结合加权局部补隶属度和局部数据距离的模糊c均值算法图像分割

R. Gharieb, G. Gendy, A. Abdelfattah
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引用次数: 8

摘要

模糊c均值(FCM)算法被广泛应用于无监督图像分割。然而,FCM算法没有考虑图像上下文中的局部信息。这使得FCM算法对降低图像像素特征的加性噪声很敏感。本文提出了一种将本地数据上下文和成员信息合并到FCM中的方法。该方法包括在标准FCM算法中添加一个加权正则化函数。该函数的形式类似于标准FCM目标函数,但距离被由局部补或残差隶属度生成的新距离所取代。所应用的正则化权值是一个常数权值,或者是一个自适应权值。自适应权值是中心原型与局部图像数据均值之间的欧氏距离。正则化函数的目的是平滑加性噪声,并将聚类图像偏置到分段的均匀区域。给出了合成和真实噪声图像聚类和分割的仿真结果。这些结果表明,与标准FCM和几种改进的FCM算法相比,该方法提高了FCM算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Segmentation Using Fuzzy C-Means Algorithm Incorporating Weighted Local Complement Membership and Local Data Distances
Fuzzy C-Means (FCM) algorithm is widely used for unsupervised image segmentation. However, the FCM algorithm does not take into account the local information in the image context. This makes the FCM algorithm sensitive to additive noise degrading the image pixels features. In this paper, an approach to incorporating local data context and membership information into the FCM is presented. The approach consists of adding a weighted regularization function to the standard FCM algorithm. This function is formulated to resemble the standard FCM objective function but the distance is replaced by a new one generated from the local complement or residual membership. The applied regularizing weight is a constant weight or alternatively an adaptive one. The adaptive weight is the Euclidian distance between the center prototype and the local image data mean. The regularizing function aims at smoothing out additive noise and biasing the clustered image to piecewise homogenous regions. Simulation results of clustering and segmentation of synthetic and real-world noisy images have been presented. These results have shown that the presented approach enhances the performance of the FCM algorithm in comparison with the standard FCM and several previously modified FCM algorithms.
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