CHOMP: Gradient optimization techniques for efficient motion planning
Carnegie Mellon University · Intel (United States)
Abstract
Existing high-dimensional motion planning algorithms are simultaneously overpowered and underpowered. In domains sparsely populated by obstacles, the heuristics used by sampling-based planners to navigate “narrow passages” can be needlessly complex; furthermore, additional post-processing is required to remove the jerky or extraneous motions from the paths that such planners generate. In this paper, we present CHOMP, a novel method for continuous path refinement that uses covariant gradient techniques to improve the quality of sampled trajectories. Our optimization technique both optimizes higher-order dynamics and is able to converge over a wider range of input paths relative to previous path optimization…
Citation impact
- FWCI
- 16.74
- Percentile
- 100%
- References
- 37
Authors
4Topics & keywords
- Computer science
- Motion planning
- Motion (physics)
- Artificial intelligence
- Robot
- Sustainable cities and communities