Generative GaitNet
Understanding the relation between anatomy andgait is key to successful predictive gait simulation. Inthis paper, we present Generative GaitNet, which isa novel network architecture based on deep reinforce-ment learning for controlling a comprehensive, full-body, musculoskeletal model with 304 Hill-...
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Zusammenfassung: | Understanding the relation between anatomy andgait is key to successful
predictive gait simulation. Inthis paper, we present Generative GaitNet, which
isa novel network architecture based on deep reinforce-ment learning for
controlling a comprehensive, full-body, musculoskeletal model with 304
Hill-type mus-culotendons. The Generative Gait is a pre-trained, in-tegrated
system of artificial neural networks learnedin a 618-dimensional continuous
domain of anatomyconditions (e.g., mass distribution, body proportion,bone
deformity, and muscle deficits) and gait condi-tions (e.g., stride and
cadence). The pre-trained Gait-Net takes anatomy and gait conditions as input
andgenerates a series of gait cycles appropriate to theconditions through
physics-based simulation. We willdemonstrate the efficacy and expressive power
of Gen-erative GaitNet to generate a variety of healthy andpathologic human
gaits in real-time physics-based sim-ulation. |
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DOI: | 10.48550/arxiv.2201.12044 |