Boundless Across Domains: A New Paradigm of Adaptive Feature and Cross-Attention for Domain Generalization in Medical Image Segmentation
Yuheng Xu, Taiping Zhang

TL;DR
This paper introduces a novel adaptive feature and cross-attention framework for domain generalization in medical image segmentation, effectively handling high-dimensional data and expanding domain diversity.
Contribution
It proposes a new cross-channel attention mechanism and adaptive feature blending method to improve domain-invariant representation learning and generate diverse out-of-distribution samples.
Findings
Achieves superior performance on standard benchmarks
Effectively handles high-dimensional data
Expands domain diversity with adaptive blending
Abstract
Domain-invariant representation learning is a powerful method for domain generalization. Previous approaches face challenges such as high computational demands, training instability, and limited effectiveness with high-dimensional data, potentially leading to the loss of valuable features. To address these issues, we hypothesize that an ideal generalized representation should exhibit similar pattern responses within the same channel across cross-domain images. Based on this hypothesis, we use deep features from the source domain as queries, and deep features from the generated domain as keys and values. Through a cross-channel attention mechanism, the original deep features are reconstructed into robust regularization representations, forming an explicit constraint that guides the model to learn domain-invariant representations. Additionally, style augmentation is another common method.…
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Taxonomy
TopicsMedical Image Segmentation Techniques
MethodsSoftmax · Attention Is All You Need
