LOCOMOTION
An improved hierarchical motion planner for humanoid robots
Salvatore Candido, Yong-Tae Kim, Seth Hutchinson
- Year
- 2008
- Citations
- 25
Abstract
In our previous work, we proposed a hierarchical planner for bipedal and humanoid robots navigating complex environments based on a motion primitives framework. In this paper, we extend and improve that planner by proposing a different approach for the global and subgoal components of our planner. We continue to use a workspace decomposition that consists of a passage map, obstacle map, gradient map, and local map. We verify our approach using both simulation results and experimentally on a mechanical humanoid system.
Keywords
Humanoid robotWorkspacePlannerComputer scienceRobotObstacleArtificial intelligenceMotion (physics)Computer visionGeography
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