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Automatic segmentation of polyps from colonoscopy images plays a critical role in early screening and treatment of colorectal cancer.Although deep learning methods have made significant progress, precise polyp segmentation faces two challenges: (1) the imbalance of color appearances in the limited training dataset hinders the generalization of the model, and (2) polyps have the diverse scales, locations and shapes with blurred boundary.To address the issues, Dataset-Level Color Augmentation (DLCA) and a Convolutional Multi-scale Attention Module (CMAM) are proposed.DLCA employs the dataset-level color knowledge and generate new color appearances, to avoid the model learning false associations with colors.Meanwhile, CMAM simultaneously explores the region and boundary clues and model multi-scale context, which improves the accuracy of polyp localization and fine-grained segmentation.We conduct comprehensive experiments and compare our network with stateof-the-art methods.The proposed model is superior on multiple polyp datasets, especially on ETIS, where mDice and mIoU reach 0.839 and 0.766.Furthermore, it's validated that DLCA can be widely applied to most polyp segmentation methods, and CMAM is practical and plug-and-play.Finally, the model demonstrates promising generalization to breast ultrasound and skin lesion segmentation.
Chen et al. (Mon,) studied this question.
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