A Headlight Control System For A Motor Vehicle And A Method Of Training A Machine Learning Model For A Headlight Control System

20220161713 · 2022-05-26

Assignee

Inventors

Cpc classification

International classification

Abstract

A headlight control system (10) for a motor vehicle including, a controllable headlight (24) adapted to generate variable illumination of the vehicle environment, an imaging apparatus (11) adapted to capture images (100) from a region in front of the motor vehicle, and a data processing device (14) adapted to perform image processing of images (100) captured by the imaging apparatus (11) and to vary the light characteristics of the controllable headlight (24) depending on the image processing. A machine learning model (27) is implemented in the data processing device (14) which is trained to estimate and output an output signal (29) representing a desired illumination of the vehicle environment from one or more images (28) received as input from the imaging apparatus (11).

Claims

1. A headlight control system for a motor vehicle, comprising a controllable headlight adapted to generate variable illumination of the vehicle environment, an imaging apparatus adapted to capture images from a region in front of the motor vehicle, and a data processing device adapted to perform image processing of images captured by the imaging apparatus and to vary the light characteristics of the controllable headlight depending on the image processing, a machine learning model is implemented in the data processing device which is trained to estimate and output an output signal representing a desired illumination of the vehicle environment from one or more of the images received as an input from the imaging apparatus.

2. The headlight control system as claimed in claim 1, further comprising in that the machine learning model is a convolutional neural network or a recurrent neural network.

3. The headlight control system as claimed in claim 1, wherein the output signal comprises a desired illumination profile.

4. The headlight control system as claimed in claim 3, wherein the desired illumination profile is defined as an upper vertical illumination angle per horizontal angular section.

5. The headlight control system as claimed in claim 3, wherein the desired illumination profile is defined as a curve delimiting a desired area of illumination in an image.

6. The headlight control system as claimed in claim 1, wherein the output signal comprises a desired distance profile, wherein the distance profile is defined as an illumination distance per angular section.

7. The headlight control system as claimed in claim 1, wherein the output signal comprises a desired per-pixel intensity map.

8. The headlight control system as claimed in claim 1, wherein the output signal is transmitted to a headlight controller generating a headlight adjustment signal, wherein the headlight adjustment signal is fed back to the machine learning model.

9. The headlight control system as claimed in claim 1, wherein the machine learning model is adapted to process individually different parts of an input image in order to provide local contributions to the desired illumination in the output signal from different parts of the field of view of the imaging apparatus.

10. A method of training a machine learning model for a headlight control system as claimed in claim 1, wherein the machine learning model is trained in a supervised manner using a ground truth training data set specifying the output signal for each of the input samples in the training data set.

11. The method as claimed in claim 10, wherein the ground truth training data set comprises one or more of the images, and the ground truth data is generated by manual annotation of the one or more images.

12. The method as claimed in claim 10, wherein the ground truth training data set comprises annotations in the form of a curve delimiting the desired illumination.

13. The method as claimed in claim 10, wherein the ground truth training data set is generated using object detections from an existing object detection system or an object tracker to track detected objects, to a point beyond the initial detection range.

14. The method as claimed in claim 10, wherein the ground truth training data set is generated using semi-automatic annotations using output from an existing headlight control system or an object detection system.

15. The method as claimed in claim 10, wherein the ground truth training data set is generated using a recording of a manual high beam control signal.

Description

BRIEF DESCRIPTION OF THE DRAWINGS

[0022] In the following the invention shall be illustrated on the basis of preferred embodiments with reference to the accompanying drawings, wherein:

[0023] FIG. 1 shows a schematic arrangement of a headlight control system;

[0024] FIG. 2 shows a flow diagram illustrating headlight control according the invention;

[0025] FIG. 3 shows an image with a curve delimiting a desired area of illumination; and

[0026] FIG. 4 shows a flow diagram illustrating training a machine learning model for a headlight control system.

DETAILED DESCRIPTION

[0027] The headlight control system 10 is to be mounted in or to a motor vehicle and includes an imaging apparatus 11 for capturing images of a region surrounding the motor vehicle, for example a region in front of the motor vehicle. The imaging apparatus 11 may be mounted for example behind the vehicle windscreen or windshield, in a vehicle headlight, or in the radiator grille. Preferably the imaging apparatus 11 includes one or more optical imaging devices 12, in particular cameras, preferably operating in the visible wavelength range, in the infrared wavelength range, or in both visible and infrared wavelength range, where infrared covers near IR with wavelengths below 5 microns and/or far IR with wavelengths beyond 5 microns. In some embodiments the imaging apparatus 11 includes a plurality of imaging devices 12 in particular forming a stereo imaging apparatus 11. In other embodiments only one imaging device 12 forming a mono imaging apparatus 11 can be used.

[0028] The imaging apparatus 11 is coupled to an on-board data processing device 14 adapted to process the image data received from the imaging apparatus 11. The data processing device 14 is preferably a digital device which is programmed or programmable and preferably includes a microprocessor, a microcontroller, a digital signal processor (DSP), and/or a microprocessor part in a System-On-Chip (SoC) device, and preferably has access to, or includes, a digital data memory 25. The data processing device 14 may be provided as a dedicated hardware device, like a Field Programmable Gate Array (FPGA), an Application Specific Integrated Circuit (ASIC), a Graphics Processing Unit (GPU) or an FPGA and/or ASIC and/or GPU part in a System-On-Chip (SoC) device, for performing certain functions, for example controlling the capture of images by the imaging apparatus 11, receiving the electrical signal containing the image information from the imaging apparatus 11, rectifying or warping pairs of left/right images into alignment and/or creating disparity or depth images. The data processing device 14, or part of its functions, can be realized by a System-On-Chip (SoC) device including, for example, FPGA, DSP, ARM, GPU and/or microprocessor functionality. The data processing device 14 and the memory device 25 are preferably realised in an on-board electronic control unit (ECU) and may be connected to the imaging apparatus 11 via a separate cable or a vehicle data bus. In another embodiment the ECU and one or more of the imaging devices 12 can be integrated into a single unit, where a one box solution including the ECU and all imaging devices 12 can be preferred. All steps from imaging, image processing to possible activation or control of a safety device 18 are performed automatically and continuously during driving in real time.

[0029] The invention is applicable to autonomous driving, where the ego vehicle is an autonomous vehicle adapted to drive partly or fully autonomously or automatically, and driving actions of the driver are partially and/or completely replaced or executed by the ego vehicle.

[0030] The headlight control system 10 includes one or more, for example two headlights 24 with at least one light source 20. Preferably, each headlight 24 is dynamically adjustable, i.e. the light profile of at least one light source 20 including the angular distribution and/or the intensity of the emitted light can be changed over time by an adjustment device 21 and controlled by a headlight controller 23. The headlight controller 23 can be part of the processing device 14 or a separate processing device and part of the same ECU with the processing device 14, or a different ECU. The imaging apparatus 11 is preferably directed in approximately the same direction as the headlights 24, such that the field of view of the imaging apparatus 11 and the illumination region of the headlights 24 at least partially overlap.

[0031] The adjustment device 21 may be adapted to adjust the corresponding light source 20 in such a manner that the light beam or light cone 25 emitted by the headlight 24 is moved in a lateral direction and/or in a vertical direction or any other direction, as indicated by the arrows at the side of the light cones 25. The adjustment device 21 can be adapted to turn the complete headlight 24, to block or shield different parts of the light beam 25, to move one or more optical elements within the headlight 24, to change optical properties of one or more optical elements within the headlight 24, or any other suitable mechanism. The adjustable headlight 24 may be an advanced lighting system, in particular based on LEDs, which can shape the light beam 25 around the oncoming vehicle without dazzling the oncoming driver.

[0032] The adjustment device 21 may be adapted to perform high beam control, i.e. to turn on and off the high beam included in the headlight 24 automatically as controlled by a high beam controller 26. The high beam controller 26 is preferably part of the headlight controller 23, but may also be a separate part.

[0033] As will be described in the following in more detail with respect to FIG. 2, the headlight controller 23 and/or the high beam controller 26, and thus the adjustment devices 21 for the headlights 24, are controlled during driving by the data processing device 14 on the basis of results obtained from data processing of the images received from the imaging apparatus 11. This is also called dynamic headlight control. Therefore, the data processing device 14 together with the headlight controller 23 and/or the high beam controller 26 forms a dynamic headlight control device or controller.

[0034] According to the invention, a machine learning model 27, for example a convolutional neural network, is implemented in the processing device 14. The machine learning model 27 has been trained in a training phase prior to implementing it in the processing device 14, to directly estimate and output a headlight control signal and/or the desired illumination profile 29, from one or more entire images 28 received from the imaging apparatus 11 and input into the machine learning model 27. The training process will be described in more detail later with respect to FIG. 4.

[0035] During driving of the host vehicle, an image 28 or a plurality of images 28 captured by the imaging apparatus 11 are input to the machine learning model 27. The machine learning model 27 is capable of outputting an output signal 29 including a representation of a desired illumination of the vehicle environment by the headlights 24. The representation is for example a curve 41 delimiting a desired area of illumination in an image 40. As can be seen in FIG. 3, the curve 41 is determined in a manner that the road 42, in particular the ego lane 43 and a region 45 at the road edge 44 of the ego lane 43, where pedestrians, bicyclists and/or large animals may be expected, is well illuminated, however, without dazzling the driver of an oncoming vehicle 46. The curve 45 usually is an excellent approximation to the illumination profile, i.e. an upper vertical illumination angle per horizontal angular section. Usually, the region below the curve 41 can be well illuminated with high intensity, whereas the region above the curve 41 shall not be illuminated, or only with low intensity not dazzling the driver of an oncoming vehicle 46.

[0036] The output signal 29 is forwarded to a headlight controller 23 which in turn sends a headlight control signal 30 to the headlights 24, in particular the headlight adjusting section 21 thereof. The headlight control signal 30 adjusts the headlights 24 in a manner that the region below the curve 41 is well illuminated and the region above the curve 41 is not, or only sparsely, illuminated. This includes possible automatic dim-out or switching off of the high beam in the headlights 12.

[0037] The training of the machine learning model 27 is described in the following with respect to FIG. 4. A large set of training images 50 is generated, for example with an imaging apparatus 51, which may preferably be similar or even identical to the imaging apparatus 11 of the vehicle where the machine learning model 27 is implemented. The set of training images 50 preferably covers an extensive range of light conditions which may occur in motor vehicle traffic.

[0038] All training images 50 are annotated by a human annotator 52. The annotations preferably include an appropriate illumination profile for every training image 50 as estimated by the human annotator 52. For example, the human annotator 52 may draw a curve 41 in every training image 50 such that the region below the curve 41 should be well illuminated and the region above the curve 41 is not, or only sparsely, illuminated, according to the best estimation of the human annotator. The set of training images 50 together with the corresponding annotations, for example curves 41, forms an annotated or ground truth data set 53 of training images. The ground truth data set 53 of training images is input into the machine learning model 27 which can learn from this input to output an appropriate illumination profile for an arbitrary input image 28, or set of input images 28, when implemented in a motor vehicle.

[0039] While the above description constitutes the preferred embodiment of the present invention, it will be appreciated that the invention is susceptible to modification, variation and change without departing from the proper scope and fair meaning of the accompanying claims.