Author
Listed:
- Shufei Li
- Yingchao You
- Pai Zheng
- Xi Vincent Wang
- Lihui Wang
Abstract
Human-Robot Collaboration (HRC) is key to achieving the flexible automation required by the mass personalization trend, especially towards human-centric intelligent manufacturing. Nevertheless, existing HRC systems suffer from poor task understanding and poor ergonomic satisfaction, which impede empathetic teamwork skills in task execution. To overcome the bottleneck, a Mixed Reality (MR) and visual reasoning-based method is proposed in this research, providing mutual-cognitive task assignment for human and robotic agents’ operations. Firstly, an MR-enabled mutual-cognitive HRC architecture is proposed, with the characteristic of monitoring Digital Twins states, reasoning co-working strategies, and providing cognitive services. Secondly, a visual reasoning approach is introduced, which learns scene interpretation from the visual perception of each agent’s actions and environmental changes to make task planning strategies satisfying human–robot operation needs. Lastly, a safe, ergonomic, and proactive robot motion planning algorithm is proposed to let a robot execute generated co-working strategies, while a human operator is supported with intuitive task operation guidance in the MR environment, achieving empathetic collaboration. Through a demonstration of a disassembly task of aging Electric Vehicle Batteries, the experimental result facilitates cognitive intelligence in Proactive HRC for flexible automation.
Suggested Citation
Shufei Li & Yingchao You & Pai Zheng & Xi Vincent Wang & Lihui Wang, 2024.
"Mutual-cognition for proactive human–robot collaboration: A mixed reality-enabled visual reasoning-based method,"
IISE Transactions, Taylor & Francis Journals, vol. 56(10), pages 1099-1111, October.
Handle:
RePEc:taf:uiiexx:v:56:y:2024:i:10:p:1099-1111
DOI: 10.1080/24725854.2024.2313647
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