2024
DOI: 10.1088/1361-6501/ad9048
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Method for rail surface defect detection based on neural network architecture search

Yongzhi Min,
Qinglong Jing,
Yaxing Li

Abstract: This study addresses the inherent limitations of implementing neural network architecture search algorithms for rail surface defect detection, including low search efficiency and the oversight of edge features on the rail surface. A sophisticated multi-level neural network architecture search framework is proposed that integrates and emphasizes rail surface edge features. The framework utilizes the Z-Score normalization method to quantify the edge concern of rail surface defect samples, combined with an Edge-L… Show more

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