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Scaling Autoregressive Video Models

About

Due to the statistical complexity of video, the high degree of inherent stochasticity, and the sheer amount of data, generating natural video remains a challenging task. State-of-the-art video generation models often attempt to address these issues by combining sometimes complex, usually video-specific neural network architectures, latent variable models, adversarial training and a range of other methods. Despite their often high complexity, these approaches still fall short of generating high quality video continuations outside of narrow domains and often struggle with fidelity. In contrast, we show that conceptually simple autoregressive video generation models based on a three-dimensional self-attention mechanism achieve competitive results across multiple metrics on popular benchmark datasets, for which they produce continuations of high fidelity and realism. We also present results from training our models on Kinetics, a large scale action recognition dataset comprised of YouTube videos exhibiting phenomena such as camera movement, complex object interactions and diverse human movement. While modeling these phenomena consistently remains elusive, we hope that our results, which include occasional realistic continuations encourage further research on comparatively complex, large scale datasets such as Kinetics.

Dirk Weissenborn, Oscar T\"ackstr\"om, Jakob Uszkoreit• 2019

Related benchmarks

TaskDatasetResultRank
Video PredictionMoving MNIST (test)--
82
Video PredictionBAIR (test)
FVD94
59
Video PredictionKinetics-600 (test)
FVD170
46
Video PredictionBAIR Robot Pushing
FVD94
38
Video PredictionBair
FVD94
34
Video PredictionBAIR Push (test)
FVD94
30
Video Frame PredictionKinetics-600
gFVD170
28
Video PredictionKinetics-600
FVD170
18
Future video predictionBAIR 64x64 and 256x256 (test)
FVD94
16
Frame predictionBair
FVD94
15
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