一种新的表面缺陷直方图阈值检测方法

M. H. Karimi, D. Asemani
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引用次数: 4

摘要

机器视觉在各个行业中最重要的应用之一是自动检测。自动检测的性能直接取决于阈值选择的算法。常用的自动阈值分割方法是基于图像直方图的。在以前的方法中,阈值选择是通过将直方图分成两类来实现的。此外,对于没有缺陷的纹理,误诊的可能性也很高。本文提出了一种新的自动阈值统计算法,该算法可以最优地应用于不同类型的表面缺陷。该算法获得了最优阈值,从而提供了最大的类间方差和最小的类内方差。与传统的基于直方图的算法相比,所提出的方法具有更好的性能,特别是在纹理上没有明显的缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel histogram thresholding method for surface defect detection
One of the most important applications of machine vision in various industries is automated inspection. Performance of automated inspection depends directly on the algorithm used for threshold selection. Common methods of automatic thresholding are based on image histogram. In previous methods, the threshold selection has been realized by dividing the histogram into two classes. Also, possibility of misdiagnosis is high especially for the textures without defect. This paper proposes a new statistical algorithm for automatic theresholding which can be optimally applied in the presence of different types of surface defects. The optimum threshold is obtained in the proposed algorithm so that a maximum between-class and minimum within-class variances are provided. Proposed methods demonstrate a better performance compared to classic histogram-based algorithm particularly for the textures without any considerable defects.
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