Error Bounded Line Simplification Algorithms for Trajectory Compression: An Experimental Evaluation

Xuelian Lin, Shuai Ma, Jiahao Jiang, Yanchen Hou, Tianyu Wo
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引用次数: 5

Abstract

Nowadays, various sensors are collecting, storing, and transmitting tremendous trajectory data, and it is well known that the storage, network bandwidth, and computing resources could be heavily wasted if raw trajectory data is directly adopted. Line simplification algorithms are effective approaches to attacking this issue by compressing a trajectory to a set of continuous line segments, and are commonly used in practice. In this article, we first classify the error bounded line simplification algorithms into different categories and review each category of algorithms. We then study the data aging problem of line simplification algorithms and distance metrics from the views of aging friendliness and aging errors. Finally, we present a systematic experimental evaluation of representative error bounded line simplification algorithms, including both compression optimal and sub-optimal methods, in terms of commonly adopted perpendicular Euclidean, synchronous Euclidean, and direction-aware distances. Using real-life trajectory datasets, we systematically evaluate and analyze the performance (compression ratio, average error, running time, aging friendliness, and query friendliness) of error bounded line simplification algorithms with respect to distance metrics, trajectory sizes, and error bounds. Our study provides a full picture of error bounded line simplification algorithms, which leads to guidelines on how to choose appropriate algorithms and distance metrics for practical applications.
轨迹压缩的误差边界化简算法:实验评价
目前,各种传感器正在采集、存储和传输大量的轨迹数据,众所周知,如果直接采用原始轨迹数据,会严重浪费存储、网络带宽和计算资源。线化简算法是解决这一问题的有效方法,它将轨迹压缩为一组连续的线段,在实践中得到了广泛的应用。本文首先对误差边界化简算法进行了分类,并对每一类算法进行了综述。然后从老化友好性和老化误差的角度研究了线化简算法和距离度量的数据老化问题。最后,根据常用的垂直欧几里得距离、同步欧几里得距离和方向感知距离,对代表性误差边界线简化算法(包括压缩优化和次优化方法)进行了系统的实验评估。利用真实的轨迹数据集,我们系统地评估和分析了误差边界线简化算法在距离度量、轨迹大小和误差边界方面的性能(压缩比、平均误差、运行时间、老化友好性和查询友好性)。我们的研究提供了错误边界线简化算法的全貌,从而指导如何为实际应用选择合适的算法和距离度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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