Prototype Correlation Matching and Class-Relation Reasoning for Few-Shot Medical Image Segmentation
Yumin Zhang, Hongliu Li, Yajun Gao, Haoran Duan, Yawen Huang, Yefeng, Zheng

TL;DR
This paper introduces PMCR, a novel few-shot medical image segmentation model that leverages prototype correlation matching and class-relation reasoning to improve segmentation accuracy by addressing intra-class variations and inter-class relations.
Contribution
The paper proposes a prototype correlation matching module and a class-relation reasoning module to enhance few-shot segmentation by mitigating false matches and exploring inter-class relations.
Findings
Significant performance improvement over baseline methods.
Effective handling of intra-class variations in medical images.
Improved segmentation accuracy through inter-class relation reasoning.
Abstract
Few-shot medical image segmentation has achieved great progress in improving accuracy and efficiency of medical analysis in the biomedical imaging field. However, most existing methods cannot explore inter-class relations among base and novel medical classes to reason unseen novel classes. Moreover, the same kind of medical class has large intra-class variations brought by diverse appearances, shapes and scales, thus causing ambiguous visual characterization to degrade generalization performance of these existing methods on unseen novel classes. To address the above challenges, in this paper, we propose a \underline{\textbf{P}}rototype correlation \underline{\textbf{M}}atching and \underline{\textbf{C}}lass-relation \underline{\textbf{R}}easoning (i.e., \textbf{PMCR}) model. The proposed model can effectively mitigate false pixel correlation matches caused by large intra-class…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Imaging and Analysis · AI in cancer detection
MethodsBalanced Selection
