愿景论文:利用自愿提供的地理信息来改进交通预测

D. Bucher
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引用次数: 5

摘要

精细的实时运动预测正变得越来越重要,智能手机和车辆不断跟踪我们的位置,并试图猜测我们的下一个位置,以便及时为我们提供建议、交通预测或驾驶员辅助。根据跟踪精度,记录的位置首先被映射到街道段,使用移动模型在模棱两可的情况下选择最可能的道路。主要的预测程序使用类似的运动模型(可能包含额外的用户特定数据)来评估未来可能的旅行选择。虽然精确的街道拓扑结构在非常高的层面上并不重要(例如,当预测某人将要去的“下一个地方”时),但如果我们试图预测一个人或车辆的确切位置,它就变得越来越重要。类似地,应该使用不同的数据源(如兴趣点、土地使用区域或建筑物足迹)进行不同精度级别的预测。在本文中,我们评估了目前关于各种类型的志愿地理信息(VGI)的研究趋势,如何将这些数据用于不同的模型中来计算流动性预测,并提出了我们对一个集成系统的愿景,该系统能够使用众包地理数据来执行不同级别的流动性预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision Paper: Using Volunteered Geographic Information to Improve Mobility Prediction
Fine-grained real-time movement prediction is becoming increasingly important, with smartphones and vehicles constantly tracking our position and trying to guess our next location to timely provide us with recommendations, traffic forecasts, or driver assistance. Depending on the tracking accuracy, the recorded locations are first mapped to street segments, using a mobility model to choose the most likely road in case of ambiguities. The main prediction procedure uses a similar movement model (possibly incorporating additional user-specific data) to assess likely future travel choices. While the exact street topology is not essential on a very high level (e.g., when predicting the "next place" someone is going to be), it becomes more and more important if we try to predict the exact position of a person or vehicle. Similarly, different data sources (such as points of interest, land use zones, or building footprints) should be used for predictions at different levels of accuracy. In this paper, we assess current research trends concerning various types of volunteered geographical information (VGI), how this data can be used in different models to compute mobility predictions, and we present our vision for an integrated system that is able to use crowdsourced geographic data to perform mobility prediction at different levels.
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