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Main Authors: Xia, Han, Li, Quanjun, Li, Qian, Li, Zimeng, Ye, Hongbin, Liu, Yupeng, Li, Haolun, Chen, Xuhang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.11287
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author Xia, Han
Li, Quanjun
Li, Qian
Li, Zimeng
Ye, Hongbin
Liu, Yupeng
Li, Haolun
Chen, Xuhang
author_facet Xia, Han
Li, Quanjun
Li, Qian
Li, Zimeng
Ye, Hongbin
Liu, Yupeng
Li, Haolun
Chen, Xuhang
contents Medical image segmentation is vital for diagnosis, treatment planning, and disease monitoring but is challenged by complex factors like ambiguous edges and background noise. We introduce EEMS, a new model for segmentation, combining an Edge-Aware Enhancement Unit (EAEU) and a Multi-scale Prompt Generation Unit (MSPGU). EAEU enhances edge perception via multi-frequency feature extraction, accurately defining boundaries. MSPGU integrates high-level semantic and low-level spatial features using a prompt-guided approach, ensuring precise target localization. The Dual-Source Adaptive Gated Fusion Unit (DAGFU) merges edge features from EAEU with semantic features from MSPGU, enhancing segmentation accuracy and robustness. Tests on datasets like ISIC2018 confirm EEMS's superior performance and reliability as a clinical tool.
format Preprint
id arxiv_https___arxiv_org_abs_2510_11287
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle EEMS: Edge-Prompt Enhanced Medical Image Segmentation Based on Learnable Gating Mechanism
Xia, Han
Li, Quanjun
Li, Qian
Li, Zimeng
Ye, Hongbin
Liu, Yupeng
Li, Haolun
Chen, Xuhang
Computer Vision and Pattern Recognition
Medical image segmentation is vital for diagnosis, treatment planning, and disease monitoring but is challenged by complex factors like ambiguous edges and background noise. We introduce EEMS, a new model for segmentation, combining an Edge-Aware Enhancement Unit (EAEU) and a Multi-scale Prompt Generation Unit (MSPGU). EAEU enhances edge perception via multi-frequency feature extraction, accurately defining boundaries. MSPGU integrates high-level semantic and low-level spatial features using a prompt-guided approach, ensuring precise target localization. The Dual-Source Adaptive Gated Fusion Unit (DAGFU) merges edge features from EAEU with semantic features from MSPGU, enhancing segmentation accuracy and robustness. Tests on datasets like ISIC2018 confirm EEMS's superior performance and reliability as a clinical tool.
title EEMS: Edge-Prompt Enhanced Medical Image Segmentation Based on Learnable Gating Mechanism
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.11287