Adaptive Thresholding Based on Co-occurrence Matrix Edge Information

M. Mokji, S. Abu-Bakar
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引用次数: 47

Abstract

In this paper, an adaptive thresholding technique based on gray level co-occurrence matrix (GLCM) is presented to handle images with fuzzy boundaries. As GLCM contains information on the distribution of gray level transition frequency and edge information, it is very useful for the computation of threshold value. Here the algorithm is designed to have flexibility on the edge definition so that it can handle the object's fuzzy boundaries. By manipulating information in the GLCM, a statistical feature is derived to act as the threshold value for the image segmentation process. The proposed method is tested with the starfruit defect images. To demonstrate the ability of the proposed method, experimental results are compared with three other thresholding techniques
基于共现矩阵边缘信息的自适应阈值分割
提出了一种基于灰度共生矩阵(GLCM)的自适应阈值处理模糊边界图像的方法。由于GLCM包含了灰度过渡频率的分布信息和边缘信息,因此对于阈值的计算非常有用。该算法在边缘定义上具有灵活性,可以处理物体的模糊边界。通过操纵GLCM中的信息,导出一个统计特征作为图像分割过程的阈值。用杨桃缺陷图像对该方法进行了验证。为了证明该方法的有效性,将实验结果与其他三种阈值分割技术进行了比较
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