A Fast, Autonomous, Bipedal Walking Behavior over Rapid Regions
Duncan Calvert, Bhavyansh Mishra, Stephen McCrory, Sylvain Bertrand, Robert J. Griffin, Jerry Pratt
- 发表年份
- 2022
- 引用次数
- 15
摘要
In trying to build humanoid robots that perform useful tasks in a world built for humans, we address the problem of autonomous locomotion. Humanoid robot planning and control algorithms for walking over rough terrain are becoming increasingly capable. At the same time, commercially available depth cameras have been getting more accurate and GPU computing has become a primary tool in AI research. In this paper, we present a newly constructed behavior control system for achieving fast, autonomous, bipedal walking, without pauses or deliberation. We achieve this using a recently published rapidly updating planar regions perception algorithm, a height map based body path planner, an A* footstep planner, and a momentum-based walking controller. We put these elements together to form a behavior control system supported by modern software development practices and simulation tools.
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