首页|Foreign object detection for railway ballastless trackbeds: A semisupervised learning method

Foreign object detection for railway ballastless trackbeds: A semisupervised learning method

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? 2022 Elsevier LtdThis paper proposes a semisupervised algorithm for detecting foreign objects in ballastless beds based on the improved deep SVDD (Support Vector Data Description) algorithm. First, we use the improved Mask R-CNN algorithm to extract the rail and fastener areas in images, assuming that no foreign object exists in the rail and fastener areas. Second, we deepen the backbone network of the deep SVDD to enhance its ability to extract deep semantics from complex images. We perform pure color coverage processing with different colors and mean blur processing with different blur kernels on the rails and fastener regions extracted by the improved Mask R-CNN. The results show that the AUC (Area Under the Curve) of our improved deep SVDD algorithm is 89.23% and improves the AUC compared to that of the original model by 11.09%.

Ballastless trackbedConvolutional neural networksDeep learningForeign object detectionSemisupervised learning

Chen Z.、Wang Q.、Wang P.、He Q.、Yu T.、Yao J.、Wu Y.、Zhang M.、Liu Q.

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Key Laboratory of High-speed Railway Engineering of Ministry of Education Southwest Jiaotong University

Shanghai Dongfang Maritime Engineering Technology Co. Ltd

China Railway First Survey and Design Institute Group Ltd

2022

Measurement

Measurement

SCI
ISSN:0263-2241
年,卷(期):2022.190
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