Abstract
The wireless capsule endoscopy is a non-invasive imaging method that allows observation of the inner lumen of the small intestine, but with the cost of a longer duration to process its resulting videos. Therefore, the scientific community has developed several machine learning strategies to help reduce that duration. Such strategies are typically trained and evaluated on small sets of images, ultimately not proving to be efficient when applied to full videos. Labelling full Capsule Endoscopy videos requires significant effort, leading to a lack of data on this medical area. Active learning strategies allow intelligent selection of datasets from a vast set of unlabelled data, maximizing learning and reducing annotation costs. In this experiment, we have explored active learning methods to reduce capsule endoscopy videos’ annotation effort by compiling smaller datasets capable of representing their content.
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Acknowledgements
National Funds finance this work through the Portuguese funding agency, FCT - Fundação para a Ciência e a Tecnologia, within project LA/P/0063/2020.
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Fonseca, F., Nunes, B., Salgado, M., Silva, A., Cunha, A. (2024). Informative Classification of Capsule Endoscopy Videos Using Active Learning. In: Cunha, A., Paiva, A., Pereira, S. (eds) Wireless Mobile Communication and Healthcare. MobiHealth 2023. Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering, vol 578. Springer, Cham. https://doi.org/10.1007/978-3-031-60665-6_23
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