Search-based planning for a legged robot over rough terrain
Paul Vernaza, Maxim Likhachev, Sandip Bhattacharya, Sachin Chitta, A. Kushleyev, D.D. Lee
- 发表年份
- 2009
- 引用次数
- 53
摘要
We present a search-based planning approach for controlling a quadrupedal robot over rough terrain. Given a start and goal position, we consider the problem of generating a complete joint trajectory that will result in the legged robot successfully moving from the start to the goal. We decompose the problem into two main phases: an initial global planning phase, which results in a footstep trajectory; and an execution phase, which dynamically generates a joint trajectory to best execute the footstep trajectory. We show how R* search can be employed to generate high-quality global plans in the high-dimensional space of footstep trajectories. Results show that the global plans coupled with the joint controller result in a system robust enough to deal with a variety of terrains.
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