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Visual recognition of hexagonal headed bolts by comparing ICA to wavelets

机译:通过将ICA与小波进行比较来目视识别六角头螺栓

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In this paper we present vision-based techniques to automatically detect the absence of the fastening bolts that secure the rails to the sleepers. The inspection system uses images from a digital line scan camera installed under a train. This application is part of the most general problem of object recognition. In object recognition as in supervised learning, we often extract new features from original ones for the purpose of reducing the feature space dimensions and achieving better performances. The goal of this paper is to compare two techniques within the context of the hexagonal-headed bolts recognition in railway maintenance. The first technique is Wavelets Transform (WT), the second technique is Independent Component Analysis (ICA), a new method that produces spatially localized and statistically independent basis vector. The coefficients of the new representation in the ICA and WT subspace are supplied as input to a Support Vector Machine (SVM). A SVM classifier analyses the images in order to evaluate the pre-processing technique which could give the highest rate in detecting the presence of the bolts. Results in terms of detection rate and false positive rate are given in the paper.
机译:在本文中,我们提出了基于视觉的技术来自动检测是否存在将导轨固定到轨枕的紧固螺栓。该检查系统使用来自火车下方安装的数字线扫描相机的图像。此应用程序是对象识别最普遍的问题的一部分。在对象识别(如监督学习)中,我们经常从原始特征中提取新特征,以减小特征空间尺寸并获得更好的性能。本文的目的是在铁路维修中六角头螺栓识别的背景下比较两种技术。第一种技术是小波变换(WT),第二种技术是独立分量分析(ICA),这是一种产生空间局部且统计独立的基向量的新方法。 ICA和WT子空间中新表示的系数作为输入提供给支持向量机(SVM)。 SVM分类器对图像进行分析,以评估预处理技术,该技术可以在检测螺栓存在时提供最高的比率。文中给出了检出率和假阳性率的结果。

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