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HV: A Feature Based Method for Trajectory Dataset Profiling

机译:HV:基于功能的轨迹数据集分析方法

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The pervasiveness of location-acquisition and mobile computing techniques have generated massive spatial trajectory data, which has brought great challenges to the management and analysis of such a big data. In this paper, we focus on the trajectory dataset profiling problem, and aim to extract the representative trajectories from the raw trajectory as a subset, called profile, which can best describe the whole dataset. This problem is very challenging subject to finding the most representative trajectories set by trading off the profile size and quality. To tackle this problem, we model the features of the whole dataset from the aspects of density, speed and the directional tendency. Meanwhile we present our two kinds of methods to select the representative trajectories by the global heuristic voting (HV) function based on the feature model. We evaluate our methods based on extensive experiments by using a real-world trajectory dataset generated by over 12,000 taxicabs in Beijing. The results demonstrate the efficiency and effectiveness of our methods in different applications.
机译:地点采集和移动计算技术的普及性产生了大量的空间轨迹数据,这给了对这种大数据的管理和分析带来了巨大的挑战。在本文中,我们专注于轨迹数据集分析问题,旨在将代表性轨迹从原始轨迹中提取为子集,称为配置文件,可以最好地描述整个数据集。这个问题是非常具有挑战性的,以便找到通过交易配置文件尺寸和质量而设置的最具代表性的轨迹。为了解决这个问题,我们从密度,速度和方向倾向的方面模拟整个数据集的特征。同时我们介绍了我们的两种方法,通过基于特征模型来选择通过全球启发式投票(HV)功能来选择代表轨迹。通过使用北京超过12,000个出租车产生的现实轨迹数据集,我们根据广泛的实验评估我们的方法。结果证明了我们在不同应用中的方法的效率和有效性。

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