Published October 24, 2020 | Version v1
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Dataset for "Unsupervised Learning of Lagrangian Dynamics from Images for Prediction and Control"

  • 1. Princeton University

Description

Dataset to reproduce results of "Unsupervised Learning of Lagrangian Dynamics from Images for Prediction and Control"

 

Abstract: Recent approaches for modelling dynamics of physical systems with neural networks enforce Lagrangian or Hamiltonian structure to improve prediction and generalization. However, when coordinates are embedded in high-dimensional data such as images, these approaches either lose interpretability or can only be applied to one particular example. We introduce a new unsupervised neural network model that learns Lagrangian dynamics from images, with interpretability that benefits prediction and control. The model infers Lagrangian dynamics on generalized coordinates that are simultaneously learned with a coordinate-aware variational autoencoder (VAE). The VAE is designed to account for the geometry of physical systems composed of multiple rigid bodies in the plane. By inferring interpretable Lagrangian dynamics, the model learns physical system properties, such as kinetic and potential energy, which enables long-term prediction of dynamics in the image space and synthesis of energy-based controllers.

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md5:e47da82e7581f7d02eab8d8cd87b35b8
4.5 GB Download
md5:75b5213d9bfaf54eee8bd34100104ce9
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md5:cb9a09aee2d04aa6ebecc0e3497d077e
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md5:06297452075d1a9c1c76f834b52baa31
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md5:f93dd82f973fc0482c71762f1fd365cc
210.5 MB Download
md5:cc3d95ed5db1e4e85ee3b2078890e59c
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md5:0e2c702f1900253b6bfd0db64af1ac5b
421.1 MB Download

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