4.7 Article

Image Segmentation Using Fuzzy Region Competition and Spatial/Frequency Information

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 20, Issue 6, Pages 1473-1484

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2010.2095023

Keywords

Generalized Gaussian density; region competition; segmentation

Funding

  1. HKBU's Centre for Mathematical Imaging and Vision
  2. RGC GRF [HKBU202108, HKBU261007, HKBU261508]

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This paper presents a multiphase fuzzy region competition model that takes into account spatial and frequency information for image segmentation. In the proposed energy functional, each region is represented by a fuzzy membership function and a data fidelity term that measures the conformity of spatial and frequency data within each region to (generalized) Gaussian densities whose parameters are determined jointly with the segmentation process. Compared with the classical region competition model, our approach gives soft segmentation results via the fuzzy membership functions, and moreover, the use of frequency data provides additional region information that can improve the overall segmentation result. To efficiently solve the minimization of the energy functional, we adopt an alternate minimization procedure and make use of Chambolle's fast duality projection algorithm. We apply the proposed method to synthetic and natural textures as well as real-world natural images. Experimental results show that our proposed method has very promising segmentation performance compared with the current state-of-the-art approaches.

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