Hongtai Zhang, Jian Dai, Kuien Liu, Zhiming Ding, Huidan Liu
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引用次数: 0
摘要
地图综合是现代数字地图最基本的技术之一。它可以有效地减少存储空间,并根据不同应用的规模要求适应不同的应用。本文提出了一种有效的解决方案,并赢得了ACM SIGSPATTAL CUP 2014。该方法以采样点序列表示的原始几何形状为基础,根据边界的拓扑特征和约束条件将边界划分为许多小段。它试图通过简化给定的地图和约束点来最小化采样点的数量。此外,该方法还采用了许多优化技术来减少总延迟,如内存池、并行计算和字符串解析。在实际数据集上的实验结果证明了该方法的有效性和高效性。
An efficient method of map generalization using topology partitioning and constraints recognition
Map Generalization is one of the most fundamental technologies for modern digital maps. It can effectively reduce the storage space and fit to different applications according to their scale requirement. This paper presents an efficient solution for this problem that won the ACM SIGSPATTAL CUP 2014. Given the original geometries which are represented by sampling points sequence, this method divides the boundaries into many small segments based on their topological characteristics and constriants. It attempts to minimize the number of sampling points by simplifying the given map and constraining points. In addition, the method also employs many optimization techniques to reduce the total latency, like memory pool, parallel computing and string parsing. Experimental results on real datasets demonstrate the effectiveness and efficiency of the proposed method.