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Statistical transformer networks: learning shape and appearance models via self supervision

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arxiv 1804.02541 v1 pith:AHCQUG52 submitted 2018-04-07 cs.CV cs.LG

Statistical transformer networks: learning shape and appearance models via self supervision

classification cs.CV cs.LG
keywords modelshapestatisticalappearancelearntnetworkstatnsupervision
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We generalise Spatial Transformer Networks (STN) by replacing the parametric transformation of a fixed, regular sampling grid with a deformable, statistical shape model which is itself learnt. We call this a Statistical Transformer Network (StaTN). By training a network containing a StaTN end-to-end for a particular task, the network learns the optimal nonrigid alignment of the input data for the task. Moreover, the statistical shape model is learnt with no direct supervision (such as landmarks) and can be reused for other tasks. Besides training for a specific task, we also show that a StaTN can learn a shape model using generic loss functions. This includes a loss inspired by the minimum description length principle in which an appearance model is also learnt from scratch. In this configuration, our model learns an active appearance model and a means to fit the model from scratch with no supervision at all, even identity labels.

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