End-to-end Optimization of Belief and Policy Learning in Shared Autonomy Paradigms
MH Farhadi, Ali Rabiee, Sima Ghafoori, Anna Cetera, Andrew Fisher, Reza Abiri

TL;DR
This paper presents BRACE, an end-to-end framework that optimizes belief inference and assistance in shared autonomy, improving success rates and efficiency in complex human-robot interaction tasks.
Contribution
Introduces BRACE, a novel end-to-end gradient-based architecture for joint intent inference and assistance arbitration in shared autonomy systems.
Findings
BRACE outperforms SOTA methods in success rate and efficiency.
Optimal assistance decreases with goal uncertainty.
Integrated belief and policy learning yields quadratic regret reduction.
Abstract
Shared autonomy systems require principled methods for inferring user intent and determining appropriate assistance levels. This is a central challenge in human-robot interaction, where systems must be successful while being mindful of user agency. Previous approaches relied on static blending ratios or separated goal inference from assistance arbitration, leading to suboptimal performance in unstructured environments. We introduce BRACE (Bayesian Reinforcement Assistance with Context Encoding), a novel framework that fine-tunes Bayesian intent inference and context-adaptive assistance through an architecture enabling end-to-end gradient flow between intent inference and assistance arbitration. Our pipeline conditions collaborative control policies on environmental context and complete goal probability distributions. We provide analysis showing (1) optimal assistance levels should…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Reinforcement Learning in Robotics · Adversarial Robustness in Machine Learning
