LDW false and omitted alarm test method and system based on convolutional neural network

A technology of convolutional neural network and testing method, applied in the field of convolutional neural network-based LDW error and omission test method and test system, which can solve the problem that the road without scale cannot be applied, the result may not meet the standard, and the lack of LDW error and omission Report and other problems, to achieve the effect of fast recognition speed, high speed and high precision

Active Publication Date: 2018-08-24
CHONGQING UNIV
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AI Technical Summary

Problems solved by technology

[0003] Existing LDW tests mostly use manual testing for false positives and false negatives. Human eyes are not accurate enough in judging lane departure, and the test results may not necessarily meet the standard; and some electronic road condition recognition test devices are also based on Tested on roads with road scales, it cannot be applied to roads without scales
[0004] Disadvantages of the existing technology: lack of a method for completely autonomously identifying the distance from the vehicle to the sideline and judging LDW false negatives

Method used

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  • LDW false and omitted alarm test method and system based on convolutional neural network
  • LDW false and omitted alarm test method and system based on convolutional neural network
  • LDW false and omitted alarm test method and system based on convolutional neural network

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Embodiment Construction

[0045] Below in conjunction with accompanying drawing and specific embodiment the present invention is described in further detail:

[0046] Such as figure 1 As shown, a convolutional neural network-based LDW false negative test method, using the following steps:

[0047] S1, setting up the camera, so that the collected image of the camera is the road surface image from the side of the vehicle body to the sideline of the lane;

[0048] S2, set the maximum lateral distance L from one side of the vehicle body to the sideline of the lane, and averagely discretize the maximum lateral distance L into n categories;

[0049] S3, the camera collects a real-time image A during the driving of the car, and inputs the real-time image A to the deep convolutional neural network model, and the deep convolutional neural network model calculates and obtains the actual distance d from the side of the vehicle body to the sideline of the lane at this moment i ,Such as Image 6 shown;

[0050]...

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Abstract

The invention discloses a LDW false and omitted alarm test method based on a convolutional neural network (CNN). The method comprises steps of S1, disposing a camera; S2, setting a maximum lateral distance L, and averagely discretizing the same into n categories; S3, acquiring a real-time image A, inputting the same to a deep CNN model, calculating the actual distance di of a lane line; S4, determining whether a LDW system has false or omitted alarms; and S5, obtaining the misoperation rate of the LDW system. A test system comprises an image acquisition device, an onboard data acquisition mechanism, an analyzer, and an operation processor. The image acquisition device is connected to the analyzer, and the operation processor is connected to the analyzer and the onboard data acquisition mechanism. The method is easy to operate, high in recognition speed and high in recognition precision, applicable to the lanes in various road conditions. The test system can be just provided with the image acquisition device, the onboard data acquisition mechanism, the analyzer and the operation processor in the simplest manner, can fully automatically identify deviations without an extra lane linemark ruler.

Description

technical field [0001] The invention relates to the technical field of automobile driving alarm system testing, in particular to a convolutional neural network-based LDW false-missing-alarm testing method and testing system. Background technique [0002] Lane departure warning system (LDW) refers to the driving assistance system that the system gives the driver an alarm when the vehicle is about to deviate from the predetermined driving track. Especially in today's driverless cars, LDW can play an important role in the direction of the car. Therefore, The correct rate of LDW is very important to the safe driving of the car. [0003] Existing LDW tests mostly use manual testing for false positives and false negatives. Human eyes are not accurate enough in judging lane departure, and the test results may not necessarily meet the standard; and some electronic road condition recognition test devices are also based on The test is carried out on roads with road scales, but it can...

Claims

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Application Information

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IPC IPC(8): G05B23/02G06K9/00
CPCG05B23/0243G05B2219/24065G06V20/588
Inventor 杨为张翔唐小林张书晴
Owner CHONGQING UNIV
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