detect the vehicle and can only track the vehicle when a majority of the vehicle back-side is within the camera's field of view (“FoV”). As a result, cameras are not able to fully eliminate all the above errors, especially for cut-in situations.
SUMMARYTherefore, embodiments of the present invention provide a more universal approach for cameras to enhance current ACC or FCW systems based on radar, camera, or a combination thereof and provide robust tracking and recognition of vehicles. As described below, embodiments of the present invention can detect an accurate lateral position of a vehicle (e.g., either in neighbor lane or the same lane) without seeing the entire vehicle and can detect the vehicle's turning intention by detecting rotation of the vehicle earlier than existing systems.
In particular, embodiments of the present invention provide systems and methods for extending the capability of a forward-looking camera. In particular, the proposed systems and methods perform feature tracking across vehicle surfaces based on a complete three-dimensional (“3-D”) model of the vehicle using two-dimensional (“2-D”) data captured by the camera. The 3-D model is used to track a side of a vehicle even though the back of the vehicle, which was originally detected by the camera, moves out of the camera's FoV. Therefore, the 3-D model remedies the situations discussed above. The 3-D model can also provide additional functionality, such as being a basis for building a full 360-degree surround model using multiple cameras.
For example, one embodiment of the invention provides a system for detecting a vehicle. The system includes a controller. The controller is configured to receive images from a camera mounted on a first vehicle, identify a surface of a second vehicle located around the first vehicle based on the images, and generate a three-dimensional model associated with the second vehicle. The model includes a first plane and a second plane approximately perpendicular to the first plane. The first plane is associated with the identified surface of the second vehicle. The controller is further configured to track a position of the second vehicle using the three-dimensional model after the identified surface falls at least partially outside of a field-of-view of the at least one camera.
Another embodiment of the invention provides a method for detecting a vehicle. The method includes receiving, at at least one controller, images from at least one camera mounted on a first vehicle, detecting, by the at least one controller, a surface of a second vehicle located around the first vehicle based on the images, and generating, by the at least one controller, a three-dimensional model representing the second vehicle. The three-dimensional model includes a first plane and a second plane approximately perpendicular to the first plane, and the first plane represents the identified surface of the second vehicle. The method also includes determining, by the at least one controller, a position of the second vehicle using the model and updated data from the at least one camera after the identified surface of the second vehicle falls at least partially outside of a field-of-view of the at least one camera.
Other aspects of the invention will become apparent by consideration of the detailed description and accompanying drawings.
Before any embodiments of the invention are explained in detail, it is to be understood that the invention is not limited in its application to the details of construction and the arrangement of components set forth in the following description or illustrated in the following drawings. The invention is capable of other embodiments and of being practiced or of being carried out in various ways.
The environment sensors 22 include one or more radar, sonar, ultrasonic, and/or optical sensors (e.g., one or more monochrome cameras, stereo cameras, etc.) that are mounted on the surface of the vehicle 10 and detect objects located around the vehicle 10 (e.g., other vehicles). As illustrated in
The controller 12 uses the information collected by the sensors 22 to identify or detect other objects, such as other vehicles, located around the vehicle 10. In some embodiments, the controller 12 uses information regarding detected objects (e.g., position, speed, change in position, etc.) to perform various automatic vehicle control operations, such as adaptive cruise control (“ACC”) and/or forward collision warning (“FCW”). In other embodiments, however, the controller 12 is configured to detect objects and provide information regarding detected objects to one or more supplemental controllers 24 (e.g., an ACC controller, an FCW controller, a stability control system, etc.), and the supplemental controller 24 can be configured to use the information regarding detected objects to automatically modify vehicle operation. Accordingly, it should be understood that the functionality of the controller 12 can be distributed among multiple control devices or systems.
As illustrated in
The instructions stored in the computer-readable media 32 provide particular functionality when executed by the processor 30. In general, the instructions, when executed by the processor 30, use information from the environment sensors 22 to detect objects, such as other vehicles around the vehicle 10 and their position relative to the vehicle 10. As noted above, the controller 12 can be configured to use information regarding detected objects to perform various vehicle control operations (e.g., ACC and/or FCW) or can be configured to provide this information to other controllers that perform these operations.
As described above in the summary section, although using cameras with radar systems can improve detection and tracking of surrounding objects and vehicles, existing camera systems for detecting surrounding vehicles detect vehicles based on the appearance of the back of a vehicle and usually require that the camera sees nearly 100% of the back (e.g., to identify a surface of having a particular, size, shape, and/or other features, such as a generally rectangular surface of a predetermined size). Accordingly, existing cameras are not able to recognize a vehicle by seeing only the side of the vehicle. Therefore, existing cameras usually lose track of a vehicle when part of the back of the vehicle moves out of the camera's field-of-view (“FoV”) due to a perspective change (e.g., when the vehicle 10 overtakes the vehicle) or due to vehicle rotation (e.g., the detected vehicle or the vehicle 10 turns or changes lanes).
To overcome these issues, the controller 12 is configured to detect objects (i.e., other vehicles) using a multi-surface model, including a two-surface model, to represent a detected vehicle. The two surfaces include the back of the object and a side of the object. Depending on the relative object position, the side surface could be the left or the right side. However, the topology matches what a camera located at the front of the vehicle 10 sees (e.g., whether images detected by the camera include features of a surface to the left or right of a back of a detected vehicle).
For example,
In particular, as illustrated in
The controller 12 also generates a three-dimensional (“3-D”) model associated with the identified vehicle (at 44). The model includes multiple surfaces of the identified vehicle. In particular, the model includes a first plane and a second plane approximately perpendicular to the first plane. The first plane can be associated with a back surface of a detected vehicle, and the second plane can be associated with a side surface of the detected vehicle. Depending on the position of the detected vehicle to the vehicle 10 (i.e., whether the detected vehicle is to the left, front, or right of the vehicle 10), the side surface is either a left side surface or a right side surface of the detected vehicle. Each plane of the model represents a hypothetical surface of the identified vehicle.
As the sensors 22 continuously acquire new data (e.g., new images), the controller 12 tracks features within the bounding box and within a predetermined zone of plausibility on either side of the bounding box. If the controller 12 identifies features that are outside of the bounding box but associated with a side of the detected vehicle (i.e., outside the bounding box but inside the zone of plausibility and/or inside the model), the controller 12 updates the model based on the detected side of the vehicle (at 46). Accordingly, the resulting updated model provides a more accurate estimation of the detected vehicle's rotation and lateral position. This information can be used by the controller 12 and/or other control devices and systems to perform various automatic vehicle operations, such as adjusting a cruise control speed of the vehicle 10 to prevent a collision with a vehicle in the same driving corridor, issuing a warning or slowing the vehicle 10 to prevent a collision with a detected vehicle, etc.
From State 1, a detected vehicle may transition to State 2, such as when the detected vehicle or the vehicle 10 moves laterally and enters an adjacent driving corridor. Similarly, from State 1, a detected vehicle may transition to State 3, such as when the detected vehicle or the vehicle 10 turns (e.g., sharply, such as a McDonald's turn) and the back of the detected vehicle is no longer visible. Accordingly, using the model, the controller 12 can seamlessly track a detected vehicle during these transactions. In particular, the controller 12 can use a vehicle side represented by the model to track the detected vehicle even if the back of the detected vehicle is no longer visible or within the sensor's FoV.
In State 2, the controller 12 detects the back of a vehicle in an adjacent driving corridor (at 50) and creates a 2-D bounding box (at 52) as described above for State 1. The controller 12 then generates a 3-D model based on the 2-D bounding box (at 54) and updates the model based on new or updated data acquired from the environment sensors 22 (at 56), as also described above for State 1.
From State 2, a detected vehicle may transition to State 1, such as when the detected vehicle changes lanes. Similarly, from State 2, a detected vehicle may transition to State 3, such as when the vehicle 10 overtakes the detected vehicle. In both these transitions, the controller 12 can continue to track the vehicle using the model. In particular, in a cut-in situation (e.g., where a vertical distance between the detected vehicle and vehicle 10 is small), the side of the detected vehicle may remain visible even if the back of the vehicle (partially or wholly) is no longer within the sensors' FoV. Similarly, during a passing situation, even if the back of the detected vehicle is no longer visible, the controller 12 uses the side surface represented by the model to continue tracking the position of the vehicle. Continuous tracking of the detected vehicle in these situations provides for better estimation of lateral distance and velocity of the detected vehicle, which helps ACC and FCW systems of the vehicle 10.
As illustrated in
From State 3, a detected vehicle can transition to State 2. This transition can occur when there is a vehicle in an adjacent corridor that is passing the vehicle 10 and gradually the back of the vehicle moves into the sensors' FoV. During this transition, the controller 12 tracks the side of the vehicle. When the back of the vehicle begins to move into the sensors' FoV, the controller 12 detects features that do not fall in the estimated plane associated with the vehicle side but fall in the estimated plane for the vehicle back as represented by the model. Accordingly, using the 3-D models, the controller 12 can properly track a detected vehicle and estimate the lateral and longitudinal distance of the detected vehicle. This information can be used by various automatic vehicle control operations, such as ACC and FCW systems. It is also possible for a detected vehicle to transition from State 3 to State 1. For example, this situation may occur when the driving corridor is wide or the sensors 22 have a narrow field of view.
Accordingly, as described above, using the three-dimensional models, the controller 12 can accurately detect and track the position of vehicles located around the vehicle 10 (e.g., a distance between a detected vehicle and the vehicle 10). In particular, the controller 12 can identify a vehicle either by identifying a back of the vehicle or by identifying a side of the vehicle. Furthermore, after initially identifying or recognizing a vehicle based on a particular surface of the vehicle (e.g., back or side), the controller 12 uses the 3-D model to track the vehicle even after the surface of the vehicle that was initially detected falls outside of the sensors' FoV. In particular, as illustrated in
As illustrated in
Once a vehicle model is constructed using available features, the controller 12 acquires new or updated data from the sensors 22, tracks features that fit into the model, and updates the model accordingly based on the updated data. This ability allows the controller 12 to detect particular traffic situations that many existing object detection systems cannot properly detect. For example, the controller 12 uses a “rolling feature” to determine if new features identified in updated data from the sensors 22 belong to the same originally-detected surface or a new surface that could fit the generated 3-D multi-surface model. In particular, the controller 12 can be configured to determine if the new features fit the plane of the model representing the initial surface identified by the controller 12. If the features fit this plane, the controller 12 identifies that the new features are associated with the initial surface identified by the controller 12 and the controller 12 can update the model accordingly (e.g., by adjusting the model's size, position, etc.). If the new features do not fit this plane, the controller 12 determines if the new features fit a “next” plane in the model. The next plane can be associated with the next surface that will likely be seen by the sensors 22. For example, if the sensors 22 initially viewed the back surface of a vehicle, the next surface likely viewed by the sensors 22 would be a side surface. Similarly, if the sensors 22 initially viewed a side surface of a vehicle, the next surface likely viewed by the sensors 22 would be the back surface. Accordingly, the controller 12 identifies the “next” plane from the model and determines if the new features fit this plane. If so, the controller 12 identifies that the new features are associated with the “next” plane and updates the model accordingly (e.g., by adjusting the model's size, position, orientation, etc.). If new features do not fit any of the planes associated with the model of a previously-identified vehicle, the controller 12 can be configured to generate a new model and/or delete an existing model (i.e., indicating that a previously-identified vehicle is no longer present). Therefore, the controller 12 “rolls” from one plane or surface to the logical next plane or surface to determine if new features extracted from updated data provided by the sensors 22 continue to represent a previously-identified vehicle.
By “rolling” features from the back surface to a side surface and following features along a side, or vice versa, the controller 12 can accurately track a vehicle during a passing situation. Similarly, for a two-camera system (i.e., including a front-view camera and a back-view camera) or a 360 degree FoV system, the controller 12 can continue rolling features to a front surface. Accordingly, as long as the controller 12 identifies features that fit a model (e.g., fall within the model or within a zone of plausibility associated one or more of the planes of the model or the model itself using the above rolling feature), the controller 12 can continue to track the detected vehicle even when the original surface used to initially detect the vehicle have completely disappeared from the sensors' FoV.
In addition to accurately tracking passing situations, the controller 12 can also accurately track detected vehicles during sharp turning situations, such as McDonald's turns. In particular, the controller 12 can identify rotation or turning of a detected vehicle earlier by detecting rotation of features along the 3-D multi-surface model (e.g., detecting change in features of a vehicle's side). Furthermore, during a cut-in situation or a merge situation, the controller 12 detects a side of a vehicle, which allows the cutting-in or merging vehicle to be detected earlier than existing systems.
Therefore, embodiments of the present invention provide systems and method for detecting and tracking other vehicles located around a vehicle using three-dimensional, multi-surface models, and the information gathered using this process can be used to enhance automatic vehicle control operations, such as ACC and FCW. It should be understood that the forward-looking system described herein can also be mirrored backward or can be used to provide approximately 360-degree FoV coverage. For example, with approximately 360 degrees of coverage, the controller 12 can track a passing vehicle based on a rear-view camera initially seeing the front and the side of the vehicle and a side-view camera subsequently seeing the side of the vehicle and, in some embodiments, can predict a potential cut-in situation even before the passing vehicle is seen by a front-view camera.
It should be understood that although the system and methods described herein relate to detecting and tracking vehicles, the systems and methods can be used to detect and track any type of object located around the vehicle.
Various features and advantages of the invention are set forth in the following claims.
Claims
1. A vehicle mounted system for detecting a vehicle, the system comprising:
- a controller including a processor, a computer readable media in communication with the processor, and an input/output interface, the processor configured to: receive images from a camera mounted on a moving first vehicle, identify a surface of a second vehicle located around the first vehicle based on the images by: detecting motion in the images, extracting features from the images based on the detected motion, generating a surface based on the extracted features, and comparing the surface to a side surface of at least one vehicle model; generate a three-dimensional model associated with the second vehicle, the three-dimensional model including a first plane and a second plane approximately perpendicular to the first plane, wherein the first plane is associated with the identified surface of the second vehicle, and track a position of the second vehicle using the three-dimensional model after the identified surface falls at least partially outside of a field-of-view of the camera by: receiving updated images from the camera, extracting features from the updated images, determining if the extracted features fit the first plane of the three-dimensional model, when the extracted features do not fit the first plane of the three-dimensional model, determining if the extracted features fit the second plane of the three-dimensional model, and when the extracted features fit the second plane of the three-dimensional model, updating the three-dimensional model based on the extracted features, and
- wherein the controller is further configured to perform at least one automatic vehicle control operation based on the tracked position of the second vehicle.
2. The system of claim 1, wherein the controller is further configured to receive data from at least one radar sensor mounted on the first vehicle.
3. The system of claim 1, wherein the surface of the second vehicle is a back surface of the second vehicle.
4. The system of claim 1, wherein the surface of the second vehicle is a side surface of the second vehicle.
5. The system of claim 1, wherein the controller is configured to identify the surface of the second vehicle based on features extracted from the images.
6. The system of claim 1, wherein the controller is configured to generate the three-dimensional model by:
- classifying the second vehicle into a vehicle category based on characteristics of the identified surface of the second vehicle,
- defining a bounding box representing the identified surface of the second, wherein the size of the bounding box is based on the vehicle category of the second vehicle, and
- setting the bounding box as the first plane of the three-dimensional model.
7. The system of claim 1, wherein the camera is mounted to a front of the first vehicle.
8. The system of claim 1, wherein the at least one automatic vehicle control operation includes at least one adaptive cruise control and forward collision warning.
9. The system of claim 1, wherein the controller determines turning intention of the second vehicle from rotation of the second vehicle before a vehicle turn of the second vehicle occurs.
10. A method for detecting and avoiding collision with a vehicle, the method comprising:
- receiving, at at least one controller, images from at least one camera mounted on a first vehicle;
- identifying, by the at least one controller, a surface of a second vehicle located around the first vehicle based on the images by: detecting motion in the images, extracting features from the images based on the detected motion, generating a surface based on the extracted features, and comparing the surface to a side surface of at least one vehicle model;
- generating, by the at least one controller, a three-dimensional model representing the second vehicle, the three-dimensional model including a first plane and a second plane approximately perpendicular to the first plane, wherein the first plane represents the identified surface of the second vehicle;
- determining, by the at least one controller, a position of the second vehicle using the model and updated data from the at least one camera after the identified surface of the second vehicle falls at least partially outside of a field-of-view of the at least one camera, and
- performing, by the at least one controller, at least one automatic vehicle control operation based on the tracked position of the second vehicle.
11. The method of claim 10, wherein detecting a surface of a second vehicle includes detecting a back surface of a second vehicle.
12. The method of claim 10, wherein detecting a surface of the second vehicle includes detecting a side surface of a second vehicle.
13. The method of claim 10, wherein determining a position of the second vehicle includes
- receiving updated images from the at least one camera;
- extracting features from the updated images;
- determining if the extracted features fit the first plane of the three-dimensional model;
- when the extracted features do not fit the first plane of the three-dimensional model, determining if the extracted features fit the second plane of the three-dimensional model; and
- when the extracted features fit the second plane of the three-dimensional model, updating the three-dimensional model based on the extracted features.
14. The method of claim 10, wherein generating a three-dimensional model includes
- classifying the second vehicle into a vehicle category based on characteristics of the identified surface of the second vehicle,
- defining a bounding box representing the identified surface of the second, wherein the size of the bounding box is based on the vehicle category of the second vehicle, and
- setting the bounding box as the first plane of the three-dimensional model.
15. The method of claim 10, further comprising transmitting the position of the second vehicle to at least one of an automatic cruise control system and a forward collision warning system.
16. The method of claim 10, wherein the controller determines turning intention of the second vehicle from rotation of the second vehicle before a vehicle turn of the second vehicle occurs.
17. A method for detecting a vehicle, the method comprising:
- receiving images from a camera mounted on a moving first vehicle;
- detecting a surface of a second vehicle located around the first vehicle based on the images;
- generating, by a controller, a three-dimensional model representing the second vehicle, the three-dimensional model including a first plane and a second plane approximately perpendicular to the first plane, wherein the first plane represents the identified surface of the second vehicle;
- determining a position of the second vehicle using the model after the identified surface of the second vehicle falls at least partially outside of a field-of-view of the camera, wherein determining the position of the second vehicle includes: receiving updated images from the camera; extracting features from the updated images; determining if the extracted features fit the first plane of the three-dimensional model; when the extracted features do not fit the first plane of the three-dimensional model, determining if the extracted features fit the second plane of the three-dimensional model; and when the extracted features fit the second plane of the three-dimensional model, updating the three-dimensional model based on the extracted features, and
- performing at least one automatic vehicle control operation based on the tracked position of the second vehicle.
18. The method of claim 17, wherein the controller determines turning intention of the second vehicle from rotation of the second vehicle before a vehicle turn of the second vehicle occurs.
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Type: Grant
Filed: Mar 26, 2013
Date of Patent: Mar 29, 2016
Patent Publication Number: 20130253796
Assignee: Robert Bosch GmbH (Stuttgart)
Inventors: Yun Luo (Ann Arbor, MI), Xavier Zhu (Northville, MI)
Primary Examiner: Fadey Jabr
Assistant Examiner: Courtney Heinle
Application Number: 13/850,829
International Classification: G08G 1/16 (20060101); B60K 31/00 (20060101); G01S 11/12 (20060101); G01S 15/93 (20060101); G01S 13/86 (20060101); G01S 13/93 (20060101);