Fast Target Prediction of Human Reaching Motion for Cooperative Human-Robot Manipulation Tasks using Time Series Classification

Claudia Pérez-D'Arpino, Julie A. Shah
Massachusetts Institute of Technology

Abstract: Interest in human-robot coexistence, in which humans and robots share a common work volume, is increasing in manufacturing environments. Efficient work coordination requires both awareness of the human pose and a plan of action for both human and robot agents in order to compute robot motion trajectories that synchronize naturally with human motion. In this paper, we present a data-driven approach that synthesizes anticipatory knowledge of both human motions and subsequent action steps in order to predict in real-time the intended target of a human performing a reaching motion. Motion-level anticipatory models are constructed using multiple demonstrations of human reaching motions. We produce a library of motions from human demonstrations, based on a statistical representation of the degrees of freedom of the human arm, using time series analysis, wherein each time step is encoded as a multivariate Gaussian distribution. We demonstrate the benefits of this approach through offline statistical analysis of human motion data. The results indicate a considerable improvement over prior techniques in early prediction, achieving 70% or higher correct classification on average for the first third of the trajectory. We also indicate proof-of-concept through the demonstration of a human-robot cooperative manipulation task performed with a PR2 robot. We analyze the quality of task-level anticipatory knowledge required to improve prediction performance early in the motion trajectory.

Cite as: Claudia Pérez-D'Arpino, Julie A. Shah. Fast Target Prediction of Human Reaching Motion for Cooperative Human-Robot Manipulation Tasks Using Time Series Classification. 2015 IEEE International Conference on Robotics and Automation (ICRA 2015).

Paper PDF: LINK

Related work: The prediction model and algorithm have been extended to the walking domain in the context of mobile robots conavigation. See the results here.

 

Research on Robotics

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