State Estimation and Control of Dynamic Systems from High-Dimensional Image Data
Journal:
arXiv
Published Date:
May 30, 2025
Abstract
Accurate state estimation is critical for optimal policy design in dynamic
systems. However, obtaining true system states is often impractical or
infeasible, complicating the policy learning process. This paper introduces a
novel neural architecture that integrates spatial feature extraction using
convolutional neural networks (CNNs) and temporal modeling through gated
recurrent units (GRUs), enabling effective state representation from sequences
of images and corresponding actions. These learned state representations are
used to train a reinforcement learning agent with a Deep Q-Network (DQN).
Experimental results demonstrate that our proposed approach enables real-time,
accurate estimation and control without direct access to ground-truth states.
Additionally, we provide a quantitative evaluation methodology for assessing
the accuracy of the learned states, highlighting their impact on policy
performance and control stability.