Situationally-Aware Dynamics Learning
Alejandro Murillo-Gonzalez, Lantao Liu

TL;DR
This paper introduces a framework for online learning of hidden state representations in robots, enabling real-time adaptation to dynamic environments through probabilistic modeling and change detection.
Contribution
It proposes a novel approach using a Generalized Hidden Parameter Markov Decision Process and Bayesian change detection for adaptive, context-aware robot decision-making.
Findings
Improved data efficiency in navigation tasks.
Enhanced robustness and safety in unstructured terrain navigation.
Effective segmentation of environmental changes using Bayesian change detection.
Abstract
Autonomous robots operating in complex, unstructured environments face significant challenges due to latent, unobserved factors that obscure their understanding of both their internal state and the external world. Addressing this challenge would enable robots to develop a more profound grasp of their operational context. To tackle this, we propose a novel framework for online learning of hidden state representations, with which the robots can adapt in real-time to uncertain and dynamic conditions that would otherwise be ambiguous and result in suboptimal or erroneous behaviors. Our approach is formalized as a Generalized Hidden Parameter Markov Decision Process, which explicitly models the influence of unobserved parameters on both transition dynamics and reward structures. Our core innovation lies in learning online the joint distribution of state transitions, which serves as an…
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