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Map-Reduce for Calibrating Massive Bus Trajectory Data

机译:映射校准大规模总线轨迹数据的映射减少

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Accurate bus trajectory data is the basis of many public transportation applications. However, trajectory data sampled by GPS devices contains notable direction errors. We cannot determine the travelling direction of the bus through trajectory data. To address this problem, we utilize k-nearest neighbor algorithm (K-NN) to determine the direction of the bus trajectory. Meanwhile, the voluminous bus trajectory data accumulated daily need to be process efficiently for further data mining. To meet the scalability and performance requirements, in this paper, we use Map-Reduce programming model for trajectory data direction correcting and projecting the bus GPS point to the road link. Particularly, we compare execution time through setting different amount of reduce to express the extent of running time can be affect. Experimental results indicate that the K-NN algorithm improve the accuracy of the direction field in raw bus trajectory significantly, and parallel processing framework improves the computational efficiency by a factor of 2 at least, which obtained by comparing between reduce quantities.
机译:准确的总线轨迹数据是许多公共交通应用的基础。但是,GPS设备采样的轨迹数据包含值得注意的方向误差。我们无法通过轨迹数据确定总线的行驶方向。为了解决这个问题,我们利用k-countbeld邻算法(k-nn)来确定总线轨迹的方向。同时,每日累计累积的大量总线轨迹数据需要有效地进行进一步处理进一步的数据挖掘。为了满足可扩展性和性能要求,在本文中,我们使用Map-Reficy编程模型进行轨迹数据方向校正并将总线GPS点投影到道路链路。特别是,我们通过设置不同量的减少来比较执行时间来表达运行时间的程度可能会影响。实验结果表明,K-NN算法显着提高了原始总线轨迹中的方向场的精度,并并行处理框架至少将计算效率提高了2倍,这通过比较减少量而获得。

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