OstrichRL: A Musculoskeletal Ostrich Simulation to Study Bio-mechanical
Locomotion
- URL: http://arxiv.org/abs/2112.06061v1
- Date: Sat, 11 Dec 2021 19:58:11 GMT
- Title: OstrichRL: A Musculoskeletal Ostrich Simulation to Study Bio-mechanical
Locomotion
- Authors: Vittorio La Barbera, Fabio Pardo, Yuval Tassa, Monica Daley,
Christopher Richards, Petar Kormushev, John Hutchinson
- Abstract summary: We release a 3D musculoskeletal simulation of an ostrich based on the MuJoCo simulator.
The model is based on CT scans and dissections used to gather actual muscle data.
We also provide a set of reinforcement learning tasks, including reference motion tracking and a reaching task with the neck.
- Score: 8.849771760994273
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Muscle-actuated control is a research topic of interest spanning different
fields, in particular biomechanics, robotics and graphics. This type of control
is particularly challenging because models are often overactuated, and dynamics
are delayed and non-linear. It is however a very well tested and tuned
actuation model that has undergone millions of years of evolution and that
involves interesting properties exploiting passive forces of muscle-tendon
units and efficient energy storage and release. To facilitate research on
muscle-actuated simulation, we release a 3D musculoskeletal simulation of an
ostrich based on the MuJoCo simulator. Ostriches are one of the fastest bipeds
on earth and are therefore an excellent model for studying muscle-actuated
bipedal locomotion. The model is based on CT scans and dissections used to
gather actual muscle data such as insertion sites, lengths and pennation
angles. Along with this model, we also provide a set of reinforcement learning
tasks, including reference motion tracking and a reaching task with the neck.
The reference motion data are based on motion capture clips of various
behaviors which we pre-processed and adapted to our model. This paper describes
how the model was built and iteratively improved using the tasks. We evaluate
the accuracy of the muscle actuation patterns by comparing them to
experimentally collected electromyographic data from locomoting birds. We
believe that this work can be a useful bridge between the biomechanics,
reinforcement learning, graphics and robotics communities, by providing a fast
and easy to use simulation.
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