数据驱动的车辆轨迹预测

P. Pecher, M. Hunter, R. Fujimoto
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引用次数: 18

摘要

车辆轨迹或路线预测在在线数据驱动的交通模拟中非常有用,可以预测未来的交通模式和拥堵情况,以及其他用途。各种路线预测方法都需要不同程度的数据来预测未来的车辆轨迹。研究了三种车辆轨迹预测方法及其扩展,以评估其在城市道路网络上的准确性。其中包括一种基于驾驶员试图减少行驶时间的直觉的方法,一种基于神经网络的方法,以及一种基于马尔可夫模型的方法。T-Drive轨迹数据集由中国北京一万多辆出租车的GPS轨迹组成,包括1500万个数据点,用于本次评估。这些比较表明,使用其他车辆的轨迹数据可以大大提高T-Drive数据集中前向轨迹预测的准确性。这些结果突出了利用动态数据来提高交通模拟预测准确性的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Vehicle Trajectory Prediction
Vehicle trajectory or route prediction is useful in online, data-driven transportation simulation to predict future traffic patterns and congestion, among other uses. The various approaches to route prediction have varying degrees of data required to predict future vehicle trajectories. Three approaches to vehicle trajectory prediction, along with extensions, are examined to assess their accuracy on an urban road network. These include an approach based on the intuition that drivers attempt to reduce their travel time, an approach based on neural networks, and an approach based on Markov models. The T-Drive trajectory data set consisting of GPS trajectories of over ten thousand taxicabs and including 15 million data points in Beijing, China is used for this evaluation. These comparisons illustrate that using trajectory data from other vehicles can substantially improve the accuracy of forward trajectory prediction in the T-Drive data set. These results highlight the benefit of exploiting dynamic data to improve the accuracy of transportation simulation predictions.
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