Anvaripour Mohammad, Khoshnam Mahta, Menon Carlo, Saif Mehrdad
Department of Electrical and Computer Engineering, University of Windsor, Windsor, ON, Canada.
Menrva Research Group, Schools of Mechatronic System and Engineering Science, Simon Fraser University, Vancouver, BC, Canada.
Front Robot AI. 2020 Dec 3;7:573096. doi: 10.3389/frobt.2020.573096. eCollection 2020.
Research on human-robot interactions has been driven by the increasing employment of robotic manipulators in manufacturing and production. Toward developing more effective human-robot collaboration during shared tasks, this paper proposes an interaction scheme by employing machine learning algorithms to interpret biosignals acquired from the human user and accordingly planning the robot reaction. More specifically, a force myography (FMG) band was wrapped around the user's forearm and was used to collect information about muscle contractions during a set of collaborative tasks between the user and an industrial robot. A recurrent neural network model was trained to estimate the user's hand movement pattern based on the collected FMG data to determine whether the performed motion was random or intended as part of the predefined collaborative tasks. Experimental evaluation during two practical collaboration scenarios demonstrated that the trained model could successfully estimate the category of hand motion, i.e., intended or random, such that the robot either assisted with performing the task or changed its course of action to avoid collision. Furthermore, proximity sensors were mounted on the robotic arm to investigate if monitoring the distance between the user and the robot had an effect on the outcome of the collaborative effort. While further investigation is required to rigorously establish the safety of the human worker, this study demonstrates the potential of FMG-based wearable technologies to enhance human-robot collaboration in industrial settings.
机器人操纵器在制造和生产中的使用日益增加,推动了对人机交互的研究。为了在共享任务中开发更有效的人机协作,本文提出了一种交互方案,即采用机器学习算法来解释从人类用户获取的生物信号,并据此规划机器人的反应。具体而言,将肌动图(FMG)带缠绕在用户的前臂上,用于在用户与工业机器人之间的一组协作任务中收集有关肌肉收缩的信息。训练了一个循环神经网络模型,以根据收集到的FMG数据估计用户的手部运动模式,从而确定所执行的运动是随机的还是作为预定义协作任务的一部分。在两个实际协作场景中的实验评估表明,训练后的模型可以成功估计手部运动的类别,即有意的或随机的,从而使机器人要么协助执行任务,要么改变其行动路线以避免碰撞。此外,在机器人手臂上安装了接近传感器,以研究监测用户与机器人之间的距离是否会对协作效果产生影响。虽然需要进一步研究来严格确定人类工人的安全性,但本研究证明了基于FMG的可穿戴技术在工业环境中增强人机协作的潜力。