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Papers/Stepwise Feature Fusion: Local Guides Global

Stepwise Feature Fusion: Local Guides Global

Jinfeng Wang, Qiming Huang, Feilong Tang, Jia Meng, Jionglong Su, Sifan Song

2022-03-07SegmentationSemantic SegmentationMedical Image SegmentationImage Segmentation
PaperPDFCode(official)

Abstract

Colonoscopy, currently the most efficient and recognized colon polyp detection technology, is necessary for early screening and prevention of colorectal cancer. However, due to the varying size and complex morphological features of colonic polyps as well as the indistinct boundary between polyps and mucosa, accurate segmentation of polyps is still challenging. Deep learning has become popular for accurate polyp segmentation tasks with excellent results. However, due to the structure of polyps image and the varying shapes of polyps, it easy for existing deep learning models to overfitting the current dataset. As a result, the model may not process unseen colonoscopy data. To address this, we propose a new State-Of-The-Art model for medical image segmentation, the SSFormer, which uses a pyramid Transformer encoder to improve the generalization ability of models. Specifically, our proposed Progressive Locality Decoder can be adapted to the pyramid Transformer backbone to emphasize local features and restrict attention dispersion. The SSFormer achieves statet-of-the-art performance in both learning and generalization assessment.

Results

TaskDatasetMetricValueModel
Medical Image SegmentationKvasir-SEGmIoU0.8905SSFormer-L
Medical Image SegmentationKvasir-SEGmean Dice0.9357SSFormer-L
Medical Image SegmentationETIS-LARIBPOLYPDBmIoU0.72SSFormer-L
Medical Image SegmentationETIS-LARIBPOLYPDBmean Dice0.796SSFormer-L
Medical Image SegmentationCVC-ColonDBmIoU0.721SSFormer-L
Medical Image SegmentationCVC-ColonDBmean Dice0.802SSFormer-L
Medical Image Segmentation2018 Data Science BowlDice0.923SSFormer-L
Medical Image Segmentation2018 Data Science BowlmIoU0.8614SSFormer-L
Medical Image SegmentationCVC-ClinicDBmIoU0.8995SSFormer-L
Medical Image SegmentationCVC-ClinicDBmean Dice0.9447SSFormer-L

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