2023
DOI: 10.3390/s23187894
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FS-RSDD: Few-Shot Rail Surface Defect Detection with Prototype Learning

Yongzhi Min,
Ziwei Wang,
Yang Liu
et al.

Abstract: As an important component of the railway system, the surface damage that occurs on the rails due to daily operations can pose significant safety hazards. This paper proposes a simple yet effective rail surface defect detection model, FS-RSDD, for rail surface condition monitoring, which also aims to address the issue of insufficient defect samples faced by previous detection models. The model utilizes a pre-trained model to extract deep features of both normal rail samples and defect samples. Subsequently, an … Show more

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