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Mining spatio-temporal patterns in object mobility databases

机译:在对象移动性数据库中挖掘时空模式

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摘要

With the increasing use of wireless communication devices and the ability to track people and objects cheaply and easily, the amount of spatio-temporal data is growing substantially. Many of these applications cannot easily locate the exact position of objects, but they can determine the region in which each object is contained. Furthermore, the regions are fixed and may vary greatly in size. Examples include mobile/cell phone networks, RFID tag readers and satellite tracking. This demands techniques to mine such data. These techniques must also correct for the bias produced by different sized regions. We provide a comprehensive definition of Spatio-Temporal Association Rules (STARs) that describe how objects move between regions over time. We also present other patterns that are useful for mobility data; stationary regions and high traffic regions. The latter consists of sources, sinks and thoroughfares. These patterns describe important temporal characteristics of regions and we show that they can be considered as special STARs. We define spatial support to effectively deal with the problem of different sized regions. We provide an efficient algorithm-STAR-Miner-to find these patterns by exploiting several pruning properties.
机译:随着无线通信设备的使用的增加以及廉价和容易地跟踪人和物体的能力,时空数据的数量大大增加。这些应用程序中有许多无法轻松定位对象的确切位置,但是它们可以确定每个对象所包含的区域。此外,这些区域是固定的,并且大小可能相差很大。示例包括移动/手机网络,RFID标签读取器和卫星跟踪。这需要技术来挖掘此类数据。这些技术还必须校正由不同大小的区域产生的偏差。我们提供了时空关联规则(STAR)的全面定义,这些规则描述了对象随时间在区域之间的移动方式。我们还提出了对移动性数据有用的其他模式。固定区域和交通繁忙的区域。后者包括来源,汇和通道。这些模式描述了区域的重要时间特征,我们表明它们可以被视为特殊的STAR。我们定义空间支持以有效处理不同大小区域的问题。我们提供了一种有效的算法STAR-Miner,以通过利用一些修剪属性来找到这些模式。

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