Hamiltonian GAN

A growing body of work leverages the Hamiltonian formalism as an inductive bias for physically plausible neural network based video generation. The structure of the Hamiltonian ensures conservation of a learned quantity (e.g., energy) and imposes a phase-space interpretation on the low-dimensional manifold underlying the input video. While this interpretation has the potential to facilitate the integration of learned representations in downstream tasks, existing methods are limited in their applicability as they require a structural prior for the configuration space at design time. In this work, we present a GAN-based video generation pipeline with a learned configuration space map and Hamiltonian neural network motion model, to learn a representation of the configuration space from data. We train our model with a physics-inspired cyclic-coordinate loss function which encourages a minimal representation of the configuration space and improves interpretability. We demonstrate the efficacy and advantages of our approach on the Hamiltonian Dynamics Suite Toy Physics dataset.

READ FULL TEXT

page 6

page 7

research
09/23/2022

Learning Interpretable Dynamics from Images of a Freely Rotating 3D Rigid Body

In many real-world settings, image observations of freely rotating 3D ri...
research
12/03/2020

Benchmarking Energy-Conserving Neural Networks for Learning Dynamics from Data

The last few years have witnessed an increased interest in incorporating...
research
02/28/2022

Learning Neural Hamiltonian Dynamics: A Methodological Overview

The past few years have witnessed an increased interest in learning Hami...
research
02/03/2023

Fixed-kinetic Neural Hamiltonian Flows for enhanced interpretability and reduced complexity

Normalizing Flows (NF) are Generative models which are particularly robu...
research
11/28/2021

Neural Symplectic Integrator with Hamiltonian Inductive Bias for the Gravitational N-body Problem

The gravitational N-body problem, which is fundamentally important in as...
research
12/02/2021

Hamiltonian prior to Disentangle Content and Motion in Image Sequences

We present a deep latent variable model for high dimensional sequential ...
research
02/28/2021

Neural Network Approach to Construction of Classical Integrable Systems

Integrable systems have provided various insights into physical phenomen...

Please sign up or login with your details

Forgot password? Click here to reset