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Adaptive local data and membership based KL divergence incorporating C-means algorithm for fuzzy image segmentation

机译:基于Adaptive本地数据和隶属员资格的KL发散,包括用于模糊图像分割的C均值算法

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摘要

In this paper, a fuzzy clustering technique for image segmentation is developed by incorporating a hybrid of local spatial membership and data information into the conventional hard C-means (HCM) algorithm. This incorporation is a threefold procedure. (1) The membership function of a pixel is spatially smoothed in the pixel vicinity. (2) The Kullback-Leibler (KL) divergence between the pixel membership function and the smoothed one is added to the HCM objective function for fuzzification. (3) The resulting fuzzified HCM is regularized by adding a weighted HCM-like function where the original pixel data are replaced by locally smoothed ones. Thereby the weight is proportional to the residual of the locally smoothed membership. This residual decreases when many pixels existing in the pixel vicinity belong to the same cluster. Thus, the weighted distance decreases, allowing the pixel membership to follow the dominant membership in the pixel vicinity. The simulation results of segmenting synthetic, medical and media images have shown that the proposed algorithm provides better performance compared to several previously developed algorithms. For example, in a synthetic image, with added white Gaussian noise having a variance of 0.3, the proposed algorithm provides accuracy, sensitivity and specificity of 92%, 84% and 94.7% respectively, while the algorithm with the closest results provides 81.9% of accuracy, 62.2% of sensitivity and 86.8% of specificity. In addition, the proposed algorithm shows the capability to identify the number of clusters. (C) 2017 Elsevier B.V. All rights reserved.
机译:在本文中,通过将局部空间成员资格和数据信息的混合结合到传统的硬C型算法(HCM)算法中,开发了一种用于图像分割的模糊聚类技术。这种合并是三倍的程序。 (1)像素的成员函数在像素附近在空间平滑。 (2)将像素隶属函数和平滑的Kullback-Leibler(KL)发散添加到HCM目标函数中以进行模糊化。 (3)通过添加加权HCM样功能,通过添加原始像素数据被局部平滑的HCM的功能进行规范化。因此,重量与局部平滑的成员的残余成比例。当像素附近存在的许多像素属于同一群集时,这种剩余减小。因此,加权距离减小,允许像素成员资格遵循像素附近的主导成员资格。分段合成,医疗和媒体图像的仿真结果表明,与几个先前开发的算法相比,所提出的算法提供了更好的性能。例如,在合成图像中,具有差异为0.3的白色高斯噪声,所提出的算法分别提供了92%,84%和94.7%的准确性,灵敏度和特异性,而最接近结果的算法提供了81.9%精度,敏感度的62.2%和特异性的86.8%。此外,所提出的算法显示了识别群集数量的能力。 (c)2017 Elsevier B.v.保留所有权利。

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