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3 months ago

Latent Video Transformer

Ruslan Rakhimov Denis Volkhonskiy Alexey Artemov Denis Zorin Evgeny Burnaev

Latent Video Transformer

Abstract

The video generation task can be formulated as a prediction of future video frames given some past frames. Recent generative models for videos face the problem of high computational requirements. Some models require up to 512 Tensor Processing Units for parallel training. In this work, we address this problem via modeling the dynamics in a latent space. After the transformation of frames into the latent space, our model predicts latent representation for the next frames in an autoregressive manner. We demonstrate the performance of our approach on BAIR Robot Pushing and Kinetics-600 datasets. The approach tends to reduce requirements to 8 Graphical Processing Units for training the models while maintaining comparable generation quality.

Code Repositories

rakhimovv/lvt
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
video-generation-on-bair-robot-pushingBaseline (from LVT)
Cond: 1
FVD score: 320.9
Pred: 15
Train: 15
video-generation-on-bair-robot-pushingLVT
Cond: 1
FVD score: 125.76±2.90
Pred: 15
Train: 15
video-prediction-on-kinetics-600-12-framesLVT
Cond: 5
FVD: 224.73
Pred: 11

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