IET Image Processing (Jan 2024)

Fuzzy C‐means clustering algorithm based on superpixel merging and multi‐feature adaptive fusion measurement

  • Xie Zeyu,
  • Luo Xiao,
  • Zhao Defang,
  • Chen Xinyu

DOI
https://doi.org/10.1049/ipr2.12939
Journal volume & issue
Vol. 18, no. 1
pp. 140 – 153

Abstract

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Abstract The fuzzy C‐means clustering (FCM) algorithm is widely used in greyscale and colour image segmentation, especially in real colour images. However, in the process of interested regions extraction, it performs barely satisfactory due to the use of single distance metric in traditional FCM. In order to address the issue, a fuzzy C‐means clustering algorithm based on superpixel merging and multi‐feature adaptive fusion measurement (FCM‐SM) are proposed. First of all, since superpixel image adapts well to irregular image boundaries, the FCM algorithm is elevated to the superpixel level. Moreover, the superpixel merging module based on colour similarity is introduced to improve the traditional watershed transformation by incorporating more gradient and intensity information. Finally, the multi‐feature adaptive fusion measurement is designed in the clustering process to incorporate multiple sources of spatial information, which comprehensively measures the information from different fields to enhance the segmentation capability further. Experiments performed on Berkeley Segmentation Dataset and Brain Tumor Segmentation Dataset demonstrate that the proposed algorithm provides better segmentation results than benchmarks during the object extraction.

Keywords