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A Unique Relative Entropy-Based Symmetrical Co-occurrence Matrix Thresholding with Statistical Spatial Information

机译:具有统计空间信息的基于相对熵的唯一对称共现矩阵阈值

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摘要

Thresholding based on gray-gray cooccurrence matrix is a local thresholding technique. Relative entropy is usually used to gauge the relative difference of uncertainties in two physical systems, and the relative entropy-based asymmetrical co-occurrence matrix thresholding has been applied successfully. We propose to construct symmetrical co-occurrence matrix with the statistical spatial information from the mean values in object and background regions of an image. In this way, a unique relative entropy-based symmetrical co-occurrence matrix thresholding method is derived. Computer-simulation results demonstrated the higher adaptability and efficiency of the proposed method, as compared with square distance based symmetrical co-ocurrence matrix thresholding, Otsu's and relative entropy methods.
机译:基于灰度共生矩阵的阈值化是一种局部阈值化技术。相对熵通常用于度量两个物理系统中不确定性的相对差,并且基于相对熵的不对称共现矩阵阈值已成功应用。我们建议利用图像的对象和背景区域中的平均值构造具有统计空间信息的对称共现矩阵。以此方式,导出了独特的基于相对熵的对称共现矩阵阈值化方法。计算机仿真结果表明,与基于平方距离的对称共现矩阵阈值,Otsu和相对熵方法相比,该方法具有更高的适应性和效率。

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