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A Segment-Based Trajectory Similarity Measure in the Urban Transportation Systems

机译:城市交通系统中基于段的轨迹相似性度量

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摘要

With the rapid spread of built-in GPS handheld smart devices, the trajectory data from GPS sensors has grown explosively. Trajectory data has spatio-temporal characteristics and rich information. Using trajectory data processing techniques can mine the patterns of human activities and the moving patterns of vehicles in the intelligent transportation systems. A trajectory similarity measure is one of the most important issues in trajectory data mining (clustering, classification, frequent pattern mining, etc.). Unfortunately, the main similarity measure algorithms with the trajectory data have been found to be inaccurate, highly sensitive of sampling methods, and have low robustness for the noise data. To solve the above problems, three distances and their corresponding computation methods are proposed in this paper. The point-segment distance can decrease the sensitivity of the point sampling methods. The prediction distance optimizes the temporal distance with the features of trajectory data. The segment-segment distance introduces the trajectory shape factor into the similarity measurement to improve the accuracy. The three kinds of distance are integrated with the traditional dynamic time warping algorithm (DTW) algorithm to propose a new segment–based dynamic time warping algorithm (SDTW). The experimental results show that the SDTW algorithm can exhibit about 57%, 86%, and 31% better accuracy than the longest common subsequence algorithm (LCSS), and edit distance on real sequence algorithm (EDR) , and DTW, respectively, and that the sensitivity to the noise data is lower than that those algorithms.
机译:随着内置GPS手持智能设备的迅速普及,来自GPS传感器的轨迹数据呈爆炸性增长。轨迹数据具有时空特征和丰富的信息。使用轨迹数据处理技术可以挖掘人类活动的模式以及智能交通系统中车辆的行驶模式。轨迹相似性度量是轨迹数据挖掘(聚类,分类,频繁模式挖掘等)中最重要的问题之一。不幸的是,已经发现与轨迹数据的主要相似性度量算法不准确,采样方法高度敏感,并且对噪声数据的鲁棒性较低。针对上述问题,提出了三种距离及其对应的计算方法。点段距离会降低点采样方法的灵敏度。预测距离利用轨迹数据的特征优化了时间距离。段段距离将轨迹形状因子引入相似度测量中以提高准确性。这三种距离与传统的动态时间规整算法(DTW)算法集成在一起,提出了一种新的基于分段的动态时间规整算法(SDTW)。实验结果表明,SDTW算法比最长公共子序列算法(LCSS)的精度高约57%,86%和31%,并且在实序列算法(EDR)和DTW上的编辑距离分别更高,对噪声数据的敏感性低于那些算法。

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