Fast and almost optimal any-angle pathfinding using the 2k neighborhoods

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Abstract

Any-angle path finding on grids is an important problem with applications in autonomous robot navigation. In this paper, we show that a well-known pre-processing technique, namely subgoal graphs, originally proposed for (non anyangle) 8-connected grids, can be straightforwardly adapted to the 2k neighborhoods, a family of neighborhoods that allow an increasing number of movements (and angles) as k is increased. This observation yields a pathfinder that computes 2k-optimal paths very quickly. Compared to ANYA, an optimal true any-angle planner, over a variety of benchmarks, our planner is one order of magnitude faster while being less than 0.0005% suboptimal. Important to our planner’s performance was the development of an iterative 2k heuristic, linear in k, which is also a contribution of this paper.

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Hormazábal, N., Díaz, A., Hernández, C., & Baier, J. A. (2017). Fast and almost optimal any-angle pathfinding using the 2k neighborhoods. In Proceedings of the 10th Annual Symposium on Combinatorial Search, SoCS 2017 (Vol. 2017-January, pp. 139–143). AAAI press. https://doi.org/10.1609/socs.v8i1.18442

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