Performance analysis of flock pattern algorithms in spatio-temporal databases

Omar Ernesto Cabrera Rosero, A. Romero
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引用次数: 4

Abstract

Recent advances in technology and the widespread use of tracking global positioning systems, such as GPS and RFID, and mobile technologies have made the access to spatio-temporal datasets increase at an accelerated pace. This large amount of data has led to develop efficient techniques to process queries about the behavior of moving objects, like the discovering of patterns among trajectories in a continuous period of time. Several studies have focused on the query of patterns capturing the behavior of moving objects reflected in collaborations such as mobile clusters, convoy queries and flock patterns. In this paper, a comparison between two algorithms for flocking, Basic Flock Evaluation (BFE) and LCMFLOCK, is presented in order to measure their performance and behavior in different datasets, both synthetic and real. This research is the first step towards proposing new algorithms in order to improve the drawbacks reported by the former methods. Keywords—movement patterns, frequent patterns mining, spatio-temporal databases, flock patterns.
时空数据库中群模式算法的性能分析
最近的技术进步和全球定位系统(如GPS和RFID)的广泛使用以及移动技术使得对时空数据集的获取速度加快。大量的数据导致开发出有效的技术来处理关于运动物体行为的查询,比如在连续的一段时间内发现轨迹之间的模式。一些研究集中在模式的查询上,这些模式捕获了反映在协作中的移动对象的行为,如移动集群、车队查询和群体模式。本文比较了两种群集算法——基本群集评估(Basic Flock Evaluation, BFE)和LCMFLOCK,以衡量它们在不同的合成和真实数据集上的性能和行为。这项研究是提出新算法的第一步,以改善以前方法报告的缺点。关键词:移动模式;频繁模式挖掘;时空数据库;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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