Variational autoencoders with latent high-dimensional steady geometric flows for dynamics
Andrew Gracyk

TL;DR
This paper introduces a novel Riemannian VAE framework with geometric latent dynamics governed by steady flows, enhancing the expressiveness and robustness of latent representations for PDE-type data.
Contribution
It develops a geometric flow-based VAE with a regularizing steady-state term, improving latent manifold properties and out-of-distribution performance.
Findings
Outperforms traditional VAE on key datasets.
Reduces out-of-distribution error by 15-35%.
Maintains robust latent manifold geometry.
Abstract
We develop Riemannian approaches to variational autoencoders (VAEs) for PDE-type ambient data with regularizing geometric latent dynamics, which we refer to as VAE-DLM, or VAEs with dynamical latent manifolds. We redevelop the VAE framework such that manifold geometries, subject to our geometric flow, embedded in Euclidean space are learned in the intermediary latent space developed by encoders and decoders. By tailoring the geometric flow in which the latent space evolves, we induce latent geometric properties of our choosing, which are reflected in empirical performance. We reformulate the traditional evidence lower bound (ELBO) loss with a considerate choice of prior. We develop a linear geometric flow with a steady-state regularizing term. This flow requires only automatic differentiation of one time derivative, and can be solved in moderately high dimensions in a physics-informed…
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Taxonomy
TopicsImage Processing and 3D Reconstruction
MethodsFocus
