TL;DR
This paper introduces an information-theoretic framework for creating minimal, task-specific representations in robotic control, improving robustness and efficiency over traditional full-state estimation methods.
Contribution
It develops a novel algorithmic approach using information bottlenecks to synthesize task-driven representations and control policies for robotic systems.
Findings
Enhanced robustness to measurement uncertainty
Effective control of a spring-loaded inverted pendulum
Significant computational efficiency improvements
Abstract
Our goal is to develop a principled and general algorithmic framework for task-driven estimation and control for robotic systems. State-of-the-art approaches for controlling robotic systems typically rely heavily on accurately estimating the full state of the robot (e.g., a running robot might estimate joint angles and velocities, torso state, and position relative to a goal). However, full state representations are often excessively rich for the specific task at hand and can lead to significant computational inefficiency and brittleness to errors in state estimation. In contrast, we present an approach that eschews such rich representations and seeks to create task-driven representations. The key technical insight is to leverage the theory of information bottlenecks}to formalize the notion of a "task-driven representation" in terms of information theoretic quantities that measure the…
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