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Transformation-based Adversarial Video Prediction on Large-Scale Data

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arxiv 2003.04035 v3 pith:6KN37TC5 submitted 2020-03-09 cs.CV cs.LG

Transformation-based Adversarial Video Prediction on Large-Scale Data

classification cs.CV cs.LG
keywords videorecurrentadversarialcomplexlarge-scaleperformancepredictionprevious
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent breakthroughs in adversarial generative modeling have led to models capable of producing video samples of high quality, even on large and complex datasets of real-world video. In this work, we focus on the task of video prediction, where given a sequence of frames extracted from a video, the goal is to generate a plausible future sequence. We first improve the state of the art by performing a systematic empirical study of discriminator decompositions and proposing an architecture that yields faster convergence and higher performance than previous approaches. We then analyze recurrent units in the generator, and propose a novel recurrent unit which transforms its past hidden state according to predicted motion-like features, and refines it to handle dis-occlusions, scene changes and other complex behavior. We show that this recurrent unit consistently outperforms previous designs. Our final model leads to a leap in the state-of-the-art performance, obtaining a test set Frechet Video Distance of 25.7, down from 69.2, on the large-scale Kinetics-600 dataset.

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