A Riemannian Take on Human Motion Analysis and Retargeting.

IEEE/RJS International Conference on Intelligent RObots and Systems (IROS)(2022)

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摘要
Dynamic motions of humans and robots are widely driven by posture-dependent nonlinear interactions between their degrees of freedom. However, these dynamical effects remain mostly overlooked when studying the mechanisms of human movement generation. Inspired by recent works, we hypothesize that human motions are planned as sequences of geodesic synergies, and thus correspond to coordinated joint movements achieved with piecewise minimum energy. The underlying computational model is built on Riemannian geometry to account for the inertial characteristics of the body. Through the analysis of various human arm motions, we find that our model segments motions into geodesic synergies, and successfully predicts observed arm postures, hand trajectories, as well as their respective velocity profiles. Moreover, we show that our analysis can further be exploited to transfer arm motions to robots by reproducing individual human synergies as geodesic paths in the robot configuration space.
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关键词
coordinated joint movements,degrees of freedom,dynamic motions,dynamical effects,geodesic paths,geodesic synergies,human arm motions,human motion analysis,human motions,human movement generation,individual human synergies,inertial characteristics,model segments motions,observed arm postures,piecewise minimum energy,posture-dependent nonlinear interactions,Riemannian geometry,robot configuration space,underlying computational model
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