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CrossMatch: Enhance Semi-Supervised Medical Image Segmentation With Perturbation Strategies and Knowledge Distillation

Bin Zhao, Chunshi Wang, Shuxue Ding

2024IEEE Journal of Biomedical and Health Informatics17 citationsDOI

Abstract

Semi-supervised learning for medical image segmentation presents a unique challenge of efficiently using limited labeled data while leveraging abundant unlabeled data. Despite advancements, existing methods often do not fully exploit the potential of the unlabeled data for enhancing model robustness and accuracy. In this paper, we introduce CrossMatch, a novel framework that integrates knowledge distillation with dual perturbation strategies, image-level and feature-level, to improve the model's learning from both labeled and unlabeled data. CrossMatch employs multiple encoders and decoders to generate diverse data streams, which undergo self-knowledge distillation to enhance the consistency and reliability of predictions across varied perturbations. Our method significantly surpasses other state-of-the-art techniques in standard benchmarks by effectively minimizing the gap between training on labeled and unlabeled data and improving edge accuracy and generalization in medical image segmentation. The efficacy of CrossMatch is demonstrated through extensive experimental validations, showing remarkable performance improvements without increasing computational costs.

Topics & Concepts

Image segmentationComputer scienceArtificial intelligenceSegmentationComputer visionDistillationImage (mathematics)Pattern recognition (psychology)ChemistryOrganic chemistryBrain Tumor Detection and ClassificationMedical Image Segmentation TechniquesAI in cancer detection
CrossMatch: Enhance Semi-Supervised Medical Image Segmentation With Perturbation Strategies and Knowledge Distillation | Litcius