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Semantic Trajectories: Mobility Data Computation and Annotation

机译:语义轨迹:移动性数据计算和注释

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With the large-scale adoption of GPS equipped mobile sensing devices, positional data generated by moving objects (e.g., vehicles, people, animals) are being easily collected. Such data are typically modeled as streams of spatio-temporal (x,y,t) points, called trajectories. In recent years trajectory management research has progressed significantly towards efficient storage and indexing techniques, as well as suitable knowledge discovery. These works focused on the geometric aspect of the raw mobility data. We are now witnessing a growing demand in several application sectors (e.g., from shipment tracking to geo-social networks) on understanding the semantic behavior of moving objects. Semantic behavior refers to the use of semantic abstractions of the raw mobility data, including not only geometric patterns but also knowledge extracted jointly from the mobility data and the underlying geographic and application domains information. The core contribution of this article lies in a semantic model and a computation and annotation platform for developing a semantic approach that progressively transforms the raw mobility data into semantic trajectories enriched with segmentations and annotations. We also analyze a number of experiments we did with semantic trajectories in different domains.
机译:随着装备有GPS的移动传感设备的大规模采用,由移动物体(例如,车辆,人,动物)生成的位置数据将易于收集。通常将此类数据建模为时空(x,y,t)点流,称为轨迹。近年来,轨迹管理研究已朝着有效的存储和索引技术以及合适的知识发现取得了显着进展。这些工作集中在原始流动性数据的几何方面。现在,我们看到几个应用领域(例如,从货运跟踪到地缘社会网络)对理解运动对象的语义行为的需求不断增长。语义行为是指使用原始移动性数据的语义抽象,不仅包括几何图案,还包括从移动性数据以及基础地理和应用程序域信息联合提取的知识。本文的核心贡献在于语义模型以及用于开发语义方法的计算和注释平台,该语义方法将原始移动性数据逐步转换为富含分段和注释的语义轨迹。我们还分析了我们对不同领域中的语义轨迹所做的大量实验。

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