• Skip to main content
  • Skip to secondary menu
  • Skip to primary sidebar
  • Skip to footer
  • IEEE.org
  • IEEE Xplore
  • IEEE Standards
  • IEEE Spectrum
  • More Sites

IEEE Robotics & Automation Magazine

  • IEEE.org
  • IEEE Xplore
  • IEEE Standards
  • IEEE Spectrum
  • More Sites

Large-Language-Model-Aided Assistive Robot for Single-Operator Bimanual Teleoperation: Introduction and Validation of a Flexible Assistance System

April 17, 2026 by Haolin Fei Songlin Ma School of Engineering, Lancaster University, Lancaster, U.K. Guanglong Du Elmira Yadollahi Hak-Keung Lam Angela Faragasso

Abstract:

Bimanual teleoperation tasks are highly demanding for human operators, requiring the simultaneous control of two robotic arms while managing complex coordination and cognitive load. Current approaches to this challenge often rely on rigid control schemes or task-specific automations that do not adapt well to dynamic environments or varied operator needs. This article presents a novel large language model (LLM)-aided bimanual teleoperation assistant (BTLA) that helps operators control dual-arm robots through an intuitive voice command interface and variable autonomy. The BTLA system enables a hybrid control paradigm by combining natural language interaction for an assistive robot arm with direct teleoperation of the dominant robotic arm. Our system implements six core manipulation skills with varying autonomy, ranging from direct mirroring to autonomous object manipulation. The BTLA leverages the LLM to interpret natural language commands and select an appropriate assistance mode based on task requirements and operator preferences. Experimental validation on bimanual object manipulation tasks demonstrates that the BTLA system yields a 240.8% increase in success rate over solo teleoperation and a 69.9% increase over dyadic teleoperation, while significantly reducing operator mental workload. In addition, we validate our approach on a physical dual-arm UR3e robot system, achieving a 90% success rate on challenging soft bottle handling and box transportation tasks.

For more about this article see link below.

https://ieeexplore.ieee.org/document/11317789

For the open access PDF link of this article please click here.

Filed Under: Features Tagged With: Automation, Cognitive load, Large language models, Manipulators, Natural language processing, Real-time systems, Robot kinematics, Safety, Switches, Taxonomy, Teleoperators

Primary Sidebar

Current Issue

Get the entire issue now.

About the Magazine

As the flagship magazine of the IEEE Robotics and Automation Society, IEEE Robotics and Automation Magazine (RAM) covers the latest developments in robotics and automation. Its scope ranges from cutting-edge technological advances to emerging social, economic, ethical, and policy issues shaping the field.  Published quarterly (March, June, September, and December), RAM features both high-impact original research articles written in an engaging and accessible style, as well as reviews, columns and opinion pieces addressing a wide range of timely topics.

Past Issues

Search

Footer

LINKS

Home | Contact IEEE | Accessibility |
Nondiscrimination  Policy | IEEE Ethics Reporting | Terms & Disclosures| IEEE Privacy Policy

© Copyright 2025 IEEE – All rights reserved. A public charity, IEEE is the world’s largest technical professional organization dedicated to advancing technology for the benefit of humanity.

ABOUT US

IEEE Robotics & Automation Magazine  publishes four issues per year: March, June, September and December.