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Automatic Fastener Classification and Defect Detection in Vision-Based Railway Inspection Systems

机译:基于视觉的铁路检查系统中的紧固件自动分类和缺陷检测

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摘要

The detection of fastener defects is an important task in railway inspection systems, and it is frequently performed to ensure the safety of train traffic. Traditional inspection is usually operated by trained workers who walk along railway lines to search for potential risks. However, the manual inspection is very slow, costly, and dangerous. This paper proposes an automatic visual inspection system for detecting partially worn and completely missing fasteners using probabilistic topic model. Specifically, our method is able to simultaneously model diverse types of fasteners with different orientations and illumination conditions using unlabeled data. To assess the damages, the test fasteners are compared with the trained models and automatically ranked into three levels based on the likelihood probability. The experimental results demonstrate the effectiveness of this method.
机译:紧固件缺陷的检测是铁路检查系统中的重要任务,并且经常进行以确保火车交通的安全性。传统检查通常由训练有素的工人操作,他们沿着铁路线行走以寻找潜在的风险。但是,手动检查非常缓慢,昂贵且危险。本文提出了一种自动视觉检查系统,该系统使用概率主题模型检测部分磨损和完全缺失的紧固件。具体来说,我们的方法能够使用未标记的数据同时对具有不同方向和照明条件的各种类型的紧固件进行建模。为了评估损坏程度,将测试紧固件与训练有素的模型进行比较,并根据可能性概率将其自动分为三个等级。实验结果证明了该方法的有效性。

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