In a previous study, we presented VT-Lane, a three-step framework for real-time vehicle detection, tracking, and turn movement classification at urban intersections. In this study, we present a case study incorporating the highly accurate trajectories and movement classification obtained via VT-Lane for the purpose of speed estimation and driver behavior calibration for traffic at urban intersections. First, we use a highly instrumented vehicle to verify the estimated speeds obtained from video inference. The results of the speed validation show that our method can estimate the average travel speed of detected vehicles in real-time with an error of 0.19 m/sec, which is equivalent to 2% of the average observed travel speeds in the intersection of the study. Instantaneous speeds (at the resolution of 30 Hz) were found to be estimated with an average error of 0.21 m/sec and 0.86 m/sec respectively for free-flowing and congested traffic conditions. We then use the estimated speeds to calibrate the parameters of a driver behavior model for the vehicles in the area of study. The results show that the calibrated model replicates the driving behavior with an average error of 0.45 m/sec, indicating the high potential for using this framework for automated, large-scale calibration of car-following models from roadside traffic video data, which can lead to substantial improvements in traffic modeling via microscopic simulation.
翻译:在前一次研究中,我们介绍了VT-Lane,这是一个用于在城市十字路口实时探测、跟踪和转换车辆移动分类的三步框架,即VT-Lane,这是在城市十字路口实时探测、跟踪和转换车辆移动分类的三步框架。在这项研究中,我们提出了一个案例研究,其中纳入了通过VT-Lane获得的高度精确的轨迹和移动分类,目的是对城市十字路口的交通进行速度估计和驾驶者行为校准。首先,我们使用高仪器的车辆来核查从视频推断中得出的估计速度。速度验证结果显示,我们的方法可以估计实时被检测到的车辆的平均旅行速度误差为0.19米/sec,相当于在研究交叉处观察到的平均旅行速度的2%。 发现,以超时速速度(分辨率为30赫兹)对城市十字路口进行估计,其平均误差分别为0.21米/秒和0.86米/秒/秒。 我们随后使用估计速度来校准在研究区域车辆驾驶者行为模型的比值参数。结果显示,在研究区域,将试算模型中,可校正模型,将试模型,将车辆平均路面的校正。