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Heteroscedastic Gaussian processes for uncertainty modeling in large-scale crowdsourced traffic data

机译:大规模众包交通数据不确定性建模的异方差高斯过程

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摘要

Accurately modeling traffic speeds is a fundamental part of efficient intelligent transportation systems. Nowadays, with the widespread deployment of GPS-enabled devices, it has become possible to crowdsource the collection of speed information to road users (e.g. through mobile applications or dedicated in-vehicle devices). Despite its rather wide spatial coverage, crowdsourced speed data also brings very important challenges, such as the highly variable measurement noise in the data due to a variety of driving behaviors and sample sizes. When not properly accounted for, this noise can severely compromise any application that relies on accurate traffic data. In this article, we propose the use of heteroscedastic Gaussian processes (HGP) to model the time-varying uncertainty in large-scale crowdsourced traffic data. Furthermore, we develop a HGP conditioned on sample size and traffic regime (SSRC-HGP), which makes use of sample size information (probe vehicles per minute) as well as previous observed speeds, in order to more accurately model the uncertainty in observed speeds. Using 6 months of crowdsourced traffic data from Copenhagen, we empirically show that the proposed heteroscedastic models produce significantly better predictive distributions when compared to current state-of-the-art methods for both speed imputation and short-term forecasting tasks.
机译:准确建模交通速度是高效智能交通系统的基本组成部分。如今,随着具有GPS功能的设备的广泛部署,将速度信息的收集众包给道路用户(例如通过移动应用程序或专用车载设备)成为可能。尽管其空间覆盖范围相当广,但众包速度数据还带来了非常重要的挑战,例如由于各种驾驶行为和样本大小而导致的数据中变化很大的测量噪声。如果不加以适当考虑,这种噪声会严重危害依赖于准确流量数据的任何应用程序。在本文中,我们建议使用异方差高斯过程(HGP)来建模大规模众包交通数据中随时间变化的不确定性。此外,我们开发了以样本量和流量状况为条件的HGP(SSRC-HGP),该模型利用了样本量信息(每分钟探查车数)以及以前的观测速度,以便更准确地对观测速度的不确定性建模。使用来自哥本哈根的6个月的众包流量数据,我们从经验上表明,与当前用于速度估算和短期预测任务的最新技术相比,拟议的异方差模型产生的预测分布要好得多。

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