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ColonFormer: An Efficient Transformer Based Method for Colon Polyp Segmentation

Nguyen Thanh DucSchool of Information and Communication Technology, Hanoi University of Science and Technology, Hanoi, VietnamThi-Oanh NguyenSchool of Information and Communication Technology, Hanoi University of Science and Technology, Hanoi, VietnamNguyễn Thị Thanh ThủyFaculty of Information Technology and Software Engineering Laboratory, University of Science, VNU-HCM, Ho Chi Minh, VietnamMinh–Triet TranUniversity of Science, VNU-HCM, Ho Chi Minh, VietnamDinh Viet SangSchool of Information and Communication Technology, Hanoi University of Science and Technology, Hanoi, Vietnam
2022en
ABI

Abstract

Identifying polyps is challenging for automatic analysis of endoscopic images in computer-aided clinical support systems. Models based on convolutional networks (CNN), transformers, and their combinations have been proposed to segment polyps with promising results. However, those approaches have limitations either in modeling the local appearance of the polyps only or lack of multi-level feature representation for spatial dependency in the decoding process. This paper proposes a novel network, namely ColonFormer, to address these limitations. ColonFormer is an encoder-decoder architecture capable of modeling long-range semantic information at both encoder and decoder branches. The encoder is a lightweight architecture based on transformers for modeling global semantic relations at multi scales. The decoder is a hierarchical network structure designed for learning multi-level features to enrich feature representation. Besides, a refinement module is added with a new skip connection technique to refine the boundary of polyp objects in the global map for accurate segmentation. Extensive experiments have been conducted on five popular benchmark datasets for polyp segmentation, including Kvasir, CVC-Clinic DB, CVC-ColonDB, CVC-T, and ETIS-Larib. Experimental results show that our ColonFormer outperforms other state-of-the-art methods on all benchmark datasets.

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