Rethinking the Transfer Learning for FCN Based Polyp Segmentation in Colonoscopy

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Abstract

Besides the complex nature of colonoscopy frames with intrinsic frame formation artefacts such as light reflections and the diversity of polyp types/shapes, the publicly available polyp segmentation training datasets are limited, small and imbalanced. In this case, the automated polyp segmentation using a deep neural network remains an open challenge due to the overfitting of training on small datasets. We proposed a simple yet effective polyp segmentation pipeline that couples the segmentation (FCN) and classification (CNN) tasks. We find the effectiveness of interactive weight transfer between dense and coarse vision tasks that mitigates the overfitting in learning. This motivates us to design a new training scheme within our segmentation pipeline. Our method is evaluated on CVC-EndoSceneStill and Kvasir-SEG datasets. It achieves 4.34% and 5.70% Polyp-IoU improvements compared to the state-of-the-art methods on the EndoSceneStill and Kvasir-SEG datasets, respectively and achieves real-time performance in inference. The model and code are available at https://github.com/MELSunny/Keras-FCN

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Wen, Y., Zhang, L., Meng, X., & Ye, X. (2023). Rethinking the Transfer Learning for FCN Based Polyp Segmentation in Colonoscopy. IEEE Access, 11, 16183–16193. https://doi.org/10.1109/ACCESS.2023.3245519

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