论文标题

人机协作中任务委托的计算人体工程学:通过非接触式手势识别机器人对人类的时空适应

Computational ergonomics for task delegation in Human-Robot Collaboration: spatiotemporal adaptation of the robot to the human through contactless gesture recognition

论文作者

Olivas-Padilla, Brenda Elizabeth, Papanagiotou, Dimitris, Senteri, Gavriela, Manitsaris, Sotiris, Glushkova, Alina

论文摘要

可以通过优化人机协作(HRC)框架来解决与工作有关的肌肉骨骼疾病(WMSD)的高流行率。在这种情况下,本文提出了两个关于人体工程学有效任务委托和HRC的假设。第一个假设指出,可以使用减少的传感器集中的运动数据来量化人体工程学专业的任务。然后,最危险的任务可以委派给协作机器人。第二个假设是,通过包括手势识别和空间适应,可以通过避免不必要的动议来改善HRC场景的人体工程学,这些动议可能会使操作员暴露于人体工程学风险并降低操作员所需的体力劳动。电视制造过程的HRC场景已进行了优化,以检验这两个假设。对于人体工程学评估,对具有已知人体工程学风险的运动原始人进行了建模,以其在专业任务中的检测,并根据欧洲大会工作表(EAWS)估算风险评分。以自我为中心的电视组装数据训练的深度学习手势识别模块用于补充人类操作员与机器人之间的协作。此外,骨架跟踪算法为机器人提供了有关操作员姿势的信息,从而使其可以在空间上将其运动适应操作员的人体测量法。进行了三个实验,以确定手势识别和空间适应对操作员运动范围的影响。本文介绍了空间适应的速率用作关键性能指标(KPI),并且在本文中介绍了用于测量操作员运动减少的新KPI。

The high prevalence of work-related musculoskeletal disorders (WMSDs) could be addressed by optimizing Human-Robot Collaboration (HRC) frameworks for manufacturing applications. In this context, this paper proposes two hypotheses for ergonomically effective task delegation and HRC. The first hypothesis states that it is possible to quantify ergonomically professional tasks using motion data from a reduced set of sensors. Then, the most dangerous tasks can be delegated to a collaborative robot. The second hypothesis is that by including gesture recognition and spatial adaptation, the ergonomics of an HRC scenario can be improved by avoiding needless motions that could expose operators to ergonomic risks and by lowering the physical effort required of operators. An HRC scenario for a television manufacturing process is optimized to test both hypotheses. For the ergonomic evaluation, motion primitives with known ergonomic risks were modeled for their detection in professional tasks and to estimate a risk score based on the European Assembly Worksheet (EAWS). A Deep Learning gesture recognition module trained with egocentric television assembly data was used to complement the collaboration between the human operator and the robot. Additionally, a skeleton-tracking algorithm provided the robot with information about the operator's pose, allowing it to spatially adapt its motion to the operator's anthropometrics. Three experiments were conducted to determine the effect of gesture recognition and spatial adaptation on the operator's range of motion. The rate of spatial adaptation was used as a key performance indicator (KPI), and a new KPI for measuring the reduction in the operator's motion is presented in this paper.

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