Residual-driven Fuzzy C-Means Clustering for Image Segmentation
- URL: http://arxiv.org/abs/2004.07160v2
- Date: Mon, 20 Apr 2020 14:15:04 GMT
- Title: Residual-driven Fuzzy C-Means Clustering for Image Segmentation
- Authors: Cong Wang, Witold Pedrycz, ZhiWu Li, MengChu Zhou
- Abstract summary: We elaborate on residual-driven Fuzzy C-Means (FCM) for image segmentation.
Built on this framework, we present a weighted $ell_2$-norm fidelity term by weighting mixed noise distribution.
The results demonstrate the superior effectiveness and efficiency of the proposed algorithm over existing FCM-related algorithms.
- Score: 152.609322951917
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Due to its inferior characteristics, an observed (noisy) image's direct use
gives rise to poor segmentation results. Intuitively, using its noise-free
image can favorably impact image segmentation. Hence, the accurate estimation
of the residual between observed and noise-free images is an important task. To
do so, we elaborate on residual-driven Fuzzy C-Means (FCM) for image
segmentation, which is the first approach that realizes accurate residual
estimation and leads noise-free image to participate in clustering. We propose
a residual-driven FCM framework by integrating into FCM a residual-related
fidelity term derived from the distribution of different types of noise. Built
on this framework, we present a weighted $\ell_{2}$-norm fidelity term by
weighting mixed noise distribution, thus resulting in a universal
residual-driven FCM algorithm in presence of mixed or unknown noise. Besides,
with the constraint of spatial information, the residual estimation becomes
more reliable than that only considering an observed image itself. Supporting
experiments on synthetic, medical, and real-world images are conducted. The
results demonstrate the superior effectiveness and efficiency of the proposed
algorithm over existing FCM-related algorithms.
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