End-to-end Optimization of Belief and Policy Learning in Shared Autonomy Paradigms

Computer Vision & MultiModal AI
Published: arXiv: 2601.23285v1
Authors

MH Farhadi Ali Rabiee Sima Ghafoori Anna Cetera Andrew Fisher Reza Abiri

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 decrease with goal uncertainty and increase with environmental constraint severity, and (2) integrating belief information into policy learning yields a quadratic expected regret advantage over sequential approaches. We validated our algorithm against SOTA methods (IDA, DQN) using a three-part evaluation progressively isolating distinct challenges of end-effector control: (1) core human-interaction dynamics in a 2D human-in-the-loop cursor task, (2) non-linear dynamics of a robotic arm, and (3) integrated manipulation under goal ambiguity and environmental constraints. We demonstrate improvements over SOTA, achieving 6.3% higher success rates and 41% increased path efficiency, and 36.3% success rate and 87% path efficiency improvement over unassisted control. Our results confirmed that integrated optimization is most beneficial in complex, goal-ambiguous scenarios, and is generalizable across robotic domains requiring goal-directed assistance, advancing the SOTA for adaptive shared autonomy.

Paper Summary

Problem
Shared autonomy is a control paradigm where a human and an automated system work together to operate a device, with the system adapting its assistance to the situation. However, the core challenge lies in the tension between two critical processes: inferring the user's goal (a probabilistic inference problem) and determining the appropriate level of assistance (an optimization problem). Prior approaches typically addressed these challenges separately or sequentially, leading to suboptimal results.
Key Innovation
The research introduces a novel framework called BRACE (Bayesian Reinforcement Assistance with Context Encoding), which integrates goal inference and assistance arbitration end-to-end. BRACE processes the full Bayesian goal distribution, conditioning collaborative control policies on environmental context and complete goal probability distributions. This approach allows for a more nuanced reaction to user uncertainty and environmental constraints.
Practical Impact
The BRACE framework has the potential to improve assistive robotics, particularly for users with motor impairments. By adapting assistance levels to the user's goal uncertainty and environmental constraints, BRACE can provide more effective support, preserving user agency while ensuring precision-critical tasks are completed successfully. This research could also be applied to other shared autonomy scenarios, such as collaborative robots or autonomous vehicles.
Analogy / Intuitive Explanation
Imagine you're trying to grasp a small pill bottle with a robotic arm. The robotic arm needs to infer whether you intend to grasp the pill bottle or a large water glass. If the arm is uncertain about your goal, it should provide minimal assistance during the reaching phase to preserve your agency. However, once it's confident that you're aiming for the pill bottle, it should increase support to ensure a precise grasp. BRACE's end-to-end integration of goal inference and assistance arbitration allows the robotic arm to adapt its assistance levels in real-time, based on the user's goal uncertainty and environmental constraints.
Paper Information
Categories:
cs.RO cs.AI cs.HC cs.LG
Published Date:

arXiv ID:

2601.23285v1

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