A Method for k Nearest Neighbor Query of Line Segment in Obstructed Spaces

Liping Zhang, Song Li, Yingying Guo, Xiaohong Hao
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引用次数: 4

Abstract

In order to make up the deficiencies of the existing research results which cannot effectively deal with the nearest neighbor query based on the line segments in obstacle space, the k nearest neighbor query method of line segment in obstacle space is proposed and the STA_OLkNN algorithm under the circumstance of static obstacle data set is put forward. The query process is divided into two stages, including the filtering process and refining process. In the filtration process, according to the properties of the line segment Voronoi diagram, the corresponding pruning rules are proposed and the filtering algorithm is presented. In the refining process, according to the relationship of the position between the line segments, the corresponding distance expression method is put forward and the final result is obtained by comparing the distance. Theoretical research and experimental results show that the proposed algorithm can effectively deal with the problem of k nearest neighbor query of the line segment in the obstacle environment.
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阻塞空间中线段的k近邻查询方法
为了弥补现有研究成果不能有效处理基于障碍空间线段的最近邻查询的不足,提出了基于障碍空间线段的k最近邻查询方法,并提出了静态障碍数据集情况下的STA_OLkNN算法。查询过程分为两个阶段,包括过滤过程和精炼过程。在滤波过程中,根据线段Voronoi图的性质,提出了相应的剪枝规则,并给出了滤波算法。在细化过程中,根据线段之间的位置关系,提出相应的距离表示方法,并通过比较距离得到最终结果。理论研究和实验结果表明,该算法能有效地处理障碍物环境下线段的k近邻查询问题。
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