Fast traffic signboard recognition method based on convolution neural network

A technology of convolutional neural network and traffic signs, applied in neural learning methods, biological neural network models, neural architectures, etc., can solve problems such as single classification, and achieve high recognition rate, fast calculation speed, and fast speed

Inactive Publication Date: 2017-05-17
TIANJIN POLYTECHNIC UNIV
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Problems solved by technology

[0005] In view of this, for the problem of single classification, the convolutional neural network algorithm is used to achieve multi-class target classification. The convolutional neural network algorithm uses the original samples directly as the input of the network, and automatically obtains the most favorable features for classification through a large number of samples; On the basis of its data set, traffic signboards use affine transformation to increase the sample diversity, which improves the recognition rate to a certain extent; in o...

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  • Fast traffic signboard recognition method based on convolution neural network
  • Fast traffic signboard recognition method based on convolution neural network
  • Fast traffic signboard recognition method based on convolution neural network

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[0024] In order to enable your examiners to further understand the structure, features and other purposes of the present invention, the attached preferred embodiments are now described in detail as follows. The described preferred embodiments are only used to illustrate the technical solutions of the present invention, not to limit the present invention. invention.

[0025] Process flow of the present invention such as figure 1 As shown, first, according to the situation in the actual recognition process, the training sample data set after augmentation and optimization is obtained through image transformation; then, the FTSR-CNN network structure is designed and the FTSR-CNN network model is trained; finally, the network model is applied Fast or real-time identification of traffic signs is completed; the specific implementation process of the technical solution of the present invention will be described below in conjunction with the accompanying drawings.

[0026] 1. Prepare...

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Abstract

The invention aims to solve the problems in the existing traffic signboard recognition method that the recognition target falls into a single group and the speed in doing so is slow. The invention, out of this concept, provides a fast traffic signboard recognition method based on convolution neural network, referred to as FTSR-CNN in abbreviation. This method comprises: using the convolution kernel sliding filter extracted characteristics; obtaining the loss of the network in the forward learning process, and ensuring the accuracy of the network model to the recognition of multiple categories of signboards; optimizing the network performances through the adjustment of the parameters, the activation of the function types and the reduction of dimensions for better accuracy and timeliness eventually; and at the same time, in order to make the samples more diverse, conducting data adding and expanding to the samples in the data set based on affine transformation. The recognition rates of the FTSR-CNN for two data set tests of the German traffic signboard data set GTSRB and the Tsinghua-Tencent 100K are recorded as 95.74% and 96.67% respectively. The results indicate that the recognition speed is increased on the same recognition accuracy level through the modification of a previous model network and the start up of different training strategies by the FTSR-CNN.

Description

technical field [0001] The invention relates to a fast recognition method for traffic signboards based on a convolutional neural network, which belongs to the technical field of image processing and can be applied to fast recognition of traffic signboards. Background technique [0002] As an important part of road traffic, traffic signs provide guidance, instructions, warnings and restrictions for drivers with words or symbols. Automatic identification of traffic signs is an integral part of the design of advanced driver assistance systems. Due to the wide variety of traffic signs, they are used in various scenes, and the contrast of sign images decreases with weather changes and lighting effects; physical damage and occlusion affect their inherent shape; motion blur caused by high-speed driving makes the automatic recognition of traffic signs very difficult. How to identify traffic signs quickly and accurately is a big challenge for designers. Several affected signage suc...

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Application Information

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IPC IPC(8): G06K9/00G06N3/04G06N3/08
CPCG06N3/084G06V20/582G06N3/045
Inventor 耿磊梁晓昱肖志涛张芳吴骏杨振杰
Owner TIANJIN POLYTECHNIC UNIV
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