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DeepCut: object segmentation from bounding box annotations using convolutional neural networks
Publication available at: | https://arxiv.org/pdf/1605.07866 |
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Title: | DeepCut: object segmentation from bounding box annotations using convolutional neural networks |
Authors: | Rajchl, M Lee, M Oktay, O Kamnitsas, K Passerat-Palmbach, J Bai, W Kainz, B Rueckert, D |
Item Type: | Working Paper |
Abstract: | In this paper, we propose DeepCut, a method to obtain pixelwise object segmentations given an image dataset labelled with bounding box annotations. It extends the approach of the well-known GrabCut method to include machine learning by training a neural network classifier from bounding box annotations. We formulate the problem as an energy minimisation problem over a densely-connected conditional random field and iteratively update the training targets to obtain pixelwise object segmentations. Additionally, we propose variants of the DeepCut method and compare those to a naive approach to CNN training under weak supervision. We test its applicability to solve brain and lung segmentation problems on a challenging fetal magnetic resonance dataset and obtain encouraging results in terms of accuracy. |
Issue Date: | 25-May-2016 |
URI: | http://hdl.handle.net/10044/1/77211 |
Publisher: | arXiv |
Copyright Statement: | © 2016 The Author(s) |
Sponsor/Funder: | Wellcome Trust/EPSRC |
Funder's Grant Number: | NS/A000025/1 |
Publication Status: | Published |
Open Access location: | https://arxiv.org/pdf/1605.07866 |
Appears in Collections: | Computing |