CVOct 22, 2025

LyTimeT: Towards Robust and Interpretable State-Variable Discovery

arXiv:2510.19716v11 citationsh-index: 9
Originality Incremental advance
AI Analysis

This addresses the challenge of robust and interpretable state-variable discovery for dynamical systems analysis, though it appears incremental as it combines existing techniques like attention and stability constraints.

The paper tackles the problem of extracting true dynamical variables from high-dimensional video despite visual distractions like background motion and occlusions, proposing LyTimeT, a two-phase framework that achieves the lowest analytical mean squared error among baselines and remains invariant under background perturbations.

Extracting the true dynamical variables of a system from high-dimensional video is challenging due to distracting visual factors such as background motion, occlusions, and texture changes. We propose LyTimeT, a two-phase framework for interpretable variable extraction that learns robust and stable latent representations of dynamical systems. In Phase 1, LyTimeT employs a spatio-temporal TimeSformer-based autoencoder that uses global attention to focus on dynamically relevant regions while suppressing nuisance variation, enabling distraction-robust latent state learning and accurate long-horizon video prediction. In Phase 2, we probe the learned latent space, select the most physically meaningful dimensions using linear correlation analysis, and refine the transition dynamics with a Lyapunov-based stability regularizer to enforce contraction and reduce error accumulation during roll-outs. Experiments on five synthetic benchmarks and four real-world dynamical systems, including chaotic phenomena, show that LyTimeT achieves mutual information and intrinsic dimension estimates closest to ground truth, remains invariant under background perturbations, and delivers the lowest analytical mean squared error among CNN-based (TIDE) and transformer-only baselines. Our results demonstrate that combining spatio-temporal attention with stability constraints yields predictive models that are not only accurate but also physically interpretable.

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