Hierarchical Intention Tracking with Switching Trees for Real-Time Adaptation to Dynamic Human Intentions during Collaboration
Zhe Huang, Ye-Ji Mun, Fatemeh Cheraghi Pouria, Katherine Driggs-Campbell

TL;DR
This paper introduces a hierarchical intention tracking algorithm for collaborative robots, enabling real-time adaptation to dynamic human intentions across multiple levels, improving efficiency, safety, and user trust during collaborative tasks.
Contribution
The paper presents a novel hierarchical intention tracking method using intention trees and Bayesian filtering, allowing robots to adaptively interpret complex human intentions in real time.
Findings
HIT system outperforms existing solutions in efficiency and safety
Enhances user trust and reduces task interruptions
Successfully tracks intentions at multiple hierarchical levels
Abstract
During collaborative tasks, human behavior is guided by multiple levels of intentions that evolve over time, such as task sequence preferences and interaction strategies. To adapt to these changing preferences and promptly correct any inaccurate estimations, collaborative robots must accurately track these dynamic human intentions in real time. We propose a Hierarchical Intention Tracking (HIT) algorithm for collaborative robots to track dynamic and hierarchical human intentions effectively in real time. HIT represents human intentions as intention trees with arbitrary depth, and probabilistically tracks human intentions by Bayesian filtering, upward measurement propagation, and downward posterior propagation across all levels. We develop a HIT-based robotic system that dynamically switches between Interaction-Task and Verification-Task trees for a collaborative assembly task, allowing…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Social Robot Interaction and HRI · Robot Manipulation and Learning
