Improved minimum distance classification with Gaussian outlier detection for industrial inspection

D. Toth, T. Aach
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引用次数: 18

Abstract

A pattern recognition system used for industrial inspection has to be highly reliable and fast. The reliability is essential for reducing the cost caused by incorrect decisions, while speed is necessary for real-time operation. We address the problem of inspecting optical media like compact disks and digital versatile disks. As the disks are checked during production and the output of the production line has to be sufficiently high, the time available for the whole examination is very short, ie, about 1 sec per disk. In such real-time applications, the well-known minimum distance algorithm is often used as classifier. However, its main drawback is the unreliability when the training data are not well clustered in feature-space. Here we describe a method for off-line outlier detection, which cleans the training data set and yields substantially better classification results. It works on a statistical test basis. In addition, two improved versions of the minimum distance classifier, which both yield higher rates of correct classification with practically no speed-loss are presented. To evaluate the results, we compare them to the results obtained using a standard minimum distance classifier, a k-nearest neighbor classifier, and a fuzzy k-nearest neighbor classifier.
基于高斯离群点检测的工业检测改进最小距离分类
用于工业检测的模式识别系统必须具有高可靠性和快速性。可靠性对于降低错误决策所带来的成本至关重要,而速度对于实时操作至关重要。我们解决了检查光盘和数字多功能磁盘等光学介质的问题。由于磁盘是在生产过程中检查的,并且生产线的输出必须足够高,因此整个检查的可用时间非常短,即每个磁盘大约1秒。在这类实时应用中,常用最小距离算法作为分类器。然而,它的主要缺点是当训练数据在特征空间中没有很好地聚类时不可靠。在这里,我们描述了一种离线异常值检测方法,该方法可以清理训练数据集并产生更好的分类结果。它在统计测试的基础上起作用。此外,还提出了两种改进的最小距离分类器,这两种方法都能在几乎没有速度损失的情况下获得更高的正确分类率。为了评估结果,我们将它们与使用标准最小距离分类器、k近邻分类器和模糊k近邻分类器获得的结果进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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