Publication | Closed Access
Scalable muscle-actuated human simulation and control
207
Citations
52
References
2019
Year
Robot KinematicsEngineeringBone GeometryMotor ControlMany Anatomical FactorsObject ManipulationOrthopaedic SurgeryKinesiologyBiomechanicsApplied PhysiologyKinematicsRobot LearningRehabilitation EngineeringHealth SciencesImitation LearningMotion SynthesisAction Model LearningHuman Musculoskeletal SystemRobot ControlMechanical SystemsMusculoskeletal InteractionHuman MovementRobotics
Many anatomical factors, such as bone geometry and muscle condition, interact to affect human movements. This work aims to build a comprehensive musculoskeletal model and its control system that reproduces realistic human movements driven by muscle contraction dynamics. The variations in the anatomic model generate a spectrum of human movements ranging from typical to highly stylistic movements. To do so, we discuss scalable and reliable simulation of anatomical features, robust control of under-actuated dynamical systems based on deep reinforcement learning, and modeling of pose-dependent joint limits. The key technical contribution is a scalable, two-level imitation learning algorithm that can deal with a comprehensive full-body musculoskeletal model with 346 muscles. We demonstrate the predictive simulation of dynamic motor skills under anatomical conditions including bone deformity, muscle weakness, contracture, and the use of a prosthesis. We also simulate various pathological gaits and predictively visualize how orthopedic surgeries improve post-operative gaits.
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