CHOMP: Covariant Hamiltonian optimization for motion planning
Swarthmore College · Google (United States) · +2 more institutions
Abstract
In this paper, we present CHOMP (covariant Hamiltonian optimization for motion planning), a method for trajectory optimization invariant to reparametrization. CHOMP uses functional gradient techniques to iteratively improve the quality of an initial trajectory, optimizing a functional that trades off between a smoothness and an obstacle avoidance component. CHOMP can be used to locally optimize feasible trajectories, as well as to solve motion planning queries, converging to low-cost trajectories even when initialized with infeasible ones. It uses Hamiltonian Monte Carlo to alleviate the problem of convergence to high-cost local minima (and for probabilistic completeness), and is capable of respecting hard…
Citation impact
- FWCI
- 25.68
- Percentile
- 100%
- References
- 97
Authors
8Topics & keywords
- Motion planning
- Maxima and minima
- Probabilistic roadmap
- Covariant transformation
- Trajectory optimization
- Mathematical optimization
- Probabilistic logic
- Computer science