基于磁传感器车辆再识别的动脉行程时间估计:性能分析

R. Sanchez, Christopher Flores, R. Horowitz, R. Rajagopal, P. Varaiya
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引用次数: 8

摘要

研究了两种基于无线磁传感器车辆再识别的主干道行驶时间估计方法。两种方法都基于相同的走时估计系统,但其中一种方法使用所谓的原始信号处理算法,而另一种方法使用最近修改的版本。这两种方法都在纽约州纽约西34街0.51公里(0.32英里)长的路段上进行了测试,当时的驾驶条件很恶劣(即刚过一场冬季风暴)。将原始和修改后的系统结果与从视频中获得的地面真实数据进行了比较。根据地面真实数据,可以确定旅行时间分布和每种不同方法能够重新识别的车辆百分比。在45分钟的分析期间,登记了318辆通过动脉段的车辆。原方法的再识别率为62%,而改进后的方法的再识别率为69%。通过对旅行时间分布和经验累积分布函数的比较,发现改进方法的旅行时间分布与地面真值分布密切相关,而原方法在长旅行时间与地面真值分布明显偏离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Arterial travel time estimation based on vehicle re-identification using magnetic sensors: Performance analysis
Two versions of an arterial travel time estimation method based on vehicle re-identification using wireless magnetic sensors were studied across an arterial segment with multiple intersections. Both methods are based on the same travel time estimation system, but one of them uses the so called original signal processing algorithm while the other one uses a recently modified version of it. Both methods were tested on a 0.51 km (0.32 mile)-long segment of West 34th Street in New York, NY, under harsh driving conditions (i.e. right after a winter storm). The original and modified system results were compared against ground truth data obtained from video. Based on the ground truth data it was possible to determine the travel time distribution and the percentage of vehicles that each of the different methods was able to re-identify. During an analysis period of 45 minutes, 318 vehicles were registered to go across the arterial segment. The original method has a 62% re-identification rate, while the modified method has a 69% rate. Based on comparisons of travel time distribution and empirical cumulative distribution functions, it was observed that the modified method travel time distribution is closely related to the ground truth distribution, while the original method significantly diverges from the ground truth at long travel times.
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