Journal ArticleOpen Access
Real-Time Polyp Detection, Localization and Segmentation in Colonoscopy Using Deep Learning
Authors
Author Affiliations
Innovative Cryogenic Engineering (United Kingdom), Almega, Simula Metropolitan Center for Digital Engineering, UiT The Arctic University of Norway, ...
Published InIEEE Access
Year2021
Citations388
Abstract
Computer-aided detection, localisation, and segmentation methods can help improve colonoscopy procedures. Even though many methods have been built to tackle automatic detection and segmentation of polyps, benchmarking of state-of-the-art methods still remains an open problem. This is due to the increasing number of researched computer vision methods that can be applied to polyp datasets. Benchmarking of novel methods can provide a direction to the development of automated polyp detection and segmentation tasks. Furthermore, it ensures that the produced results in the community are reproducible and provide a fair comparison of developed methods. In this paper, we benchmark several recent state-of-the-art methods using Kvasir-SEG, an open-access dataset of colonoscopy images for polyp detection, localisation, and segmentation evaluating both method accuracy and…
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