A new path planning method based on sparse A algorithm with map segmentation
Due to the complexity of map modeling, the massive computation and high redundancy of the traditional A* algorithm will greatly reduce the efficiency of pathfinding, resulting in huge performance consumption. Meanwhile, limited by neighborhood search strategy in grid map, the traditional A* algorith...
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Veröffentlicht in: | Transactions of the Institute of Measurement and Control 2022-02, Vol.44 (4), p.916-925 |
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creator | Zhaoying, Li Ruoling, Shi Zhao, Zhang |
description | Due to the complexity of map modeling, the massive computation and high redundancy of the traditional A* algorithm will greatly reduce the efficiency of pathfinding, resulting in huge performance consumption. Meanwhile, limited by neighborhood search strategy in grid map, the traditional A* algorithm is actually unable to achieve the optimal path in the global sense. To solve these problems, this paper proposes an improved A* algorithm based on graph preprocessing. First, the free space on the map was decomposed into several polygon regions using the improved convex decomposition method based on Maklink. Then, each region was coded into feature nodes according to A* algorithm. Finally, an optimal region passage was found based on the principle of A* algorithm, in which the global optimal path solution was obtained. Compared with the traditional A* algorithm and other classical path planning algorithms, the proposed algorithm has significant advantages in planning speed, path cost, stability, and completeness. |
doi_str_mv | 10.1177/01423312211046410 |
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subjects | Algorithms Decomposition Path planning Redundancy Segmentation |
title | A new path planning method based on sparse A algorithm with map segmentation |
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