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Papers/Progressively Normalized Self-Attention Network for Video ...

Progressively Normalized Self-Attention Network for Video Polyp Segmentation

Ge-Peng Ji, Yu-Cheng Chou, Deng-Ping Fan, Geng Chen, Huazhu Fu, Debesh Jha, Ling Shao

2021-05-18Video Polyp SegmentationSegmentation
PaperPDFCodeCodeCode

Abstract

Existing video polyp segmentation (VPS) models typically employ convolutional neural networks (CNNs) to extract features. However, due to their limited receptive fields, CNNs can not fully exploit the global temporal and spatial information in successive video frames, resulting in false-positive segmentation results. In this paper, we propose the novel PNS-Net (Progressively Normalized Self-attention Network), which can efficiently learn representations from polyp videos with real-time speed (~140fps) on a single RTX 2080 GPU and no post-processing. Our PNS-Net is based solely on a basic normalized self-attention block, equipping with recurrence and CNNs entirely. Experiments on challenging VPS datasets demonstrate that the proposed PNS-Net achieves state-of-the-art performance. We also conduct extensive experiments to study the effectiveness of the channel split, soft-attention, and progressive learning strategy. We find that our PNS-Net works well under different settings, making it a promising solution to the VPS task.

Results

TaskDatasetMetricValueModel
Medical Image SegmentationSUN-SEG-Easy (Unseen)Dice0.676PNSNet
Medical Image SegmentationSUN-SEG-Easy (Unseen)S measure0.767PNSNet
Medical Image SegmentationSUN-SEG-Easy (Unseen)Sensitivity0.574PNSNet
Medical Image SegmentationSUN-SEG-Easy (Unseen)mean E-measure0.744PNSNet
Medical Image SegmentationSUN-SEG-Easy (Unseen)mean F-measure0.664PNSNet
Medical Image SegmentationSUN-SEG-Easy (Unseen)weighted F-measure0.616PNSNet
Medical Image SegmentationSUN-SEG-Hard (Unseen)Dice0.675PNSNet
Medical Image SegmentationSUN-SEG-Hard (Unseen)S-Measure0.767PNSNet
Medical Image SegmentationSUN-SEG-Hard (Unseen)Sensitivity0.579PNSNet
Medical Image SegmentationSUN-SEG-Hard (Unseen)mean E-measure0.755PNSNet
Medical Image SegmentationSUN-SEG-Hard (Unseen)mean F-measure0.656PNSNet
Medical Image SegmentationSUN-SEG-Hard (Unseen)weighted F-measure0.609PNSNet

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