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A vehicle detection and tracking method based on monocular vision

A vehicle detection, monocular vision technology, applied in the direction of instrument, calculation, character and pattern recognition, etc., can solve the problems of poor real-time performance and high anti-interference, so as to reduce the false detection rate, reduce the detection range, improve the real-time performance and The effect of anti-interference

Active Publication Date: 2018-12-28
CHONGQING UNIV OF POSTS & TELECOMM
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Problems solved by technology

[0005] Aiming at the problems of poor real-time performance, anti-interference performance and high false detection rate in the vehicle detection process in the prior art, the present invention provides a method to improve the real-time performance, anti-interference performance and reduce false detection rate of vehicle detection. Vehicle detection and tracking method, the technical solution of the present invention is as follows: a vehicle detection and tracking method based on monocular vision, which includes the following steps: in the detection stage of moving vehicles, 101, the road driving area extraction step: specifically, A1 1. Obtain the image information around the car, remove the region of the image part that does not contain road information, and extract the region of interest; A2, use the adaptive canny edge detection method to detect the entire region of interest extracted in step A1 The edge of the image; A3, then use the Hough transform to detect all straight lines in the image area, and vote for each straight line, and get the straight line with the largest number of votes in this area; A4, set the threshold for the angle of the left and right lane lines, and establish In the polar angle constraint area, the positions of the left and right lane lines are delineated in the polar angle constraint area, and the straight line with the largest number of votes in the polar angle constraint area is selected as the lane line, thereby locating the road driving area;

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  • A vehicle detection and tracking method based on monocular vision
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Embodiment Construction

[0033] Below in conjunction with accompanying drawing, the present invention will be further described:

[0034] figure 1 The flow chart of vehicle detection and tracking in this implementation case, the specific process is as follows: first collect the original video image, use a vehicle detection method that combines multiple features of lane lines, edges, vehicle bottom shadows and textures for vehicle detection, and then detect If it is a new target, it will add a tracking target; if it is not a new target, it will continue to track the original target and output the result.

[0035] Such as figure 2 As mentioned above, the steps of vehicle detection are divided into:

[0036] Step 1: Remove some areas of the image that do not contain road information, select the lower 3 / 5 area as the area of ​​interest of the lane line, and initially extract the area of ​​interest;

[0037] Step 2: In order to ensure the accuracy of the detection results under different lighting condi...

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Abstract

The invention claims a monocular vision-based vehicle detection and tracking method, which belongs to the field of machine vision. The method is as follows: in the vehicle detection stage, use the region of interest extraction, adaptive Canny edge detection and lane line detection to determine the road driving area, and then use the local gray value statistics and the two maximum between-class variance methods to comprehensively use Thresholding method obtains the bottom shadow of the vehicle, and then puts forward a hypothetical vehicle, and then uses the co-occurrence matrix method of texture description to verify the hypothetical vehicle; 1. Whether the search is successful or not and whether the vehicle is out of the boundary or not are three major criteria. Each new target detected twice in a row will be treated as a new tracking target, and the tracking target will be updated continuously. This method can realize vehicle detection and multi-target tracking under dynamic background, and has high real-time performance, accuracy and reliability.

Description

technical field [0001] The invention relates to a method for real-time vehicle detection and tracking in an assisted driving system, belonging to the field of machine vision, in particular to a method for vehicle detection and tracking based on monocular vision. Background technique [0002] When the vehicle is driving on the road, the losses caused by rear-end collision with the vehicle in front or improper avoidance are huge. Using the safety assistance driving system can not only reduce the pressure on the driver, but also give early warning and corresponding measures before the accident occurs , thereby effectively reducing the occurrence of traffic accidents. The vehicle anti-collision warning system in the safety assisted driving system is the most important part of the system. The vehicle anti-collision warning system judges whether there is a vehicle in front by searching the area in front of the road, and locates the vehicle in front if there is a vehicle. The spee...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/00
CPCG06V20/584G06V20/588
Inventor 岑明张艳军王春阳冯辉宗李银国蒋建春
Owner CHONGQING UNIV OF POSTS & TELECOMM
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