The present invention relates generally to the automotive field. More specifically, the present invention relates to systems and methods for vehicle lane marking and other object detection using side fisheye cameras and three-fold de-warping.
There are a variety of known methodologies for performing object display and detection using the front, rear, and side cameras of a vehicle and standard camera images. These methodologies allow such objects to be displayed to a vehicle occupant on an in-vehicle display screen, and an artificial intelligence (AI) algorithm can be applied to the standard camera images to allow a driver assist (DA) or autonomous driving (AD) system to recognize, segment, annotate, process, respond, and/or react to the objects. Often, multiple front, rear, and side camera images are combined into a single camera image on the in-vehicle display screen, providing the vehicle occupant with a surrounding view that is essentially unobstructed by the vehicle itself. One challenge faced is that the front and rear cameras, as well as side cameras, are often fisheye cameras.
A standard camera lens, also referred to as a rectilinear camera lens, is a camera lens that reproduces straight lines as straight lines. A fisheye camera lens, also referred to as a curvilinear camera lens or an omnidirectional camera lens, on the other hand, reproduces straight lines as curved lines, i.e., it provides a convex non-rectilinear appearance.
The front portion of a fisheye camera lens utilizes a cupola or domed shaped front end, and the fisheye camera lens derives its name from being similar in appearance to the eye of a fish. A fisheye camera lens is an example of a panoramic or hemispherical camera lens that has a field of view that is e.g. 180°, 220°, or 360°. A fisheye camera lens thus has a wider field of view than a rectilinear camera lens, and has the ability to capture large dimensions of a specified area in one shot. Instead of producing images with straight lines of perspective (i.e., rectilinear images), the fisheye camera lens produces images with convex non-rectilinear lines of perspective. Thus, a fisheye camera lens provides images with altered or inaccurate views, i.e., with visual distortion. There are several types of fisheye camera lenses, such as a circular fisheye camera lens, a full-frame fisheye camera lens, a panomorph fisheye camera lens, an omnidirectional camera lens, etc.
Thus, fisheye camera lenses are widely used as visual sensors in DA and AD systems because of their good coverage (i.e., wide field of view). However, this comes with costs: the unnatural images caused by distortion, especially at the outer edges of the images. This not only makes it difficult for a vehicle occupant to understand and interpret the content of such images, but also causes problems for AI algorithms that process the images. Most computer vision and machine learning (ML) algorithms are designed for and trained on non-fisheye (i.e., standard, undistorted) datasets, which makes them sub-optimal or even prone to failure when performing on the highly distorted images captured by fisheye camera lenses.
Some existing approaches undistort images at the cost of losing a large portion of the cameras' field of view, which defeats the purpose of using the fisheye camera lens to begin with. A vehicle detection system is an exemplary system that uses fisheye camera lenses for detecting surrounding vehicles.
One important object detection function is lane marking detection. Such lane marking detection is typically carried out using a standard front or rear camera image, or a side fisheye camera image that is undistorted using a conventional methodology, thereby sacrificing field of view and detection scope. A significant problem arises, however, under low-standing sun or glare conditions, when a standard front camera image can be obscured, for example. The present invention provides systems and methods that address this and other problems.
The present invention provides systems and methods for vehicle lane marking and other object detection using side fisheye cameras and three-fold de-warping. Three-fold de-warping is applied to a side fisheye camera image to create straight, rectilinear side, front, and rear camera images that are readily displayed and understood by a vehicle occupant and/or processed as a suitable dataset for an AI algorithm in a DA or AD system. This three-fold de-warping of the side fisheye camera image preserves field of view, such that all surrounding lane markings and other objects can be viewed and/or detected. Advantageously, the side fisheye camera image is typically not obscured by low-standing sun or glare conditions (at least not on both sides of a vehicle), and can be used when the vehicle is traveling towards or away from the sun or glare source, as a replacement for or complement to the images obtained from typical front or rear camera methodologies. The three-fold de-warped, straight, rectilinear side, front, and rear camera images obtained from the side fisheye camera image are ideally suited for use as a dataset for any variety of AI algorithms, again as a replacement for or complement to the typical front or rear camera methodologies. Thus, the systems and methods for vehicle lane marking and other object detection using side fisheye cameras and three-fold de-warping provided herein can be used as a replacement or substitute for conventional front or rear camera methodologies depending upon vehicle operating and camera visibility conditions, or can be used as a verification of or complement to such conventional front or rear camera methodologies.
In general, the claimed systems and methods first obtain an image of the surroundings of the vehicle. The image is obtained from at least one image capturing device mounted in or on the vehicle, such as a side camera of the vehicle. The image capturing device includes a fisheye lens. The systems/methods correct at least a part of the distortions in the image to obtain a corrected image. The systems/methods rotationally transform the corrected image using a first rotational transformation to obtain a first transformed image and rotationally transform the corrected image using a second rotational transformation to obtain a second transformed image. The first and second transformed images are preferably consecutive images.
In one exemplary embodiment, provided herein is a method of handling images of surroundings of a vehicle, the method including: obtaining an image of the surroundings of the vehicle, wherein the image is obtained from at least one side image capturing device mounted in or on the vehicle, and wherein the at least one side image capturing device includes a fisheye camera lens; correcting at least a part of distortions in the image to obtain a corrected image; rotationally transforming the corrected image using a first rotational transformation to obtain a first transformed image; and rotationally transforming the corrected image using a second rotational transformation to obtain a second transformed image, wherein the first and second transformed images are consecutive or adjacent images. Optionally, the step of obtaining the image of the surroundings of the vehicle using the at least one side image capturing device is performed only after determining that one of a front or a rear image capturing device is obscured. Alternatively, the step of obtaining the image of the surroundings of the vehicle using the at least one side image capturing device is performed simultaneously with a step of obtaining another image of the surroundings of the vehicle using at least one of a front of a rear image capturing device. Preferably, the surroundings of the vehicle include one or more lane markings. The first and second transformed images are provided to an artificial intelligence algorithm operable for performing lane marking detection using the first and second transformed images. The method further includes removing redundant overlapping areas from at least one of the first and second transformed images. The first transformed image is mapped on one planar surface and the second transformed image is mapped on another planar surface. The method further includes displaying at least one of the first and second transformed images to a user of the vehicle.
In another exemplary embodiment, provided herein is a computer program including instructions which, when executed on at least one processor, cause the at least one processor to carry out the method including the following steps: obtaining an image of the surroundings of the vehicle, wherein the image is obtained from at least one side image capturing device mounted in or on the vehicle, and wherein the at least one side image capturing device includes a fisheye camera lens; correcting at least a part of distortions in the image to obtain a corrected image; rotationally transforming the corrected image using a first rotational transformation to obtain a first transformed image; and rotationally transforming the corrected image using a second rotational transformation to obtain a second transformed image, wherein the first and second transformed images are consecutive or adjacent images. Optionally, the step of obtaining the image of the surroundings of the vehicle using the at least one side image capturing device is performed only after determining that one of a front or a rear image capturing device is obscured. Alternatively, the step of obtaining the image of the surroundings of the vehicle using the at least one side image capturing device is performed simultaneously with a step of obtaining another image of the surroundings of the vehicle using at least one of a front or a rear image capturing device. Preferably, the surroundings of the vehicle include one or more lane markings. The first and second transformed images are provided to an artificial intelligence algorithm operable for performing lane marking detection using the first and second transformed images. The method further includes the step of removing redundant overlapping areas from at least one of the first and second transformed images. The first transformed image is mapped on one planar surface and the second transformed image is mapped on another planar surface. The method further includes the step of displaying at least one of the first and second transformed images to a user of the vehicle.
In a further exemplary embodiment, provided herein is a system for handling images of surroundings of a vehicle, the system including: at least one side image capturing device mounted in or on the vehicle operable for obtaining an image of the surroundings of the vehicle, wherein the at least one side image capturing device includes a fisheye camera lens; a correcting module executed on a processor operable for correcting at least a part of distortions in the image to obtain a corrected image; a transforming module executed on the processor operable for rotationally transforming the corrected image using a first rotational transformation to obtain a first transformed image; and the transforming module executed on the processor operable for rotationally transforming the corrected image using a second rotational transformation to obtain a second transformed image, wherein the first and second transformed images are consecutive or adjacent images. Optionally, obtaining the image of the surroundings of the vehicle using the at least one side image capturing device is performed only after determining that one of a front or a rear image capturing device is obscured. Alternatively, obtaining the image of the surroundings of the vehicle using the at least one side image capturing device is performed simultaneously with obtaining another image of the surroundings of the vehicle using at least one of a front or a rear image capturing device. Preferably, the surroundings of the vehicle include one or more lane markings, wherein the first and second transformed images are provided to an artificial intelligence algorithm operable for performing lane marking detection using the first and second transformed images.
The present invention is illustrated and described herein with reference to the various drawings, in which like reference numbers are used to denote like system components/method steps, as appropriate, and in which:
The drawings provided herein are not necessarily to scale and the dimensions of certain features may be exaggerated for the sake of clarity. Emphasis is instead placed on illustrating the principles of operation of the exemplary embodiments provided herein.
The present invention provides systems and methods for vehicle lane marking and other object detection using side fisheye cameras and three-fold de-warping. Three-fold de-warping is applied to a side fisheye camera image to create straight, rectilinear side, front, and rear camera images that are readily displayed and understood by a vehicle occupant and/or processed as a suitable dataset for an AI algorithm in a DA or AD system. This three-fold de-warping of the side fisheye camera image preserves field of view, such that all surrounding lane markings and other objects can be viewed and/or detected. Advantageously, the side fisheye camera image is typically not obscured by low-standing sun or glare conditions (at least not on both sides of a vehicle), and can be used when the vehicle is traveling towards or away from the sun or glare source, as a replacement for or complement to the images obtained from typical front or rear camera methodologies. The three-fold de-warped, straight, rectilinear side, front, and rear camera images obtained from the side fisheye camera image are ideally suited for use as a dataset for any variety of AI algorithms, again as a replacement for or complement to the typical front or rear camera methodologies. Thus, the systems and methods for vehicle lane marking and other object detection using side fisheye cameras and three-fold de-warping provided herein can be used as a replacement or substitute for conventional front or rear camera methodologies depending upon vehicle operating and camera visibility conditions, or can be used as a verification of or complement to such conventional front or rear camera methodologies.
Thus, the systems/methods provided herein provide a means for de-warping and undistorting images (e.g., 180-degree images and 360-degree images) that enhance the visualizing of lane markings and other objects for a vehicle occupant (e.g., a vehicle driver), as well as the performance of conventional computer vision and ML algorithms.
The vehicle 100 utilizes at least one image capturing device 105.
A fisheye camera lens can produce strong visual distortion in obtained images, including wide panoramic or hemispherical images. Fisheye camera lenses are designed to achieve extremely wide angles of view, but instead of images with straight lines of perspective (i.e., rectilinear images) as obtained by rectilinear camera lenses, fisheye camera lenses use mapping, which gives images a characteristic convex non-rectilinear appearance.
The method performed by the vehicle system for handling images of the surroundings of the vehicle 100, including lane markings and other objects, is described with reference to the flowchart depicted in
Step 301: The vehicle system obtains an initial image 400 of the surroundings of the vehicle 100. The image 400 is obtained from at least one image capturing device 105 mounted in or on the vehicle 100. The image capturing device 105 includes a fisheye camera lens, and therefore the obtained image can be referred to as a fisheye camera image. The image 400 can be obtained by receiving it directly from the image capturing device 105. In another embodiment, the image capturing device 105 captures the image 400 and stores it in a memory, and then the vehicle system obtains the image 400 from the memory. The image may be obtained upon request from the vehicle system, on a periodic basis, or continuously. As described herein above, the initially obtained image 400 includes distortions. The image 400 can be of at least 180 degrees of the surroundings of the vehicle 100, for example. The image capturing device 105 can be a fisheye camera accordingly.
Step 302: The vehicle system then corrects at least a part of the distortions in the image 400 to obtain a corrected image. This correcting process can also be referred to as de-warping or base de-warping. A base de-warp can be carried out by any appropriate camera calibration algorithms or models executed by the vehicle system that obtains a mapping from warped coordinates to de-warped coordinates, as well as the intrinsic parameters of the image capturing device 105. De-warping can be described as correcting the obtained image 400 to reverse the effects of geometric distortions caused by the image capturing device 105, e.g., the fisheye camera lens of the mage capturing device 105.
Step 303: The vehicle system rotationally transforms the corrected image using a first rotational transformation to obtain a first transformed image 403.
Step 304: The vehicle system rotationally transforms the corrected image using a second rotational transformation to obtain a second transformed image 405. The first and second rotational transformations are different from each other, in that the first and second transformed images 403, 405 are preferably consecutive images. The term “consecutive images” can refer to images that are following, sequential, serial, succeeding, adjacent, etc. For example, the first transformed image 403 and the second transformed image 405 are consecutive in that the first transformed image 403 represents the right part of the obtained image and the second transformed image 405 represents the left part of the obtained image. When the two transformed images 403, 405 are placed together, they form one image which corresponds to the obtained image, but instead it provides an undistorted image relative to the initial image 400.
The first transformed image 403 can be mapped on one planar surface and the second transformed image 405 can be mapped on another planar surface, as illustrated in
Steps 303 and 304 can be referred to as a two-fold mapping, where two rotational transformations are applied separately after the base de-warp. This generates two different views. The amount of rotation applied in each rotational transformation is set or can be adjusted such that the de-warped images look natural and as if they are captured by two cameras facing different directions or having different orientations. The structure of the two-fold is demonstrated in
Step 305: The vehicle system can remove redundant overlapping areas from at least one of the first and second transformed images 403, 405. This step includes applying appropriate cropping to remove part of the redundant overlapping areas between the first and second transformed images 403, 405. This step can also remove a part of any highly distorted areas (usually at the edges of the views). Some overlapping areas may be preserved between the first and second transformed images 403, 405 to allow for potential stitching/porting of algorithm results between the first and second transformed images 403, 405.
The first and second transformed images 403, 405 (possibly also after removal of the redundant overlapping areas) can be referred to as the resulting undistorted, de-warped images. The resulting undistorted, de-warped images allow for more natural and understandable views in at least two directions defined by the planar surfaces.
Step 306: The vehicle system can provide the first and second transformed images 403, 405 as input to another vehicle system for further processing. Such other vehicle system may be, for example, a lane detection system, a vehicle detection system, a crash avoidance system, an AD system, etc. The first and second transformed images 403, 405 allow for “general” ML/computer vision algorithms/models to be applied by the vehicle system or by other vehicle systems. Here, “general” algorithms/models may refer to those designed for and/or trained on images that are usually captured by standard cameras, i.e., non-fisheye/non-omnidirectional cameras.
Step 307: The vehicle system can display at least one of the first and second transformed images 403, 405 to a vehicle occupant. In one embodiment, all transformed images 403, 405 can be displayed on a display screen in the vehicle 100 at the same time. In another embodiment, one image 403, 405 can be displayed at a time, and the vehicle occupant can then switch between the different images.
The method of
The original images before three-fold de-warping (i.e., before steps 302-307) are shown in
In both
The embodiments provided herein aim at achieving undistorted images without losing much field of view of the image capturing device 105, so that the images can be better used by both vehicle occupants (e.g., users 110) and vehicle systems (e.g., AI/ML/computer vision algorithms for DA and AD).
Steps 302, 303, and 304 will now be described in more detail using three rotational transformations as an example.
Step 302: The base de-warp can be described as the process of estimating a set of intrinsic related parameters K, ξ and D, as well as a set of extrinsic related parameters r and t, from a set of images containing a calibration pattern, such as a chessboard. Here, K is a generalized image capturing device matrix, ξ is a single value parameter, D includes the distortion coefficients, and r and t characterize rotations and translations between the set of images and the image capturing device 105, respectively. K, ξ and D are used to undistort the images taken by the image capturing device 105. The image capturing device matrix for the rectified images Knew is usually a scaled identity matrix.
Steps 303 and 304: A rotational transformation is applied after the base de-warp in step 302 by multiplying a rotational matrix R with the image capturing device matrix for rectified images Knew:
KR=Knew·R
The new image capturing device matrix KR replaces Knew, and is used together with the previous K, ξ and D to obtain the rotated views of the undistorted images (i.e., the first, second, and third transformed images 403,405,408).
Here, the rotational transformation can be decomposed into three rotational transformations around x (horizontal), y (vertical), and z (optical axis of the fisheye camera lens in the image capturing device 105) axes.
For the left fold among the three-fold de-warps (the angles are in radians):
θx=0
θy∈[0.65,0.95]
θz∈[0.4,0.7]
For the center fold among the three-fold de-warps (the angles are in radians):
θx∈[0,0.3]
θy=0
θz=0
For the right fold among the three-fold de-warps (the angles are in radians):
θx=0
θy∈[−0.95,−0.65]
θz∈[−0.7,−0.4]
To perform the method steps shown in
The vehicle system is adapted to, e.g., by means of an obtaining module 901, obtain an image of the surroundings of the vehicle 100. The image is obtained from at least one image capturing device 105 mounted on/to the vehicle 100. The image capturing device 105 includes a fisheye camera lens. The image can be of at least 180 degrees of the surroundings of the vehicle 100. The image capturing device 105 can be a fisheye camera. The obtaining module 901 can also be referred to as an obtaining unit, an obtaining means, an obtaining circuit, means for obtaining, etc. The obtaining module 901 can be comprised in a processor 903 of the vehicle system. In some embodiments, the obtaining module 901 can be referred to as a receiving module.
The vehicle system is adapted to, e.g., by means of a correcting module 905, correct at least a part of distortions in the image to obtain a corrected image. The correcting module 905 can also be referred to as a correcting unit, a correcting means, a correcting circuit, means for correcting, etc. The correcting module 905 can be comprised in the processor 903 of the vehicle system.
The vehicle system is adapted to, e.g. by means of a transforming module 908, rotationally transform the corrected image using a first rotational transformation to obtain a first transformed image. The transforming module 908 may also be referred to as a transforming unit, a transforming means, a transforming circuit, means for transforming etc. The transforming module 908 may be or comprised in the processor 903 of the vehicle system.
The vehicle system is adapted to, e.g., by means of the transforming module 908, rotationally transform the corrected image using a second rotational transformation to obtain a second transformed image. The first and second rotational transformations are different from each other, in that the first and second transformed images are consecutive or adjacent images. The first transformed image can be mapped on one planar surface and the second transformed image can be mapped on another planar surface.
The vehicle system can be adapted to, e.g., by means of a removing module 910, remove redundant overlapping areas from at least one of the first and second transformed images. The removing module 910 can also be referred to as a removing unit, a removing means, a removing circuit, means for removing, etc. The removing module 910 can be comprised in the processor 903 of the vehicle system.
The vehicle system can be adapted to, e.g., by means of a providing module 913, provide the first and second transformed images as input to another vehicle system for further processing. The providing module 911 can also be referred to as a providing unit, a providing means, a providing circuit, means for providing, etc. The providing module 913 can be comprised in the processor 903 of the vehicle system. In some embodiments, the providing module 913 can be referred to as a transmitting module.
The vehicle system can be adapted to, e.g., by means of a displaying module 915, display at least one of the first and second transformed images to a user 110 of the vehicle 100. The images can be displayed on a display in the vehicle 100. The displaying module 915 can also be referred to as a displaying unit, a displaying means, a displaying circuit, means for displaying, etc. The displaying module 915 can be comprised in the processor 903 of the vehicle system.
In some embodiments, the vehicle system includes the processor 903 and a memory 918. The memory 918 stores instructions executable by the processor 903. The memory 918 can include one or more memory units. The memory 918 is arranged to be used to store data, received data streams, power level measurements, images, parameters, distortion information, transformation information, vehicle information, vehicle surrounding information, threshold values, time periods, configurations, schedulings, and applications to perform the methods herein when being executed by the vehicle system.
The embodiments herein for handling images of the surroundings of a vehicle 100 can thus be implemented through one or more processors, such as a processor 903 in the vehicle system arrangement depicted in
Those skilled in the art will also appreciate that the obtaining module 901, the correcting module 905, the transforming module 908, the removing module 910, the providing module 913, and the displaying module 915 described above can refer to a combination of analog and digital circuits, and/or one or more processors configured with software and/or firmware, e.g., stored in a memory, that when executed by the one or more processors, such as the processor 903, perform as described above. One or more of these processors, as well as the other digital hardware, can be included in a single ASIC, or several processors and various digital hardware can be distributed among several separate components, whether individually packaged or assembled into a system-on-a-chip (SoC).
The following terminologies are used interchangeably herein: “de-warping”, “undistortion”, and “mapping”. These all describe the process of some geometric transformation of an image, usually from the two-dimensional (2D) images captured by the image capturing device 105 to at least two planar images that do not have distortion effects introduced by the image capturing device 105.
“Computer vision and machine learning algorithms” refer to general algorithms that use images captured by the image capturing device 105 as input, and output decisions that are relevant for DA and/or AD, based on machine learning/artificial intelligence technology. Some examples are lane marking detection, vehicle detection, pedestrian detection, distance measurement, etc.
Directions as used herein, e.g., horizontal, vertical, and lateral relate to when the vehicle system is mounted in the vehicle 100, which stands on essentially flat ground. The vehicle system can be manufactured, stored, transported, and sold as a separate unit. In that case, the directions may differ from when mounted in the vehicle 100.
The present invention thus provides systems and methods for vehicle lane marking and other object detection using side fisheye cameras and three-fold de-warping. Three-fold de-warping is applied to a side fisheye camera image to create straight, rectilinear side, front, and rear camera images that are readily displayed and understood by a vehicle occupant and/or processed as a suitable dataset for an AI algorithm in a DA or AD system. This three-fold de-warping of the side fisheye camera image preserves field of view, such that all surrounding lane markings and other objects can be viewed and/or detected. Advantageously, the side fisheye camera image is typically not obscured by low-standing sun or glare conditions (at least not on both sides of a vehicle), and can be used when the vehicle is traveling towards or away from the sun or glare source, as a replacement for or complement to the typical front or rear camera methodologies. The three-fold de-warped, straight, rectilinear side, front, and rear camera images obtained from the side fisheye camera image are ideally suited for use as a dataset for any variety of AI algorithms, again as a replacement for or complement to the typical front or rear camera methodologies. Thus, the systems and methods for vehicle lane marking and other object detection using side fisheye cameras and three-fold de-warping provided herein can be used as a replacement or substitute for conventional front or rear camera methodologies depending upon vehicle operating and camera visibility conditions, or can be used as a verification of or complement to such conventional front or rear camera methodologies.
Although the present invention is illustrated and described herein with reference to preferred embodiments and specific examples thereof, it will be readily apparent to those of ordinary skill in the art that other embodiments and examples can perform similar functions and/or achieve like results. All such equivalent embodiments and examples are within the spirit and scope of the present invention, are contemplated thereby, and are intended to be covered by the following non-limiting claims for all purposes.
The present patent application/patent is a continuation-in-part (CIP) of co-pending U.S. patent application Ser. No. 16/158,829, filed on Oct. 12, 2018, and entitled “METHOD AND SYSTEM FOR HANDLING IMAGES,” the contents of which are incorporated in full by reference herein.
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20200117918 A1 | Apr 2020 | US |
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Parent | 16158829 | Oct 2018 | US |
Child | 16264727 | US |