SOTAVerified

PDE-Driven Spatiotemporal Disentanglement

2020-08-04ICLR 2021Code Available1· sign in to hype

Jérémie Donà, Jean-Yves Franceschi, Sylvain Lamprier, Patrick Gallinari

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

A recent line of work in the machine learning community addresses the problem of predicting high-dimensional spatiotemporal phenomena by leveraging specific tools from the differential equations theory. Following this direction, we propose in this article a novel and general paradigm for this task based on a resolution method for partial differential equations: the separation of variables. This inspiration allows us to introduce a dynamical interpretation of spatiotemporal disentanglement. It induces a principled model based on learning disentangled spatial and temporal representations of a phenomenon to accurately predict future observations. We experimentally demonstrate the performance and broad applicability of our method against prior state-of-the-art models on physical and synthetic video datasets.

Tasks

Reproductions