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A kernelized-bias-corrected fuzzy C-means approach with moment domain filtering for segmenting brain magnetic resonance images

Published: 08 January 2024 Publication History

Abstract

Brain magnetic resonance images (MRIs) have complex intrinsic structures with abundant edges, corners, and fine details. Besides these structural complexities, noise and intensity inhomogeneity in the MR images affect the segmentation accuracy. In this paper, we propose a novel approach called kernelized-bias-corrected fuzzy C-means approach using local Zernike moments (LZMs)-based unbiased nonlocal filtering (KBCFCM-LZM) to improve the segmentation performance of brain MR images. The approach works in two phases. In the first phase, we apply LZM-based unbiased nonlocal means filtering on the MR images that provides better pattern-matching capability under various geometric and photometric distortions in the images to remove the effect of Rician noise. In the second phase, the bias field correction process reduces the impact of intensity inhomogeneity, and the segmentation process is performed simultaneously. Further, the segmentation process in the proposed method is carried out in kernel space, which efficiently deals with the problem due to data outliers and provides faster convergence. Thus, the proposed method provides a framework that effectively yields high segmentation accuracy even under high noise and intensity inhomogeneity levels. A comprehensive comparative performance analysis is provided to demonstrate the superior performance of the proposed approach with the state-of-the-art kernel approaches.

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          Published In

          cover image Soft Computing - A Fusion of Foundations, Methodologies and Applications
          Soft Computing - A Fusion of Foundations, Methodologies and Applications  Volume 28, Issue 3
          Feb 2024
          909 pages

          Publisher

          Springer-Verlag

          Berlin, Heidelberg

          Publication History

          Published: 08 January 2024
          Accepted: 12 October 2023

          Author Tags

          1. Magnetic resonance imaging
          2. Rician noise
          3. Intensity inhomogeneity
          4. Image segmentation
          5. Kernel fuzzy C-means

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