期刊论文详细信息
IEEE Access
iMSCGnet: Iterative Multi-Scale Context-Guided Segmentation of Skin Lesion in Dermoscopic Images
Joey Tianyi Zhou1  Feng Yang2  Yanyan Xing3  Chang'An Zhan3  Zhiwen Fang3  Yujiao Tang3  Shaofeng Yuan4 
[1] IHPC, A&x002A;STAR, Singapore;School of Biomedical Engineering, Southern Medical University, Guangzhou, China;Shanghai United Imaging Healthcare Co., Ltd., Shanghai, China;
关键词: Skin lesion segmentation;    multi-scale context;    attention;    deep supervision;   
DOI  :  10.1109/ACCESS.2020.2974512
来源: DOAJ
【 摘 要 】

Despite much effort has been devoted to skin lesion segmentation, the performance of existing methods is still not satisfactory enough for practical applications. The challenges may include fuzzy lesion boundary, uneven and low contrast, and variation of colors across space, which often lead to fragmentary segmentation and inaccurate boundary. To alleviate this problem, we propose a multi-scale context-guided network named as MSCGnet to segment the skin lesions accurately. In MSCGnet, the context information is utilized to guide the feature encoding procedure. Moreover, because of the information loss in spatial down-sampling, a context-based attention structure (CAs) is designed to select effective context features in the decoding path. Furthermore, we boost the performance of MSCGnet with iterations and term this upgraded version as iterative MSCGnet, denoted as iMSCGnet. To supervise the training of iMSCGnet in an end-to-end fashion, a novel objective function of deep supervision, which consists of the terms of each encoding layers and the terms from each MSCGnet output of iMSCGnet, is employed. Our method is evaluated extensively on the four publicly available datasets, including ISBI2016 [1], ISBI2017 [2], ISIC2018 [3] and PH2 [4] datasets. The experimental results prove the effectiveness of proposed components and show that our method generally outperforms the state-of-the-art methods.

【 授权许可】

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