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A novel method of mining the probatilistic RFID events semantic regions based on Markov trajectories

机译:基于马尔可夫轨迹的概率性RFID事件语义区域挖掘新方法

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With a massive using of mobile devices with location sensing and positioning functions, such as GPS and RFID, people now are able to acquire present locations and collect their movement. As the availability of trajectory data prospers, mining activities hidden in raw trajectories becomes a hot research problem. In this paper, we consider all spatial, temporal and the probability relationships among data points of trajectories to extract the stop location of ROI (region of interest) that refer to regions in where users are likely to have some kinds of activities. In order to extract such locations, we propose a probabilistic Sequential RFID events Density Clustering Algorithm (PSRDC) to mining clusters. Based on PSRDC clustering approach, we develop a ROI of RFID Probability events streams mining Algorithm (ROI-RFID) Experimental results demonstrate that our techniques are available and feasible.
机译:随着大量使用具有位置感应和定位功能的移动设备(例如GPS和RFID),人们现在能够获取当前位置并收集他们的运动。随着轨迹数据可用性的提高,隐藏在原始轨迹中的采矿活动成为一个热门的研究问题。在本文中,我们考虑了轨迹数据点之间的所有空间,时间和概率关系,以提取ROI(感兴趣区域)的停止位置,该位置是指用户可能会进行某些活动的区域。为了提取这样的位置,我们提出了一种概率序列RFID事件密度聚类算法(PSRDC)来挖掘集群。基于PSRDC聚类方法,我们开发了一种RFID概率事件流挖掘算法(ROI-RFID)的ROI。实验结果表明,我们的技术是可行和可行的。

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