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Spatial Movement Pattern Discovery with LCS-based Path Similarity Measure

机译:基于LCS的路径相似度量的空间运动模式发现

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Location-enhanced applications are a rapidly emerging area of ubiquitous computing. They are starting to achieve mass adoption in people's everyday life. Moving objects can be tracked with navigation and orientation sensors such as GPS devices or RFID tags. Their movements can be represented as sequences of time-stamped locations. Studying such spatio-temporal movement series to discover spatial sequential patterns holds promises in many real-world settings. A few interesting applications of such kind are vehicle travel pattern discovery and travel route prediction, or customer shopping traverse pattern discovery. Traditional spatial data mining methods suitable in Euclidean space are not directly applicable for these sequential settings. We propose a Longest Common Subsequence (LCS)-based algorithm to cluster movement trajectories for travel pattern discovery. Experiments are performed on a GPS trace dataset of vehicle travel trajectories in Athens, Greece. We visualize the clustering results and compare them with a baseline outcome using Google Earth. The evaluation results show that the proposed LCS-based approach can be used to support effective pattern discovery for moving object travel trajectories.
机译:位置增强的应用是普遍存在的快速新兴区域。他们开始在人们日常生活中实现大规模采用。可以使用导航和方向传感器(如GPS设备或RFID标签)跟踪移动对象。它们的运动可以表示为时间戳位置的序列。研究这种时空运动系列以发现空间顺序图案在许多真实世界中拥有承诺。这种类型的一些有趣的应用是车辆旅行模式发现和旅行路线预测,或客户购物遍历模式发现。适用于欧几里德空间的传统空间数据采矿方法不适用于这些顺序设置。我们提出了一种最长的常见后续(LCS)基础的算法,用于纳入旅行模式发现的集群运动轨迹。在希腊雅典的车辆行程轨迹的GPS跟踪数据集上进行实验。我们可视化聚类结果,并使用Google地球将它们与基线结果进行比较。评估结果表明,所提出的基于LCS的方法可用于支持移动物体行程轨迹的有效模式发现。

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