Asymptotically Optimal Planning by Feasible Kinodynamic Planning in State-Cost Space
About
This paper presents an equivalence between feasible kinodynamic planning and optimal kinodynamic planning, in that any optimal planning problem can be transformed into a series of feasible planning problems in a state-cost space whose solutions approach the optimum. This transformation gives rise to a meta-algorithm that produces an asymptotically optimal planner, given any feasible kinodynamic planner as a subroutine. The meta-algorithm is proven to be asymptotically optimal, and a formula is derived relating expected running time and solution suboptimality. It is directly applicable to a wide range of optimal planning problems because it does not resort to the use of steering functions or numerical boundary-value problem solvers. On a set of benchmark problems, it is demonstrated to perform, using the EST and RRT algorithms as subroutines, at a superior or comparable level to related planners.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Planar Pushing | Mustard Bottle Sim | Success Rate (SR)32 | 8 | |
| Planar Pushing | Chef Can Sim. | Success Rate (SR)39 | 8 | |
| Planar Pushing | Trash Truck Real | Success Rate (SR)30 | 8 | |
| Planar Pushing | Cracker Box Real | Success Rate (SR)55 | 8 |