Editorial: Shared Control for Tele-Operation Systems.

Frontiers in Robotics and AI(2022)

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摘要
Tele-operation systems have been extensively studied in the literature and used in various robotic applications, such as in surgery, search and rescue, space exploration, nuclear decommissioning, etc. However, most traditional tele-operation systems adopt a leader-follower paradigm, where the teleoperated robot follows the human operator’s guidance. This unilateral interaction does not leverage the robot’s autonomy and imposes cognitive and physical loads on the human operator. Conversely, if the robot’s strengths such as local sensing and accurate, fast execution capabilities are fully utilized, the human’s control effort can be reduced while simultaneously increasing task efficiency and performance. Therefore, shared control between a human and a robot is essential to develop an advanced teleoperation system. However, designing shared control for teleoperation systems raises many challenges. From the robot’s perspective, decision marking must be in place to address questions such as when the robot should follow the human, when it should not, and what to do if there are conflicts between the two. The designer must also be aware of how the human adapts to the robot’s behavior, and how the latter’s design should incorporate such human motor adaptation. In this Research Topic, we have invited researchers and practitioners in relevant fields to discuss these challenging issues. Four articles have been collected, which provide interesting insights on this topic and present promising results. Zolotas et al. introduce a virtual reality system to assist human users in manipulation tasks. Their system provides human users visualization of joint limit and environmental constraints of the robot follower, by displaying manipulability polytopes at the teleoperated robot’s end-effector. They first use a pilot study to find graphical cues and virtual reality setup that are suitable for the task of screwing in a set of bolts. Then, through comparative experiments, they conclude that their system increases safety in terms of preventing erratic motion, despite reducing the task completion speed, compared to teleoperation without shared control. Costi et al. investigate how shared control can mitigate the negative effects of time delay that is inevitable in teleoperation. They propose and compare four different control modalities of increasing autonomy: non-predictive human control (HC), predictive human control (PHC), (shared) predictive human-robot control (PHRC), and predictive robot control (PRC). They consider an object reaching and recognition task, and develop an internal model to predict the sensor’s output that is used to increase the robot’s autonomy. Their experimental results show that the two control architectures with increasing autonomy, PHRC and PRC, outperform the other two in terms of faster task completion and increased performance. By further comparing PHRC and PRC, they show that PHRC can avoid undesired hard contact with the environment that is observed under PRC, thus suggesting the advantage of shared control and concluding that PHRC represents a good trade-off between reaching accuracy, task completion speed and contact safety. Edited and reviewed by: Kostas J. Kyriakopoulos, National Technical University of Athens, Greece
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关键词
human-robot collaboration,physical human-robot interaction,robot control,shared control,tele-operation
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