Proactive Robot Control for Collaborative Manipulation Using Human Intent
Zhanibek Rysbek, Siyu Li, Afagh Mehri Shervedani, Milos Zefran

TL;DR
This paper presents a hierarchical robot control framework that interprets human intent through force exchanges, enabling collaborative manipulation with dynamic role assignment and effective communication, demonstrated on a UR10e robot with positive human study results.
Contribution
The paper introduces a real-time intent recognition and hierarchical control system inspired by human behavior for collaborative robot manipulation.
Findings
Robot accurately recognizes human input in real-time.
Effective communication of robot intent achieved.
Successful resolution of role conflicts in collaboration.
Abstract
Collaborative manipulation task often requires negotiation using explicit or implicit communication. An important example is determining where to move when the goal destination is not uniquely specified, and who should lead the motion. This work is motivated by the ability of humans to communicate the desired destination of motion through back-and-forth force exchanges. Inherent to these exchanges is also the ability to dynamically assign a role to each participant, either taking the initiative or deferring to the partner's lead. In this paper, we propose a hierarchical robot control framework that emulates human behavior in communicating a motion destination to a human collaborator and in responding to their actions. At the top level, the controller consists of a set of finite-state machines corresponding to different levels of commitment of the robot to its desired goal configuration.…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Robot Manipulation and Learning · Reinforcement Learning in Robotics
