This paper proposes to use deep reinforcement learning to teach a physics-based human musculoskeletal model to ascend stairs and ramps. The deep reinforcement learning architecture employs the proximal policy optimization algorithm combined with imitation learning and is trained with experimental data of a public dataset. The human model is developed in the open-source simulation software OpenSim, together with two objects (i.e., the stairs and ramp) and the elastic foundation contact dynamics. The model can learn to ascend stairs and ramps with muscle forces comparable to healthy subjects and with a forward dynamics comparable to the experimental training data, achieving an average correlation of 0.82 during stair ascent and of 0.58 during...
A significant challenge for the control of a robotic lower extremity rehabilitation exoskeleton is t...
Stair climbing is a common activity encountered in daily living. Stair ascent is a demanding task th...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...
This paper proposes to use deep reinforcement learning to teach a physics-based human musculoskeleta...
This paper proposes to use deep reinforcement learning to teach a physics-based humanmusculoskeletal...
This paper proposes to use deep reinforcement learning for the simulation of physics-based musculosk...
Abstract Modeling human motor control and predicting how humans will move in novel environments is a...
A gait model capable of generating human-like walking behavior at both the kinematic and the muscula...
Recent advancements in reinforcement learning algorithms have accelerated the development of control...
The human nervous system is a complex neural network that is capable of learning a wide variety of c...
Kidziński Ł, Mohanty SP, Ong C, et al. Learning to Run challenge solutions: Adapting reinforcement l...
Despite its importance, the core of the human body has to datereceived inadequate attention in the c...
IntroductionRecent advancements in reinforcement learning algorithms have accelerated the developmen...
The public defense on 8th June 2020 at 12:00 will be available via remote technology. Link: https:/...
This paper addresses the problem of synthesizing simulated humanoid climbing movements given the tar...
A significant challenge for the control of a robotic lower extremity rehabilitation exoskeleton is t...
Stair climbing is a common activity encountered in daily living. Stair ascent is a demanding task th...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...
This paper proposes to use deep reinforcement learning to teach a physics-based human musculoskeleta...
This paper proposes to use deep reinforcement learning to teach a physics-based humanmusculoskeletal...
This paper proposes to use deep reinforcement learning for the simulation of physics-based musculosk...
Abstract Modeling human motor control and predicting how humans will move in novel environments is a...
A gait model capable of generating human-like walking behavior at both the kinematic and the muscula...
Recent advancements in reinforcement learning algorithms have accelerated the development of control...
The human nervous system is a complex neural network that is capable of learning a wide variety of c...
Kidziński Ł, Mohanty SP, Ong C, et al. Learning to Run challenge solutions: Adapting reinforcement l...
Despite its importance, the core of the human body has to datereceived inadequate attention in the c...
IntroductionRecent advancements in reinforcement learning algorithms have accelerated the developmen...
The public defense on 8th June 2020 at 12:00 will be available via remote technology. Link: https:/...
This paper addresses the problem of synthesizing simulated humanoid climbing movements given the tar...
A significant challenge for the control of a robotic lower extremity rehabilitation exoskeleton is t...
Stair climbing is a common activity encountered in daily living. Stair ascent is a demanding task th...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...