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Fast and robust fuzzy c-means clustering algorithms incorporating local information for image segmentation

机译:快速和强大的模糊c均值聚类算法结合了局部信息进行图像分割

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Fuzzy c-means (FCM) algorithms with spatial constraints (FCM_S) have been proven effective for image segmentation. However, they still have the following disadvantages: (1) although the introduction of local spatial information to the corresponding objective functions enhances their insensitiveness to noise to some extent, they still lack enough robustness to noise and outliers, especially in absence of prior knowledge of the noise; (2) in their objective functions, there exists a crucial parameter alpha used to balance between robustness to noise and effectiveness of preserving the details of the image, it is selected generally through experience; and (3) the time of segmenting an image is dependent on the image size, and hence the larger the size of the image, the more the segmentation time. In this paper, by incorporating local spatial and gray information together, a novel fast and robust FCM framework for image segmentation, i.e., fast generalized fuzzy c-means (FGFCM) clustering algorithms, is proposed. FGFCM can mitigate the disadvantages of FCM_S and at the same time enhances the clustering performance. Furthermore, FGFCM not only includes many existing algorithms, such as fast FCM and enhanced FCM as its special cases, but also can derive other new algorithms such as FGFCM_S1 and FGFCM_S2 proposed in the rest of this paper. The major characteristics of FGFCM are: (1) to use a new factor S-ij as a local (both spatial and gray) similarity measure aiming to guarantee both noise-immunity and detail-preserving for image, and meanwhile remove the empirically-adjusted parameter alpha; (2) fast clustering or segmenting image, the segmenting time is only dependent on the number of the gray-levels q rather than the size N( q) of the image, and consequently its computational complexity is reduced from O(NcI (1)) to O(qcI (2)), where c is the number of the clusters, I-1 and I-2(< I-1, generally) are the numbers of iterations, respectively, in the standard FCM and our proposed fast segmentation method. The experiments on the synthetic and real-world images show that FGFCM algorithm is effective and efficient. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:具有空间约束(FCM_S)的模糊c均值(FCM)算法已被证明对图像分割有效。但是,它们仍然具有以下缺点:(1)尽管将局部空间信息引入相应的目标函数在一定程度上增强了它们对噪声的不敏感性,但是它们仍然缺乏对噪声和离群值的足够的鲁棒性,尤其是在没有先验知识的情况下。噪音; (2)在其目标函数中,存在一个至关重要的参数alpha,用于在对噪声的鲁棒性和保留图像细节的有效性之间取得平衡,通常通过经验来选择; (3)分割图像的时间取决于图像尺寸,因此,图像尺寸越大,分割时间越长。在本文中,通过将局部空间和灰度信息融合在一起,提出了一种新颖,快速,鲁棒的FCM图像分割框架,即快速广义模糊c均值(FGFCM)聚类算法。 FGFCM可以减轻FCM_S的缺点,同时提高聚类性能。此外,FGFCM不仅包括许多现有算法(例如快速FCM和增强型FCM)作为其特例,而且还可以推导本文其余部分提出的其他新算法,例如FGFCM_S1和FGFCM_S2。 FGFCM的主要特征是:(1)使用新的因子S-ij作为局部(空间和灰度)相似性度量,旨在保证图像的抗噪性和细节保留性,同时删除经过经验调整的参数alpha; (2)快速聚类或分割图像,分割时间仅取决于灰度级q的数量,而不取决于图像的大小N( q),因此其计算复杂度从O(NcI( 1))到O(qcI(2)),其中c是聚类的数目,I-1和I-2(通常 I-1,通常)分别是标准FCM和提出了快速分割方法。对合成图像和真实图像的实验表明,FGFCM算法是有效的。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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