Image Texture Feature Extraction Method Based on Regional Average Binary Gray Level Difference Co-occurrence Matrix

Jian Yang, Jingfeng Guo
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引用次数: 15

Abstract

Texture feature is a measure method about relationship among the pixels in local area, reflecting the changes of image space gray levels. This paper presents a texture feature extraction method based on regional average binary gray level difference co-occurrence matrix, which combined the texture structural analysis method with statistical method. Firstly, we calculate the average binary gray level difference of eight-neighbors of a pixel to get the average binary gray level difference image which expresses the variation pattern of the regional gray levels. Secondly, the regional co-occurrence matrix is constructed by using these average binary gray level differences. Finally, we extract the second-order statistic parameters reflecting the image texture feature from the regional co-occurrence matrix. Theoretical analysis and experimental results show that the image texture feature extraction method has certain accuracy and validity.
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基于区域平均二值灰度差共生矩阵的图像纹理特征提取方法
纹理特征是一种局部区域像素之间关系的度量方法,反映了图像空间灰度级的变化。提出了一种基于区域平均二值灰度差共现矩阵的纹理特征提取方法,将纹理结构分析方法与统计方法相结合。首先,计算像素的8个相邻点的平均二值灰度差,得到表达区域灰度变化规律的平均二值灰度差图像;其次,利用这些平均二值灰度差构造区域共现矩阵;最后,从区域共现矩阵中提取反映图像纹理特征的二阶统计参数。理论分析和实验结果表明,该图像纹理特征提取方法具有一定的准确性和有效性。
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