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arxiv 2102.00863 v1 pith:NZDN3HFW submitted 2021-02-01 cs.CV

Self-Supervised Equivariant Scene Synthesis from Video

classification cs.CV
keywords backgroundvideocharactersdelineatedequivariantmethodmovingrespect
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a self-supervised framework to learn scene representations from video that are automatically delineated into background, characters, and their animations. Our method capitalizes on moving characters being equivariant with respect to their transformation across frames and the background being constant with respect to that same transformation. After training, we can manipulate image encodings in real time to create unseen combinations of the delineated components. As far as we know, we are the first method to perform unsupervised extraction and synthesis of interpretable background, character, and animation. We demonstrate results on three datasets: Moving MNIST with backgrounds, 2D video game sprites, and Fashion Modeling.

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