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Operator matching during visually aided teleoperation
Affiliation:College of Information Engineering, Zhejiang University of Technology, 288 Liuhe Road, Hangzhou 310023, Zhejiang, China;Authors are with Department of Mechanical Engineering, School of Engineering & Computer Science, Baylor University.
Abstract:Two contrasting models are proposed to account for an operator's performance during an insertion task using a teleoperated robot arm in which, in addition to haptic feedback, visual guidance is provided via a computer-generated display of the workspace. In the first model, the operator's internal aim is formulated as one of maximising the amount of information available, and in the second as one of minimising variance.Experimental measurements of the times to complete such a task are made, with various degrees of noise added to the pose of objects and different smoothing applied before generating the display. The observations appear inconsistent with the first performance model, suggesting that the operator prefers to use partial information rapidly, rather than to suffer the delay associated with extracting full information. The observations are more consistent with the operator as a minimiser of variance, an idea used successfully (albeit embodied in a different controller) by others in the modelling of human eye and arm trajectories, and in the prediction of the empirical Fitts’ law found in reaching and touching tasks.It is found that under relatively high noise, the operator performs best when pose is low-pass-filtered with a cut-off frequency comparable with the natural frequency at which the operator interacts with the environment.
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