SGDC: Structurally-Guided Dynamic Convolution for Medical Image Segmentation
Bo Shi, Wei-ping Zhu, M.N.S. Swamy

TL;DR
This paper introduces SGDC, a novel structure-guided dynamic convolution mechanism that enhances medical image segmentation by preserving fine structural details and boundary fidelity, outperforming traditional pooling-based methods.
Contribution
The paper proposes a new structure-guided dynamic convolution method that explicitly incorporates high-fidelity boundary information to improve segmentation accuracy.
Findings
Achieves state-of-the-art results on multiple medical datasets.
Reduces Hausdorff Distance by 2.05, indicating better boundary accuracy.
Provides consistent IoU improvements over baseline methods.
Abstract
Spatially variant dynamic convolution provides a principled approach of integrating spatial adaptivity into deep neural networks. However, mainstream designs in medical segmentation commonly generate dynamic kernels through average pooling, which implicitly collapses high-frequency spatial details into a coarse, spatially-compressed representation, leading to over-smoothed predictions that degrade the fidelity of fine-grained clinical structures. To address this limitation, we propose a novel Structure-Guided Dynamic Convolution (SGDC) mechanism, which leverages an explicitly supervised structure-extraction branch to guide the generation of dynamic kernels and gating signals for structure-aware feature modulation. Specifically, the high-fidelity boundary information from this auxiliary branch is fused with semantic features to enable spatially-precise feature modulation. By replacing…
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Taxonomy
TopicsAdvanced Neural Network Applications · Domain Adaptation and Few-Shot Learning · Medical Imaging and Analysis
