Enhancing the LLM-Based Robot Manipulation Through Human-Robot Collaboration
This addresses the challenge of poor integration in LLM-based robotics for manipulation tasks, offering an incremental improvement through human guidance.
The paper tackled the problem of LLM-based robots being limited to simple motions by proposing a Human-Robot Collaboration approach using GPT-4, YOLO perception, and teleoperation with DMPs, resulting in efficient accomplishment of complex manipulation tasks in real-world experiments with a Toyota robot.
Large Language Models (LLMs) are gaining popularity in the field of robotics. However, LLM-based robots are limited to simple, repetitive motions due to the poor integration between language models, robots, and the environment. This paper proposes a novel approach to enhance the performance of LLM-based autonomous manipulation through Human-Robot Collaboration (HRC). The approach involves using a prompted GPT-4 language model to decompose high-level language commands into sequences of motions that can be executed by the robot. The system also employs a YOLO-based perception algorithm, providing visual cues to the LLM, which aids in planning feasible motions within the specific environment. Additionally, an HRC method is proposed by combining teleoperation and Dynamic Movement Primitives (DMP), allowing the LLM-based robot to learn from human guidance. Real-world experiments have been conducted using the Toyota Human Support Robot for manipulation tasks. The outcomes indicate that tasks requiring complex trajectory planning and reasoning over environments can be efficiently accomplished through the incorporation of human demonstrations.