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Robust and fast similarity search for moving object trajectories

机译:鲁棒和快速的相似性搜索,用于移动物体的轨迹

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An important consideration in similarity-based retrieval of moving object trajectories is the definition of a distance function. The existing distance functions are usually sensitive to noise, shifts and scaling of data that commonly occur due to sensor failures, errors in detection techniques, disturbance signals, and different sampling rates. Cleaning data to eliminate these is not always possible. In this paper, we introduce a novel distance function, Edit Distance on Real sequence (EDR) which is robust against these data imperfections. Analysis and comparison of EDR with other popular distance functions, such as Euclidean distance, Dynamic Time Warping (DTW), Edit distance with Real Penalty (ERP), and Longest Common Subsequences (LCSS), indicate that EDR is more robust than Euclidean distance, DTW and ERP, and it is on average 50% more accurate than LCSS. We also develop three pruning techniques to improve the retrieval efficiency of EDR and show that these techniques can be combined effectively in a search, increasing the pruning power significantly. The experimental results confirm the superior efficiency of the combined methods.
机译:在基于相似度的运动对象轨迹检索中,一个重要的考虑因素是距离函数的定义。现有的距离功能通常对噪声,数据移位和缩放敏感,这些噪声通常是由于传感器故障,检测技术错误,干扰信号和不同的采样率而发生的。清除数据以消除这些问题并非总是可能的。在本文中,我们介绍了一种新颖的距离函数,即“按实序列编辑距离”(EDR),它可以有效地克服这些数据缺陷。对EDR与其他流行的距离函数(如欧几里得距离,动态时间规整(DTW),带实罚的编辑距离(ERP)和最长公共子序列(LCSS))进行分析和比较后发现,EDR比欧几里得距离更健壮, DTW和ERP,其准确度平均比LCSS高50%。我们还开发了三种修剪技术以提高EDR的检索效率,并表明可以在搜索中有效地组合这些技术,从而显着提高修剪能力。实验结果证实了组合方法的优越效率。

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