AI Agents 相关度: 8/10

Human-Aware Robot Behaviour in Self-Driving Labs

Satheeshkumar Veeramani, Anna Kisil, Abigail Bentley, Hatem Fakhruldeen, Gabriella Pizzuto, Andrew I. Cooper
arXiv: 2603.08420v1 发布: 2026-03-09 更新: 2026-03-09

AI 摘要

该论文提出了一种用于自主实验室中人机协作的AI驱动感知方法,提高了机器人工作效率。

主要贡献

  • 提出了一种用于预测人类意图的层级模型。
  • 通过意图预测,机器人能区分准备动作和短暂交互。
  • 实验结果表明该方法提高了人机交互效率。

方法论

设计了基于视觉感知的层级人类意图预测模型,并将其应用于机器人导航策略中。

原文摘要

Self-driving laboratories (SDLs) are rapidly transforming research in chemistry and materials science to accelerate new discoveries. Mobile robot chemists (MRCs) play a pivotal role by autonomously navigating the lab to transport samples, effectively connecting synthesis, analysis, and characterisation equipment. The instruments within an SDL are typically designed or retrofitted to be accessed by both human and robotic chemists, ensuring operational flexibility and integration between manual and automated workflows. In many scenarios, human and robotic chemists may need to use the same equipment simultaneously. Currently, MRCs rely on simple LiDAR-based obstruction detection, which forces the robot to passively wait if a human is present. This lack of situational awareness leads to unnecessary delays and inefficient coordination in time-critical automated workflows in human-robot shared labs. To address this, we present an initial study of an embodied, AI-driven perception method that facilitates proactive human-robot interaction in shared-access scenarios. Our method features a hierarchical human intention prediction model that allows the robot to distinguish between preparatory actions (waiting) and transient interactions (accessing the instrument). Our results demonstrate that the proposed approach enhances efficiency by enabling proactive human-robot interaction, streamlining coordination, and potentially increasing the efficiency of autonomous scientific labs.

标签

人机交互 自主实验室 机器人导航 意图预测

arXiv 分类

cs.RO cs.AI cs.HC