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Main Authors: Wang, Yingkai, Zhu, Yaoyao, Cai, Xiuding, Xiao, Yuhao, Wu, Haotian, Yao, Yu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.23326
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author Wang, Yingkai
Zhu, Yaoyao
Cai, Xiuding
Xiao, Yuhao
Wu, Haotian
Yao, Yu
author_facet Wang, Yingkai
Zhu, Yaoyao
Cai, Xiuding
Xiao, Yuhao
Wu, Haotian
Yao, Yu
contents Medical image segmentation plays a crucial role in clinical workflows, but domain shift often leads to performance degradation when models are applied to unseen clinical domains. This challenge arises due to variations in imaging conditions, scanner types, and acquisition protocols, limiting the practical deployment of segmentation models. Unlike natural images, medical images typically exhibit consistent anatomical structures across patients, with domain-specific variations mainly caused by imaging conditions. This unique characteristic makes medical image segmentation particularly challenging. To address this challenge, we propose a domain generalization framework tailored for medical image segmentation. Our approach improves robustness to domain-specific variations by introducing implicit feature perturbations guided by domain statistics. Specifically, we employ a learnable semantic direction selector and a covariance-based semantic intensity sampler to modulate domain-variant features while preserving task-relevant anatomical consistency. Furthermore, we design an adaptive consistency constraint that is selectively applied only when feature adjustment leads to degraded segmentation performance. This constraint encourages the adjusted features to align with the original predictions, thereby stabilizing feature selection and improving the reliability of the segmentation. Extensive experiments on two public multi-center benchmarks show that our framework consistently outperforms existing domain generalization approaches, achieving robust and generalizable segmentation performance across diverse clinical domains.
format Preprint
id arxiv_https___arxiv_org_abs_2507_23326
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning Semantic Directions for Feature Augmentation in Domain-Generalized Medical Segmentation
Wang, Yingkai
Zhu, Yaoyao
Cai, Xiuding
Xiao, Yuhao
Wu, Haotian
Yao, Yu
Computer Vision and Pattern Recognition
Medical image segmentation plays a crucial role in clinical workflows, but domain shift often leads to performance degradation when models are applied to unseen clinical domains. This challenge arises due to variations in imaging conditions, scanner types, and acquisition protocols, limiting the practical deployment of segmentation models. Unlike natural images, medical images typically exhibit consistent anatomical structures across patients, with domain-specific variations mainly caused by imaging conditions. This unique characteristic makes medical image segmentation particularly challenging. To address this challenge, we propose a domain generalization framework tailored for medical image segmentation. Our approach improves robustness to domain-specific variations by introducing implicit feature perturbations guided by domain statistics. Specifically, we employ a learnable semantic direction selector and a covariance-based semantic intensity sampler to modulate domain-variant features while preserving task-relevant anatomical consistency. Furthermore, we design an adaptive consistency constraint that is selectively applied only when feature adjustment leads to degraded segmentation performance. This constraint encourages the adjusted features to align with the original predictions, thereby stabilizing feature selection and improving the reliability of the segmentation. Extensive experiments on two public multi-center benchmarks show that our framework consistently outperforms existing domain generalization approaches, achieving robust and generalizable segmentation performance across diverse clinical domains.
title Learning Semantic Directions for Feature Augmentation in Domain-Generalized Medical Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.23326