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Symbolic pregression: Discovering physical laws from distorted video

Silviu‐Marian Udrescu, Max Tegmark

2021Physical review. E53 citationsDOIOpen Access PDF

Abstract

We present a method for unsupervised learning of equations of motion for objects in raw and optionally distorted unlabeled synthetic video (or, more generally, for discovering and modeling predictable features in time-series data). We first train an autoencoder that maps each video frame into a low-dimensional latent space where the laws of motion are as simple as possible, by minimizing a combination of nonlinearity, acceleration, and prediction error. Differential equations describing the motion are then discovered using Pareto-optimal symbolic regression. We find that our pre-regression ("pregression") step is able to rediscover Cartesian coordinates of unlabeled moving objects even when the video is distorted by a generalized lens. Using intuition from multidimensional knot theory, we find that the pregression step is facilitated by first adding extra latent space dimensions to avoid topological problems during training and then removing these extra dimensions via principal component analysis. An inertial frame is autodiscovered by minimizing the combined equation complexity for multiple experiments.

Topics & Concepts

AutoencoderPrincipal component analysisComputer scienceArtificial intelligenceRegressionMathematicsBarycentric coordinate systemComputer visionAlgorithmPattern recognition (psychology)Artificial neural networkGeometryStatisticsModel Reduction and Neural NetworksImage Processing Techniques and ApplicationsAdvanced Vision and Imaging
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