Optimization and learning for rough terrain legged locomotion
Abstract
We present a novel approach to legged locomotion over rough terrain that is thoroughly rooted in optimization. This approach relies on a hierarchy of fast, anytime algorithms to plan a set of footholds, along with the dynamic body motions required to execute them. Components within the planning framework coordinate to exchange plans, cost-to-go estimates, and ‘certificates’ that ensure the output of an abstract high-level planner can be realized by lower layers of the hierarchy. The burden of careful engineering of cost functions to achieve desired performance is substantially mitigated by a simple inverse optimal control technique. Robustness is achieved by real-time re-planning of the full trajectory, augmented by reflexes and feedback control. We demonstrate the successful application of our approach in guiding the LittleDog quadruped robot over a variety of types of rough terrain. Other novel aspects of our past research efforts include a variety of pioneering inverse optimal control techniques as well as a system for planning using arbitrary pre-recorded robot behavior.
BibTeX
@article{Zucker-2011-121524,author = {Matthew A. Zucker and N. Ratliff and M. Stolle and J. Chestnutt and J. A. Bagnell and C. G. Atkeson and J. Kuffner},
title = {Optimization and learning for rough terrain legged locomotion},
journal = {International Journal of Robotics Research: Special Issue on Legged Locomotion},
year = {2011},
month = {February},
volume = {30},
number = {2},
pages = {175 - 191},
}