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  4. MSA2Net: Multi-scale Adaptive Attention-guided Network for Medical Image Segmentation
 
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2024
Conference Paper
Title

MSA2Net: Multi-scale Adaptive Attention-guided Network for Medical Image Segmentation

Abstract
Medical image segmentation involves identifying and separating object instances in a medical image to delineate various tissues and structures, a task complicated by the significant variations in size, shape, and density of these features. Convolutional neural networks (CNNs) have traditionally been used for this task but have limitations in capturing long-range dependencies. Transformers, equipped with self-attention mechanisms, aim to address this problem. However, in medical image segmentation it is beneficial to merge both local and global features to effectively integrate feature maps across various scales, capturing both detailed features and broader semantic elements for dealing with variations in structures. In this paper, we introduce MSA<sup>2</sup>Net, a new deep segmentation framework featuring an expedient design of skip-connections. These connections facilitate feature fusion by dynamically weighting and combining coarse-grained encoder features with fine-grained decoder feature maps. Specifically, we propose a Multi-Scale Adaptive Spatial Attention Gate (MASAG), which dynamically adjusts the receptive field (Local and Global contextual information) to ensure that spatially relevant features are selectively highlighted while minimizing background distractions. Extensive evaluations involving dermatology, and radiological datasets demonstrate that our MSA<sup>2</sup>Net outperforms state-of-the-art (SOTA) works or matches their performance. The source code is publicly available at https://github.com/xmindflow/MSA-2Net.
Author(s)
Kolahi, Sina Ghorbani
Tarbiat Modares University
Chaharsooghi, Seyed Kamal
Tarbiat Modares University
Khatibi, Toktam
Tarbiat Modares University
Bozorgpour, Afshin
Universität Regensburg
Azad, Reza Khoshrooz
Universität Regensburg
Heidari, Moein
The University of British Columbia
Hacihaliloglu, Ilker
The University of British Columbia
Merhof, Dorit
Fraunhofer-Institut für Digitale Medizin MEVIS  
Mainwork
35th British Machine Vision Conference Bmvc 2024
Funder
Leibniz-Rechenzentrum
Conference
35th British Machine Vision Conference, BMVC 2024
Language
English
Fraunhofer-Institut für Digitale Medizin MEVIS  
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