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DuAT: Dual-Aggregation Transformer Network for Medical Image Segmentation

About

Transformer-based models have been widely demonstrated to be successful in computer vision tasks by modelling long-range dependencies and capturing global representations. However, they are often dominated by features of large patterns leading to the loss of local details (e.g., boundaries and small objects), which are critical in medical image segmentation. To alleviate this problem, we propose a Dual-Aggregation Transformer Network called DuAT, which is characterized by two innovative designs, namely, the Global-to-Local Spatial Aggregation (GLSA) and Selective Boundary Aggregation (SBA) modules. The GLSA has the ability to aggregate and represent both global and local spatial features, which are beneficial for locating large and small objects, respectively. The SBA module is used to aggregate the boundary characteristic from low-level features and semantic information from high-level features for better preserving boundary details and locating the re-calibration objects. Extensive experiments in six benchmark datasets demonstrate that our proposed model outperforms state-of-the-art methods in the segmentation of skin lesion images, and polyps in colonoscopy images. In addition, our approach is more robust than existing methods in various challenging situations such as small object segmentation and ambiguous object boundaries.

Feilong Tang, Qiming Huang, Jinfeng Wang, Xianxu Hou, Jionglong Su, Jingxin Liu• 2022

Related benchmarks

TaskDatasetResultRank
Polyp SegmentationETIS
Dice Score82.2
108
Skin Lesion SegmentationISIC 2018 (test)
Dice Score92.3
74
Polyp SegmentationColonDB
mDice81.9
74
Polyp SegmentationKvasir (test)
Dice Coefficient92.4
73
Polyp SegmentationEndoScene
mDice90.1
61
Medical Image SegmentationData Science Bowl 2018
Dice Coefficient92.6
15
Polyp SegmentationClinicDB (test)
mDice94.8
13
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