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Comparison of vehicle re-identification models for trucks based on axle spacing measurements

机译:基于轴距测量的卡车车辆重新识别模型的比较

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摘要

In previous research, it has been demonstrated that there is enough variation within the truck population in terms of axle spacings and vehicle lengths, which enable anonymous vehicle re-identification between two measurement stations (e.g., two weigh-in-motion (WIM) sites). Matching trucks between two sites can support various applications, such as calibration of WIM equipment and estimation of travel times and origin-destination flows. In this paper, several modeling approaches to solve the re-identification problem are explored including Naive Bayes (NB), Bayesian Models (BM) fitted by mixture models, and the formulation of the re-identification problem as a mathematical assignment problem. In addition, the influence of selecting a similarity measure is evaluated through numerical experiments conducted on real-world data from six pairs of upstream-downstream WIM stations. The results demonstrate that solving the re-identification problem with BMs fit by mixture distributions outperforms solving with NB models, while both are outperformed by the mathematical assignment formulation of the same problem, especially when vehicle-pairs exceeding a high threshold of similarity are matched. In addition, expressing the similarity between measurements from two stations as a percentage difference is found to be relatively more advantageous. For the presented pairs of WIM stations, up to 90% matching accuracy can be achieved when the best combination of re-identification method and similarity measure are implemented, and only those vehicle-pairs exceeding a high threshold of similarity are matched.
机译:在先前的研究中,已经证明卡车数量上在轴距和车辆长度方面存在足够的变化,这使得能够在两个测量站(例如,两个运动称重(WIM)站点)之间重新识别匿名车辆。 )。两个站点之间的匹配卡车可以支持各种应用程序,例如WIM设备的校准以及行进时间和始发地目的地流量的估计。本文探讨了解决重新识别问题的多种建模方法,包括朴素贝叶斯(NB),混合模型拟合的贝叶斯模型(BM)以及将重新识别问题表示为数学分配问题。此外,通过对来自六对上游-下游WIM站的真实数据进行的数值实验,评估了选择相似性度量的影响。结果表明,通过混合分布来解决带有BM的重新识别问题要比使用NB模型解决方案要好,而两者都比同一个问题的数学分配公式要好,尤其是当匹配对超过相似阈值高的车辆对时。此外,发现将两个站点的测量之间的相似性表示为百分比差异相对更有利。对于提出的WIM站对,当实施重新识别方法和相似性度量的最佳组合时,只有那些超过相似性高阈值的车辆对才可以匹配,从而达到90%的匹配精度。

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