Segment N-dimensional grayscale images into c classes using efficient c-means or fuzzy c-means clustering algorithm
https://github.com/AntonSemechko/Fast-Fuzzy-C-Means-Segmentation
You are now following this Submission
- You will see updates in your followed content feed
- You may receive emails, depending on your communication preferences
Fast N-D Grayscale Image Segmenation With c- or Fuzzy c-Means
c-means and fuzzy c-means clustering are two very popular image segmentation algorithms. While their implementation is straightforward, if realized naively it will lead to substantial overhead in execution time and memory consumption. Although these deficiencies could be ignored for small 2D images they become more noticeable for large 3D datasets. This submission is intended to provide an efficient implementation of these algorithms for segmenting N-dimensional grayscale images. The computational efficiency is achieved by using the histogram of the image intensities during the clustering process instead of the raw image data. Finally, since the algorithms are implemented from scratch there are no dependencies on any auxiliary toolboxes.
For a quick demonstration of how to use the functions, run the attached DemoFCM.m file.
You can also get a copy of this repo from Matlab Central File Exchange.
License
MIT © 2019 Anton Semechko a.semechko@gmail.com
Cite As
Anton Semechko (2026). Fast fuzzy c-means image segmentation (https://github.com/AntonSemechko/Fast-Fuzzy-C-Means-Segmentation), GitHub. Retrieved .
Acknowledgements
Inspired: A hybrid algorithm for disparity calculation from sparse disparity estimates based on stereo vision
General Information
- Version 1.2.0.3 (7.1 KB)
-
View License on GitHub
MATLAB Release Compatibility
- Compatible with any release
Platform Compatibility
- Windows
- macOS
- Linux
Versions that use the GitHub default branch cannot be downloaded
