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arxiv 1806.09070 v1 pith:2SKWXPMP submitted 2018-06-24 cs.GR cs.LGstat.ML

Generative Models for Pose Transfer

classification cs.GR cs.LGstat.ML
keywords generativeposeactionsdetectionk-nnmodelsperformingperson
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We investigate nearest neighbor and generative models for transferring pose between persons. We take in a video of one person performing a sequence of actions and attempt to generate a video of another person performing the same actions. Our generative model (pix2pix) outperforms k-NN at both generating corresponding frames and generalizing outside the demonstrated action set. Our most salient contribution is determining a pipeline (pose detection, face detection, k-NN based pairing) that is effective at perform-ing the desired task. We also detail several iterative improvements and failure modes.

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