铁路木质枕木状态分类的模式识别

Siril Yella, Asif Rahman, M. Dougherty
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引用次数: 2

摘要

本文总结了用模式识别方法对铁路木质轨枕状况进行分类的结果。铁路轨枕检查目前是人工完成的;目视检查是最常见的方法,用斧头进行更深入的检查来判断情况。为了弥补人类的视觉能力,研究人员获取了睡眠者的数字图像。采用适当的图像分析技术对图像进行进一步处理,提取出裂纹数量、裂纹长度等必要特征。最后,采用模式识别和分类方法对睡眠者的状态进行了进一步的分类(好与坏)。使用高斯核的支持向量机(SVM)在当前情况下取得了良好的分类率(86%)。
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Pattern recognition for classifying the condition of wooden railway sleepers
This paper summarises the results of using a pattern recognition approach for classifying the condition of wooden railway sleepers. Railway sleeper inspections are currently done manually; visual inspection being the most common approach, with some deeper examination using an axe to judge the condition. Digital images of the sleepers were acquired to compensate for the human visual capabilities. Appropriate image analysis techniques were applied to further process the images and necessary features such as number of cracks, crack length etc have been extracted. Finally a pattern recognition and classification approach has been adopted to further classify the condition of the sleeper into classes (good or bad). A Support Vector Machine (SVM) using a Gaussian kernel has achieved good classification rate (86%) in the current case.
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