Image Generation and Recognition for Railway Surface Defect Detection

Author:

Xia Yuwei1,Han Sang Wook2,Kwon Hyock Ju1

Affiliation:

1. Department of Mechanical and Mechatronics Engineering, University of Waterloo, 200 University Avenue West, Waterloo, ON N2L 3G1, Canada

2. Department of Automotive Engineering, Shinhan University, 95, Hoam-ro, Uijeongbu-si 11644, Republic of Korea

Abstract

Railway defects can result in substantial economic and human losses. Among all defects, surface defects are the most common and prominent type, and various optical-based non-destructive testing (NDT) methods have been employed to detect them. In NDT, reliable and accurate interpretation of test data is vital for effective defect detection. Among the many sources of errors, human errors are the most unpredictable and frequent. Artificial intelligence (AI) has the potential to address this challenge; however, the lack of sufficient railway images with diverse types of defects is the major obstacle to training the AI models through supervised learning. To overcome this obstacle, this research proposes the RailGAN model, which enhances the basic CycleGAN model by introducing a pre-sampling stage for railway tracks. Two pre-sampling techniques are tested for the RailGAN model: image-filtration, and U-Net. By applying both techniques to 20 real-time railway images, it is demonstrated that U-Net produces more consistent results in image segmentation across all images and is less affected by the pixel intensity values of the railway track. Comparison of the RailGAN model with U-Net and the original CycleGAN model on real-time railway images reveals that the original CycleGAN model generates defects in the irrelevant background, while the RailGAN model produces synthetic defect patterns exclusively on the railway surface. The artificial images generated by the RailGAN model closely resemble real cracks on railway tracks and are suitable for training neural-network-based defect identification algorithms. The effectiveness of the RailGAN model can be evaluated by training a defect identification algorithm with the generated dataset and applying it to real defect images. The proposed RailGAN model has the potential to improve the accuracy of NDT for railway defects, which can ultimately lead to increased safety and reduced economic losses. The method is currently performed offline, but further study is planned to achieve real-time defect detection in the future.

Funder

Transport Canada

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference30 articles.

1. (2021, October 31). Annual Report. Available online: https://media.viarail.ca/sites/default/files/publications/2019%20VIA%20RAIL%20AR_ENGLISH.pdf.

2. (2022, March 10). Our World in Data. Available online: https://ourworldindata.org/grapher/railways-passengers-carried-passenger-km?time=latest.

3. (2021, October 31). Rail Transportation Occurrences in 2020—Statistical Summary—Transportation Safety Board of Canada. Available online: https://www.bst-tsb.gc.ca/eng/stats/rail/2020/sser-ssro-2020.html#1.0.

4. (2021, October 31). Nordco Rail Flaw Defects Identification Handbook. Available online: https://www.nordco.com/Media/Assets/General-Files/NordcoRailFlawDefectsIdentificationHandbook.pdf.

5. Defects in rails;Mishra;Sadhana,1986

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