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Possibilistic Clustering Algorithm Incorporating Grey-Level Histogram and Spatial Information for Image Segmentation

机译:结合灰度直方图和空间信息的可能性聚类算法

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Image segmentation is a process of segmenting an image into non-intersecting regions containing homogeneous pixels that are inhomogeneous with those in other adjacent regions. In this paper, a possibilistic clustering algorithm incorporating grey-level histogram and spatial information (PCA_HS) for image segmentation is proposed. The grey-level histogram speeds up the algorithm and the spatial information enhances its robustness to noise and outliers. To assess the proposed algorithm, four widely used validity indexes are computed and discussed. As the experimental quantitative and qualitative results on real images with and without noise show, PCA_HS can preserve the homogeneity and integrality of the regions and hence is more effective and efficient than traditional PCA.
机译:图像分割是将图像分割为不相交的区域的过程,该不相交的区域包含与其他相邻区域的像素不均匀的均匀像素。提出了一种结合灰度直方图和空间信息(PCA_HS)的图像分割的可能性聚类算法。灰度直方图加快了算法的速度,而空间信息则增强了其对噪声和异常值的鲁棒性。为了评估所提出的算法,计算并讨论了四个广泛使用的有效性指标。正如在有噪声和无噪声的真实图像上的实验定量和定性结果所示,PCA_HS可以保留区域的均匀性和完整性,因此比传统PCA更加有效。

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