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Papers/SALI: Short-term Alignment and Long-term Interaction Netwo...

SALI: Short-term Alignment and Long-term Interaction Network for Colonoscopy Video Polyp Segmentation

Qiang Hu, Zhenyu Yi, Ying Zhou, Fang Peng, Mei Liu, Qiang Li, Zhiwei Wang

2024-06-19Video Polyp SegmentationSegmentationVideo SegmentationVideo Semantic Segmentation
PaperPDFCode(official)

Abstract

Colonoscopy videos provide richer information in polyp segmentation for rectal cancer diagnosis. However, the endoscope's fast moving and close-up observing make the current methods suffer from large spatial incoherence and continuous low-quality frames, and thus yield limited segmentation accuracy. In this context, we focus on robust video polyp segmentation by enhancing the adjacent feature consistency and rebuilding the reliable polyp representation. To achieve this goal, we in this paper propose SALI network, a hybrid of Short-term Alignment Module (SAM) and Long-term Interaction Module (LIM). The SAM learns spatial-aligned features of adjacent frames via deformable convolution and further harmonizes them to capture more stable short-term polyp representation. In case of low-quality frames, the LIM stores the historical polyp representations as a long-term memory bank, and explores the retrospective relations to interactively rebuild more reliable polyp features for the current segmentation. Combing SAM and LIM, the SALI network of video segmentation shows a great robustness to the spatial variations and low-visual cues. Benchmark on the large-scale SUNSEG verifies the superiority of SALI over the current state-of-the-arts by improving Dice by 2.1%, 2.5%, 4.1% and 1.9%, for the four test sub-sets, respectively. Codes are at https://github.com/Scatteredrain/SALI.

Results

TaskDatasetMetricValueModel
Medical Image SegmentationSUN-SEG-Easy (Unseen)Dice0.825SALI
Medical Image SegmentationSUN-SEG-Easy (Unseen)S measure0.87SALI
Medical Image SegmentationSUN-SEG-Easy (Unseen)Sensitivity0.811SALI
Medical Image SegmentationSUN-SEG-Easy (Unseen)mean E-measure0.92SALI
Medical Image SegmentationSUN-SEG-Easy (Unseen)mean F-measure0.831SALI
Medical Image SegmentationSUN-SEG-Easy (Unseen)weighted F-measure0.794SALI
Medical Image SegmentationSUN-SEG-Hard (Unseen)Dice0.822SALI
Medical Image SegmentationSUN-SEG-Hard (Unseen)S-Measure0.874SALI
Medical Image SegmentationSUN-SEG-Hard (Unseen)Sensitivity0.83SALI
Medical Image SegmentationSUN-SEG-Hard (Unseen)mean E-measure0.92SALI
Medical Image SegmentationSUN-SEG-Hard (Unseen)mean F-measure0.822SALI
Medical Image SegmentationSUN-SEG-Hard (Unseen)weighted F-measure0.79SALI

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