Human-robot collaborative assembly systems enhance the efficiency and productivity of the workplace but may increase the workers' cognitive demand. This paper proposes an online and quantitative framework to assess the cognitive workload induced by the interaction with a co-worker, either a human operator or an industrial collaborative robot with different control strategies. The approach monitors the operator's attention distribution and upper-body kinematics benefiting from the input images of a low-cost stereo camera and cutting-edge artificial intelligence algorithms (i.e. head pose estimation and skeleton tracking). Three experimental scenarios with variations in workstation features and interaction modalities were designed to test the performance of our online method against state-of-the-art offline measurements. Results proved that our vision-based cognitive load assessment has the potential to be integrated into the new generation of collaborative robotic technologies. The latter would enable human cognitive state monitoring and robot control strategy adaptation for improving human comfort, ergonomics, and trust in automation.
翻译:人类机器人合作组装系统提高了工作场所的效率和生产力,但可能会增加工人的认知需求。本文件提议了一个在线和定量框架,以评估与同事(无论是人操作者还是具有不同控制战略的工业协作机器人)互动引发的认知工作量。该方法监测操作者的注意力分布和上体动力学,利用低成本立体相机和尖端人工智能算法(即头部构成估计和骨骼跟踪)的输入图像。设计了三种工作站特征和互动模式变化变化的实验情景,以测试我们在线方法的性能与最新离线测量结果。结果证明,我们基于愿景的认知负荷评估有潜力融入新一代协作机器人技术。后者将使人类认知状态监测和机器人控制战略适应能够改善人类舒适度、人形工程学和自动化信任度。