2022
DOI: 10.33448/rsd-v11i8.30252
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An in-depth assessment of convolutional neural networks for rail surface defect detection

Abstract: The consistent monitoring of rails is based on correctly identifying defects to support corrective measures. Recently, convolutional neural networks (CNN), a deep learning method, have been providing outstanding results for the automatic detection of defects. However, several aspects of CNN-based approaches such as network architecture, transfer learning and processing time remains not fully understood. In this work, we performed an in-depth assessment of ten widely used CNN models with the objective of findin… Show more

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