{ "id": "1807.07559", "version": "v1", "published": "2018-07-19T17:56:37.000Z", "updated": "2018-07-19T17:56:37.000Z", "title": "Capsule Networks against Medical Imaging Data Challenges", "authors": [ "Amelia Jiménez-Sánchez", "Shadi Albarqouni", "Diana Mateus" ], "comment": "10 pages, 3 figures, accepted at MICCAI-LABELS 2018 Workshop", "categories": [ "cs.CV" ], "abstract": "A key component to the success of deep learning is the availability of massive amounts of training data. Building and annotating large datasets for solving medical image classification problems is today a bottleneck for many applications. Recently, capsule networks were proposed to deal with shortcomings of Convolutional Neural Networks (ConvNets). In this work, we compare the behavior of capsule networks against ConvNets under typical datasets constraints of medical image analysis, namely, small amounts of annotated data and class-imbalance. We evaluate our experiments on MNIST, Fashion-MNIST and medical (histological and retina images) publicly available datasets. Our results suggest that capsule networks can be trained with less amount of data for the same or better performance and are more robust to an imbalanced class distribution, which makes our approach very promising for the medical imaging community.", "revisions": [ { "version": "v1", "updated": "2018-07-19T17:56:37.000Z" } ], "analyses": { "keywords": [ "medical imaging data challenges", "capsule networks", "solving medical image classification problems", "convolutional neural networks" ], "note": { "typesetting": "TeX", "pages": 10, "language": "en", "license": "arXiv", "status": "editable" } } }