Zou Rui, Liu Yubin, Li Ying, Chu Guoqing, Zhao Jie, Cai Hegao
State Key Laboratory of Robotics and Systems, Harbin 150001, China.
School of Management, Harbin University of Commerce, Harbin 150080, China.
Biomimetics (Basel). 2023 Aug 10;8(4):358. doi: 10.3390/biomimetics8040358.
With the use of collaborative robots in intelligent manufacturing, human-robot interaction has become more important in human-robot collaborations. Human-robot handover has a huge impact on human-robot interaction. For current research on human-robot handover, special attention is paid to robot path planning and motion control during the handover process; seldom is research focused on human handover intentions. However, enabling robots to predict human handover intentions is important for improving the efficiency of object handover. To enable robots to predict human handover intentions, a novel human handover intention prediction approach was proposed in this study. In the proposed approach, a wearable data glove and fuzzy rules are firstly used to achieve faster and accurate human handover intention sensing (HIS) and human handover intention prediction (HIP). This approach mainly includes human handover intention sensing (HIS) and human handover intention prediction (HIP). For human HIS, we employ wearable data gloves to sense human handover intention information. Compared with vision-based and physical contact-based sensing, wearable data glove-based sensing cannot be affected by visual occlusion and does not pose threats to human safety. For human HIP, we propose a fast handover intention prediction method based on fuzzy rules. Using this method, the robot can efficiently predict human handover intentions based on the sensing data obtained by the data glove. The experimental results demonstrate the advantages and efficacy of the proposed method in human intention prediction during human-robot handover.
随着协作机器人在智能制造中的应用,人机交互在人机协作中变得更加重要。人机交接对人机交互有巨大影响。对于当前的人机交接研究,特别关注交接过程中的机器人路径规划和运动控制;很少有研究聚焦于人类的交接意图。然而,使机器人能够预测人类的交接意图对于提高物体交接的效率很重要。为了使机器人能够预测人类的交接意图,本研究提出了一种新颖的人类交接意图预测方法。在所提出的方法中,首先使用可穿戴数据手套和模糊规则来实现更快、更准确的人类交接意图感知(HIS)和人类交接意图预测(HIP)。该方法主要包括人类交接意图感知(HIS)和人类交接意图预测(HIP)。对于人类HIS,我们使用可穿戴数据手套来感知人类交接意图信息。与基于视觉和基于物理接触的感知相比,基于可穿戴数据手套的感知不会受到视觉遮挡的影响,也不会对人类安全构成威胁。对于人类HIP,我们提出了一种基于模糊规则的快速交接意图预测方法。使用这种方法,机器人可以根据数据手套获得的感知数据有效地预测人类的交接意图。实验结果证明了所提方法在人机交接过程中人类意图预测方面的优势和有效性。