TL;DR
This paper introduces a novel deep learning segmentation framework for COVID-19 lung infections on CT images, combining edge and semantic supervision with attention-based feature fusion to improve accuracy.
Contribution
It proposes a deep co-supervision scheme with edge and semantic modules and an attention fusion mechanism, enhancing feature learning and segmentation performance over existing methods.
Findings
Significant improvement in Dice scores over baseline and existing methods.
Effective multi-scale feature fusion reduces semantic gaps.
Demonstrated robustness across four COVID-19 CT datasets.
Abstract
Due to the irregular shapes,various sizes and indistinguishable boundaries between the normal and infected tissues, it is still a challenging task to accurately segment the infected lesions of COVID-19 on CT images. In this paper, a novel segmentation scheme is proposed for the infections of COVID-19 by enhancing supervised information and fusing multi-scale feature maps of different levels based on the encoder-decoder architecture. To this end, a deep collaborative supervision (Co-supervision) scheme is proposed to guide the network learning the features of edges and semantics. More specifically, an Edge Supervised Module (ESM) is firstly designed to highlight low-level boundary features by incorporating the edge supervised information into the initial stage of down-sampling. Meanwhile, an Auxiliary Semantic Supervised Module (ASSM) is proposed to strengthen high-level semantic…
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