VideoFlow: A Conditional Flow-Based Model for Stochastic Video Generation
Abstract
Generative models that can model and predict sequences of future events can, in principle, learn to capture complex real-world phenomena, such as physical interactions. However, a central challenge in video prediction is that the future is highly uncertain: a sequence of past observations of events can imply many possible futures. Although a number of recent works have studied probabilistic models that can represent uncertain futures, such models are either extremely expensive computationally as in the case of pixel-level autoregressive models, or do not directly optimize the likelihood of the data. To our knowledge, our work is the first to propose multi-frame video prediction with normalizing flows, which allows for direct optimization of the data likelihood, and produces high-quality stochastic predictions. We describe an approach for modeling the latent space dynamics, and demonstrate that flow-based generative models offer a viable and competitive approach to generative modelling of video.
Keywords
Cite
@article{arxiv.1903.01434,
title = {VideoFlow: A Conditional Flow-Based Model for Stochastic Video Generation},
author = {Manoj Kumar and Mohammad Babaeizadeh and Dumitru Erhan and Chelsea Finn and Sergey Levine and Laurent Dinh and Durk Kingma},
journal= {arXiv preprint arXiv:1903.01434},
year = {2020}
}
Comments
ICLR 2020 Camera-Ready. Previous title: VideoFlow: A Flow-Based Generative Model for Video