一种自适应空间信息的改进模糊c均值算法用于彩色图像分割

Zhiding Yu, R. Zou, Simin Yu
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引用次数: 10

摘要

FCM在图像分割中得到了广泛的应用,但也面临着一些挑战。传统的FCM需要通过反复测试来确定聚类中心数。此外,聚类中心的随机初始化容易使算法陷入局部最小值,导致分割结果不是最优的。传统的FCM对噪声也很敏感,因为像素分割过程完全在特征空间中进行,忽略了一些必要的空间信息。本文介绍了一种改进的FCM算法用于彩色图像分割。该算法采用自适应鲁棒初始化方法,根据输入图像自动确定初始聚类中心值和中心个数。此外,该方法根据局部颜色方差确定像素邻居的窗口大小和邻居隶属度的权重,自适应地将空间信息融入聚类过程,提高了算法对噪声像素和剧烈颜色方差的鲁棒性。实验结果表明,改进的FCM算法优于传统的FCM算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A modified fuzzy c-means algorithm with adaptive spatial information for color image segmentation
Though FCM has long been widely used in image segmentation, it yet faces several challenges. Traditional FCM needs a laborious process to decide cluster center number by repetitive tests. Moreover, random initialization of cluster centers can let the algorithm easily fall onto local minimum, causing the segmentation results to be suboptimal. Traditional FCM is also sensitive to noise due to the reason that the pixel partitioning process goes completely in the feature space, ignoring some necessary spatial information. In this paper we introduce a modified FCM algorithm for color image segmentation. The proposed algorithm adopts an adaptive and robust initialization method which automatically decides initial cluster center values and center number according to the input image. In addition, by deciding the window size of pixel neighbor and the weights of neighbor memberships according to local color variance, the proposed approach adaptively incorporates spatial information to the clustering process and increases the algorithm robustness to noise pixels and drastic color variance. Experimental results have shown the superiority of modified FCM over traditional FCM algorithm.
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