A New Cutset-type Kernelled Possibilistic C-Means Clustering Segmentation Algorithm Based on SLIC Super-pixels

Jiu-lun Fan, Haiyan Yu, Yang Yan, Mengfei Gao
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Abstract

The kernelled possibilistic C-means clustering algorithm (KPCM) can effectively cluster hyper-sphere data with noise and outliers by introducing the kernelled method to the possibilistic C-means clustering (PCM) algorithm. However, the KPCM still suffers from the same coincident clustering problem as the PCM algorithm due to the lack of between-class relationships. Therefore, this paper introduces the cut-set theory into the KPCM and modifies the possibilistic memberships in the iterative process. Then a cutset-type kernelled possibilistic C-means clustering (CKPCM) algorithm is proposed to overcome the coincident clustering problem of the KPCM. Simultaneously a adaptive method of estimating the cut-set threshold is also given by averaging inter-class distances. Additionally, a cutset-type kernelled possibilistic C-means clustering segmentation algorithm based on the SLIC super-pixels (SS-C-KPCM) is also proposed to improve the segmentation quality and efficiency of the color images. Several experimental results on artificial data sets and image segmentation simulation results prove the excellent performance of the proposed algorithms in this paper.
基于SLIC超像素的割集型核可能性c均值聚类分割新算法
核可能性c均值聚类算法(KPCM)通过将核方法引入到可能性c均值聚类算法(PCM)中,可以有效地对带有噪声和离群点的超球数据进行聚类。然而,由于缺乏类间关系,KPCM仍然存在与PCM算法相同的一致聚类问题。因此,本文将切集理论引入到KPCM中,并对迭代过程中的可能性隶属度进行了修正。然后提出了一种切集型核可能性c均值聚类算法(CKPCM),克服了CKPCM的重合聚类问题。同时,通过类间距离的平均,给出了一种自适应估计割集阈值的方法。此外,为了提高彩色图像的分割质量和效率,提出了一种基于SLIC超像素的切分集核可能性c均值聚类分割算法(SS-C-KPCM)。在人工数据集上的实验结果和图像分割仿真结果证明了本文算法的优异性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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