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Methods for Analysis of Spatio-Temporal Bluetooth Tracking Data

机译:时空蓝牙跟踪数据的分析方法

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Analysis of people's movements represented by continuous sequences of spatio-temporal data tuples have received lots of attention in recent years. The focus of those studies was mostly GPS data recorded on a constant sample rate. However, the creation of intelligent location-aware models and environments also requires reliable localization in indoor environments as well as in mixed indoor/outdoor scenarios. In these cases, signal loss makes usage of GPS infeasible; therefore other recording technologies evolved. Our approach is analysis of episodic movement data. This data contains some uncertainties among time (continuity), space (accuracy), and the number of recorded objects (coverage). Prominent examples of episodic movement data are spatio-temporal activity logs, cell-based tracking data, and billing records. To give one detailed example, Bluetooth tracking monitors the presence of mobile phones and intercoms within a sensor's footprints. Usage of multiple sensors provides flows among the sensors. Most existing data mining algorithms use interpolation and therefore are infeasible for this kind of data. For example, speed and movement direction cannot be derived directly from episodic data; trajectories may not be depicted as a continuous line; and densities cannot be computed. Still, the data hold much information on group movement. Our approach is to aggregate movement in order to overcome the uncertainties. Deriving a number of objects for the spatio-temporal compartments and transitions among them gives interesting insights on the spatio-temporal behavior of moving objects. As a next step to support analysts, we propose clustering the spatio-temporal presence and flow situations. This work focuses as well on creation of a descriptive probability model for the movement based on Spatial Bayesian Networks. We present our methods on a real world data set collected during a football game in Nimes, France in June 2011.
机译:近年来,以时空数据元组的连续序列表示的人们的运动分析受到了广泛的关注。这些研究的重点主要是以恒定采样率记录的GPS数据。但是,创建智能的位置感知模型和环境还需要在室内环境以及室内/室外混合场景中进行可靠的定位。在这种情况下,信号丢失使GPS无法使用;因此,其他录音技术也在不断发展。我们的方法是分析情景运动数据。此数据在时间(连续性),空间(准确性)和记录的对象数(覆盖率)之间包含一些不确定性。突发运动数据的主要示例是时空活动日志,基于单元的跟踪数据和计费记录。举一个详细的例子,蓝牙跟踪监视传感器覆盖区中移动电话和对讲机的存在。多个传感器的使用提供了传感器之间的流量。大多数现有的数据挖掘算法都使用插值法,因此对于此类数据不可行。例如,速度和运动方向不能直接从情节数据中得出;轨迹可能未描绘为实线;并且无法计算密度。尽管如此,数据仍包含有关组移动的大量信息。我们的方法是汇总运动以克服不确定性。派生出许多时空隔间及其过渡的对象,可以得出有关移动对象的时空行为的有趣见解。作为支持分析人员的下一步,我们建议对时空存在和流动情况进行聚类。这项工作还将重点放在基于空间贝叶斯网络的运动描述性概率模型的创建上。我们在2011年6月在法国尼姆举行的一场足球比赛中收集的真实世界数据集上介绍了我们的方法。

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