Lifting-based variational multiclass segmentation algorithm: design,
convergence analysis, and implementation with applications in medical imaging
- URL: http://arxiv.org/abs/2202.04680v3
- Date: Mon, 18 Sep 2023 07:24:04 GMT
- Title: Lifting-based variational multiclass segmentation algorithm: design,
convergence analysis, and implementation with applications in medical imaging
- Authors: Nadja Gruber, Johannes Schwab, Sebastien Court, Elke Gizewski, Markus
Haltmeier
- Abstract summary: We propose, analyze and realize a variational multiclass segmentation scheme that partitions a given image into multiple regions exhibiting specific properties.
Our method determines multiple functions that encode the segmentation regions by minimizing an energy functional combining information from different channels.
Experimental results show that the proposed method performs well in various scenarios.
- Score: 1.2499537119440245
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We propose, analyze and realize a variational multiclass segmentation scheme
that partitions a given image into multiple regions exhibiting specific
properties. Our method determines multiple functions that encode the
segmentation regions by minimizing an energy functional combining information
from different channels. Multichannel image data can be obtained by lifting the
image into a higher dimensional feature space using specific multichannel
filtering or may already be provided by the imaging modality under
consideration, such as an RGB image or multimodal medical data. Experimental
results show that the proposed method performs well in various scenarios. In
particular, promising results are presented for two medical applications
involving classification of brain abscess and tumor growth, respectively. As
main theoretical contributions, we prove the existence of global minimizers of
the proposed energy functional and show its stability and convergence with
respect to noisy inputs. In particular, these results also apply to the special
case of binary segmentation, and these results are also novel in this
particular situation.
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