Residual-Sparse Fuzzy C-Means for image segmentation

版本 1.0.0 (3.8 MB) 作者: Cong Wang
We propose a residual-sparse Fuzzy C-Means clustering algorithm for image segmentation, published in IEEE TFS, 2021.
41.0 次下载
更新时间 2023/4/13

查看许可证

We develop a residual-sparse Fuzzy C -Means (FCM) algorithm for image segmentation, which furthers FCM's robustness by realizing the favorable estimation of the residual (e.g., unknown noise) between an observed image and its ideal version (noise-free image). To achieve a sound tradeoff between detail preservation and noise suppression, morphological reconstruction is used to filter the observed image. By combining the observed and filtered images, a weighted sum image is generated. Tight wavelet frame decomposition is used to transform the weighted sum image into its corresponding feature set. Taking such feature set as data for clustering, we impose an ℓ0 regularization term on residual to FCM's objective function, thus resulting in residual-sparse FCM, where spatial information is introduced for improving its robustness and making residual estimation more reliable. To further enhance segmentation accuracy of the proposed FCM, we employ morphological reconstruction to smoothen the labels generated by clustering. Finally, based on the prototypes and smoothed labels, a segmented image is reconstructed by using tight wavelet frame reconstruction. Experimental results regarding synthetic, medical, and real-world images show that the proposed algorithm is effective and efficient, and outperforms its peers.

引用格式

Cong Wang (2024). Residual-Sparse Fuzzy C-Means for image segmentation (https://www.mathworks.com/matlabcentral/fileexchange/127733-residual-sparse-fuzzy-c-means-for-image-segmentation), MATLAB Central File Exchange. 检索时间: .

MATLAB 版本兼容性
创建方式 R2023a
兼容任何版本
平台兼容性
Windows macOS Linux
标签 添加标签

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
版本 已发布 发行说明
1.0.0