GLCM and its application in pattern recognition

Shruti Singh, Divya Srivastava, S. Agarwal
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引用次数: 38

Abstract

Grey Level Co-Occurrence matrix is one of the oldest techniques used for texture analysis. The Grey Level Co-Occurrence matrix has two important parameters i.e. distance and direction. In this paper various combinations of distance and directional angles used for GLCM calculation are analyzed in order to recognize certain patterned images based on their textural features. Patterns considered in this paper are horizontally striped, vertically striped, right diagonally striped, left diagonally striped, checkered and irregular. Our proposed method has achieved a percentage accuracy of 96, 98, 96, 90, 96 and 94 for horizontally striped, vertically striped, right diagonally striped, left diagonally striped, checkered and irregular patterns respectively. Thus an overall percentage accuracy of 95 is achieved for pattern recognition using GLCM.
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GLCM及其在模式识别中的应用
灰度共生矩阵是用于纹理分析的最古老的技术之一。灰度共生矩阵有两个重要参数,即距离和方向。本文分析了用于GLCM计算的距离和方向角的各种组合,以便根据纹理特征识别特定的图案图像。本文考虑的图案有水平条纹、垂直条纹、右对角线条纹、左对角线条纹、方格和不规则。该方法对水平条纹、垂直条纹、右对角线条纹、左对角线条纹、方格和不规则图案的准确率分别达到了96%、98%、96%、90%、96%和94%。因此,使用GLCM进行模式识别的总体百分比准确率为95%。
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