Entropy (Oct 2021)

An Interval Iteration Based Multilevel Thresholding Algorithm for Brain MR Image Segmentation

  • Yuncong Feng,
  • Wanru Liu,
  • Xiaoli Zhang,
  • Zhicheng Liu,
  • Yunfei Liu,
  • Guishen Wang

DOI
https://doi.org/10.3390/e23111429
Journal volume & issue
Vol. 23, no. 11
p. 1429

Abstract

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In this paper, we propose an interval iteration multilevel thresholding method (IIMT). This approach is based on the Otsu method but iteratively searches for sub-regions of the image to achieve segmentation, rather than processing the full image as a whole region. Then, a novel multilevel thresholding framework based on IIMT for brain MR image segmentation is proposed. In this framework, the original image is first decomposed using a hybrid L1 − L0 layer decomposition method to obtain the base layer. Second, we use IIMT to segment both the original image and its base layer. Finally, the two segmentation results are integrated by a fusion scheme to obtain a more refined and accurate segmentation result. Experimental results showed that our proposed algorithm is effective, and outperforms the standard Otsu-based and other optimization-based segmentation methods.

Keywords