Pandrol track fastener defect detection based on local convolutional neural networks

Author:

Ma Anqi1,Lv Zhaomin1ORCID,Chen Xingjie1,Li Liming1,Qiu Yijin1,Zheng Shubin1,Chai Xiaodong1

Affiliation:

1. School of Urban Railway Transportation, Shanghai University of Engineering Science, Shanghai, China

Abstract

The Pandrol track fastener image is composed of two parts: track fastener clip sub-graph and track fastener bolt sub-graph. However, the detection of track fastener clip defect can be realized by track fastener image and track fastener image cannot effectively detect whether the bolt is loose. When the convolutional neural network is used to extract whole picture features and detect, many bolt features unrelated to the clips will be obtained, thereby resulting in a high false alarm rate. To solve these problems, a method based on local convolutional neural network to detect the Pandrol track fastener defects is proposed. First, the algorithm for automatic segmentation of track fastener pictures was used to divide the picture of the Pandrol track fastener into two sub-pictures, one sub-picture is the track fastener bolt and the other sub-picture is the track fastener clip. Second, convolutional neural network was used to detect the track fastener clip pictures. The influence of bolt features unrelated to clips on clips detection can be avoided through image segmentation for local feature extraction, thereby reducing the false alarm rate. Finally, the validity of the proposed method is verified using real Pandrol track fastener images.

Funder

Shanghai Sailing Program

Science and Technology Commission of Shanghai Municipality

National Natural Science Foundation of China

Publisher

SAGE Publications

Subject

Mechanical Engineering,Control and Systems Engineering

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