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Traffic target detection and identificationrecognition method self-adaptive to scene change

A technology for scene change and target detection, applied in the fields of computer vision and target detection, it can solve the problems of poor lighting conditions and low model accuracy, and achieve the effect of reducing initial error, accelerating model convergence, and real-time and efficient detection.

Inactive Publication Date: 2019-09-20
魏运 +1
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AI Technical Summary

Problems solved by technology

These two ideas can solve the problem of low model accuracy caused by poor lighting conditions to a certain extent, but they cannot solve the problem fundamentally.

Method used

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  • Traffic target detection and identificationrecognition method self-adaptive to scene change
  • Traffic target detection and identificationrecognition method self-adaptive to scene change
  • Traffic target detection and identificationrecognition method self-adaptive to scene change

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Embodiment Construction

[0071] The present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments.

[0072] Such as figure 1 As shown, a traffic target detection and recognition method adaptive to scene changes, specifically implemented according to the following steps:

[0073] (1) Build a data set dedicated to road traffic

[0074] The dataset consists of three parts: a traffic scene graph, a label file, and an index of images for training and testing. In order to ensure the diversity of data, this experiment selected road traffic video data from different scenes and different angles as training materials, and intercepted an image every 40 frames to construct a data image exclusive to road traffic. Each scene will contain a label file, which includes the name of the current picture; the width, height, and bit depth of the picture; the target category contained in the picture; the minimum bounding box of the target (the coordinates of the...

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Abstract

A traffic target detection and identification method adaptive to scene change comprises the following steps: 1) constructing an input data set exclusive to road traffic, the input data comprising images of a color traffic scene, label files corresponding to the images, and indexes of pictures for training and testing; 1.1) for the image, calculating the contrast of the image, performing de-lighting enhancement processing on the image with low contrast, and highlighting the edge and contour information of the target; 1.2) for the label file corresponding to the image, determining the size of a target contained in the label file in the training data and the distribution rule of the target by using a statistical and dimensional clustering method; 2) enabling the enhanced image to enter an improved neural network, and generating feature maps with different scales; 3) on the generated feature map, modifying the proportion and the size of a preselected box in the neural network according to the statistical and dimensional clustering results in the step 1.2) to generate the preselected box; and 4) inhibiting and screening an output result through a non-maximum value, subtracting a prediction result from a true value in the tag file to calculate a loss function, carrying out back propagation on an error, and updating a neural network parameter.

Description

[0001] Technical field: [0002] The invention belongs to the fields of computer vision and target detection, and more particularly relates to a traffic target recognition method for solving adaptive scene changes. [0003] technical background: [0004] With the continuous advancement of technology and the enhancement of computer computing power, more and more object detection algorithms based on deep learning are applied to vehicle detection. In the face of daily poor light conditions such as rainy and dim, existing algorithms often have problems of missed detection and false detection. At present, there are two main ideas to solve this problem. One is to supplement the training samples so that the model has better generalization ability to adapt to scenes under different lighting conditions; the other is to increase the complexity of the training network so that It extracts deep features from training samples. These two ideas can solve the problem of low model accuracy cau...

Claims

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Application Information

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IPC IPC(8): G06K9/00G06T5/00G06K9/62
CPCG06T2207/10024G06T2207/20192G06V20/54G06V2201/07G06F18/24G06F18/214G06T5/80
Inventor 魏运田青仝淑贞
Owner 魏运
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