Paper ID: 2503.17792 • Published Mar 22, 2025
Topology preserving Image segmentation using the iterative convolution-thresholding method
Lingyun Deng, Litong Liu, Dong Wang, Xiao-Ping Wang
The Chinese University of Hong Kong, Shenzhen•Georgia Institute of Technology•Shenzhen Research Institute of Big Data
TL;DR
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Variational models are widely used in image segmentation, with various models
designed to address different types of images by optimizing specific objective
functionals. However, traditional segmentation models primarily focus on the
visual attributes of the image, often neglecting the topological properties of
the target objects. This limitation can lead to segmentation results that
deviate from the ground truth, particularly in images with complex topological
structures. In this paper, we introduce a topology-preserving constraint into
the iterative convolution-thresholding method (ICTM), resulting in the
topology-preserving ICTM (TP-ICTM). Extensive experiments demonstrate that, by
explicitly preserving the topological properties of target objects-such as
connectivity-the proposed algorithm achieves enhanced accuracy and robustness,
particularly in images with intricate structures or noise.
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