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arxiv: 1806.08216 · v2 · pith:TR6RVZ66 · submitted 2018-06-09 · eess.IV · cs.NE

Autoencoders for Multi-Label Prostate MR Segmentation

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classification eess.IV cs.NE
keywords segmentationmulti-labelprostateanatomyappliedautoencoderautoencodersdoing
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Organ image segmentation can be improved by implementing prior knowledge about the anatomy. One way of doing this is by training an autoencoder to learn a lowdimensional representation of the segmentation. In this paper, this is applied in multi-label prostate MR segmentation, with some positive results.

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