BPCN: bilateral progressive compensation network for lung infection image segmentation

Lung infection image segmentation is a key technology for autonomous understanding of the potential illness. However, current approaches usually lose the low-level details, which leads to a considerable accuracy decrease for lung infection areas with varied shapes and sizes. In this paper, we propos...

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Published inPhysics in medicine & biology Vol. 68; no. 3; pp. 35001 - 35016
Main Authors Wang, Xiaoyan, Yang, Baoqi, Pan, Xiang, Liu, Fuchang, Zhang, Sanyuan
Format Journal Article
LanguageEnglish
Published England IOP Publishing 07.02.2023
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Summary:Lung infection image segmentation is a key technology for autonomous understanding of the potential illness. However, current approaches usually lose the low-level details, which leads to a considerable accuracy decrease for lung infection areas with varied shapes and sizes. In this paper, we propose bilateral progressive compensation network (BPCN), a bilateral progressive compensation network to improve the accuracy of lung lesion segmentation through complementary learning of spatial and semantic features. The proposed BPCN are mainly composed of two deep branches. One branch is the multi-scale progressive fusion for main region features. The other branch is a flow-field based adaptive body-edge aggregation operations to explicitly learn detail features of lung infection areas which is supplement to region features. In addition, we propose a bilateral spatial-channel down-sampling to generate a hierarchical complementary feature which avoids losing discriminative features caused by pooling operations. Experimental results show that our proposed network outperforms state-of-the-art segmentation methods in lung infection segmentation on two public image datasets with or without a pseudo-label training strategy.
Bibliography:PMB-113908.R2
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content type line 23
ISSN:0031-9155
1361-6560
DOI:10.1088/1361-6560/acaf21