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Rotation Invariant Local Binary Pattern Based On Glcm For Fluorescent Tube Defects Classification

机译:基于Glcm的旋转不变局部二值模式用于荧光灯管缺陷分类

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In this paper, a machine vision system is developed for fluorescent tube defects classification, a new rotation invariant method is presented for texture analysis. The objective of research is to study a new texture analysis method and classify the surface defects of fluorescent tubes. Tri-phosphor fluorescent powder is sprayed onto the surface of glass tube; some defective products are made during the spraying process, how to find and classify them are important. In this research, the characteristics of fluorescent tube are studied; an algorithm of rotation invariant is presented to find the differences between the defects. In the algorithm, GLCM (Gray-Level Co-occurrence Matrices) is calculated to get the orientation of defect, LBP (Local Binary pattern) vector is got along the orientation, then the detects are classified according to the combined features and distance formulas. The experiment results show that the new method is more convenient and effective to classify typical defects.
机译:本文开发了一种用于荧光灯管缺陷分类的机器视觉系统,提出了一种新的旋转不变方法进行纹理分析。研究的目的是研究一种新的纹理分析方法并对荧光灯管的表面缺陷进行分类。将三基色荧光粉喷涂到玻璃管表面。在喷涂过程中会产生一些有缺陷的产品,如何找到它们并对其进行分类非常重要。在这项研究中,研究了荧光灯管的特性。提出了一种旋转不变算法,以找出缺陷之间的差异。该算法通过计算灰度共生矩阵GLCM来确定缺陷的方向,沿着该方向获得LBP(局部二值模式)矢量,然后根据组合特征和距离公式对检测结果进行分类。实验结果表明,新方法对典型缺陷进行分类更方便,有效。

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