Fuzzy c-means clustering with spatial information for color image segmentation

M. Jaffar, Nawazish Naveed, Bilal Ahmed, Ayyaz Hussain, A. M. Mirza
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引用次数: 27

Abstract

Spatial information enhances the quality of clustering which is not utilized in the conventional FCM. Normally fuzzy c-means (FCM) algorithm is not used for color image segmentation and also it is not robust against noise. In this paper, we presented a modified version of fuzzy c-means (FCM) algorithm that incorporates spatial information into the membership function for clustering of color images [7, 8]. We used HSV model for decomposition of color image and then FCM is applied separately on each component of HSV model. For optimal clustering, grayscale image is used. Additionally, spatial information is incorporated in each model separately. The spatial function is the summation of the membership function in the neighborhood of each pixel under consideration. The advantages of this new method are: (a) it yields regions more homogeneous than those of other methods for color images; (b) it reduces the spurious blobs; and (c) it removes noisy spots. It is less sensitive to noise as compared with other techniques. This technique is a powerful method for noisy color image segmentation and works for both single and multiple-feature data with spatial information.
基于空间信息的模糊c均值聚类在彩色图像分割中的应用
空间信息提高了聚类的质量,这是传统FCM无法利用的。模糊c均值(FCM)算法通常不用于彩色图像分割,而且对噪声的鲁棒性较差。在本文中,我们提出了一种改进版本的模糊c-means (FCM)算法,该算法将空间信息纳入彩色图像聚类的隶属函数中[7,8]。采用HSV模型对彩色图像进行分解,然后对HSV模型的各个分量分别应用FCM。为了实现最优聚类,使用灰度图像。此外,空间信息被单独纳入到每个模型中。空间函数是所考虑的每个像素的邻域的隶属函数的和。该方法的优点是:(a)与其他彩色图像方法相比,该方法产生的区域更加均匀;(b)减少虚假斑点;(c)去噪点。与其他技术相比,它对噪声不那么敏感。该技术是一种有效的噪声彩色图像分割方法,适用于具有空间信息的单特征和多特征数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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