基于稀疏自表示的模糊c均值聚类

Cun Sun, Yan Song, Ming Li, Min Li
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引用次数: 0

摘要

模糊c均值聚类是一种重要而高效的无监督学习方法,应用于图像分割、模式识别等领域。然而,传统的FCM算法对边界模糊的图像,特别是存在噪声的图像分割效果不佳。为了解决这一问题,利用稀疏自表示技术并结合邻居信息,提出了一种新的FCM聚类方法,即基于稀疏自表示的带有邻居信息约束的模糊c均值聚类方法(SSRFCM_N)。所提出的SSRFCM_N的主要思想有两个方面:1)在传统的关于全局相似性信息的聚类中心的基础上,利用稀疏自表示技术在目标中引入另一个关于局部信息的聚类中心;2)为了充分考虑数据的分布,目标中还加入了邻居信息约束,使得目标具有更好的精度和对噪声的鲁棒性。最后,在不同图像上的实验表明,SSRFCM_N是有效的,并且比最先进的聚类方法更具竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy C-Means Clustering With Neighbor Information Constraint Using Sparse Self-Representation
Fuzzy c-means (FCM) clustering is a significant yet efficient unsupervised learning methods in many fields such as image segmentation, pattern recognition, etc. However, the traditional FCM algorithm cannot perform well at segmentation on images with vague boundaries especially in the presence of noises. To address this problem, by means of the sparse self-representation technique and the incorporation of the neighbor information, a novel FCM clustering method is put forward, which is called fuzzy c-means clustering with neighbor information constraint using sparse self-representation (SSRFCM_N). The main idea of the proposed SSRFCM_N is two fold: 1) besides the traditional cluster center regarding the global information of similarity, another center with respect to the local information is introduced into the objective by using the sparse self-representation technique; and 2) to consider the data distribution adequately, the neighbor information constraint is also incorporated into the objective, contributing to a better accuracy as well as the good robustness to the noise. Finally, experiments on different images show that SSRFCM_N is effective and more competitive than state-of-the-art clustering methods.
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