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Automatic polyp segmentation is critical for early prevention and diagnosis of colorectal cancer. However, diverse foreground appearance and complicated background interference severely degrade the performance of pixel-level prediction. The excessive computational overheads further hinder the practical clinical applications of existing methods. In this paper, we propose a novel Lesion-Aware Contextual Interaction Network (LACINet), which aims to explore the long-range dependencies and global contexts with friendly computing resource consumption for polyp segmentation. Specifically, we present a Lesion-aware Pyramid Mechanism (LPM) to weaken the influence of background noise and refine lesion-related features. We also develop a robust Representation Enhancement Decoder (RED) to learn global feature representations and aggregate the multi-level contexts. In RED, we first build a Non-local Contextual Lesion Interaction Module (NCLIM) to integrate the cross-level contextual information for obtaining the intrinsic feature representations, and then design a Tri-branching Multi-scale Perceptual Self-attention Module (TMPSM) to sufficiently excavate the global features. Notably, we introduce an asymmetric multi-branch strategy to alleviate the computational burden. The experimental results on several widely-used benchmark datasets demonstrate the superior performance of our proposed LACINet in comparison with state-of-the-art methods.
Li et al. (Sun,) studied this question.