Deepcut: Object segmentation from bounding box annotations using convolutional neural networks
IEEE transactions on medical imaging, 2016•ieeexplore.ieee.org
In this paper, we propose DeepCut, a method to obtain pixelwise object segmentations
given an image dataset labelled weak annotations, in our case bounding boxes. It extends
the approach of the well-known GrabCut [1] 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 …
given an image dataset labelled weak annotations, in our case bounding boxes. It extends
the approach of the well-known GrabCut [1] 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 …
In this paper, we propose DeepCut, a method to obtain pixelwise object segmentations given an image dataset labelled weak annotations, in our case bounding boxes. It extends the approach of the well-known GrabCut[1] 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 naïve 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.
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