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Probabilistic model for vehicle trajectories reconstruction using sparse mobile sensor data on freeways

机译:高速公路上稀疏移动传感器数据重构车辆轨迹的概率模型

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Real-world vehicle trajectory data are increasingly used in many applications such as driver behavior investigation, travel time estimation, and vehicle energy/emission evaluation. Due to the omnipresence of mobile sensors such as smartphones, real-world vehicle trajectory data can be collected at a large scale. However, most large-scaled mobile sensor data in practice are sparse in terms of sampling rate due to implementation costs. Before these data can be used in some applications, it is necessary to first reconstruct the data into high-resolution vehicle trajectories (e.g., second-by-second). In this paper, a probabilistic model for reconstructing vehicle trajectories from sparse mobile sensor data collected on freeways is presented. Prior probability distributions are used to quantify the statistics of different driving modes, e.g., acceleration, deceleration, cruising, and idling. The maximum likelihood estimation (MLE) technique is then used to reconstruct the second-by-second vehicle trajectory between consecutive sampling times. The proposed model is calibrated and validated using the NGSIM's US-101 dataset, and shows great promise in enhancing the applicability of sparse mobile sensor data. The results show that the Mean Absolute Error (MAE) of the estimation on second-by-second location and speed is 1.39 m and 0.47 m/s, respectively.
机译:现实世界中的车辆轨迹数据越来越多地用于许多应用程序中,例如驾驶员行为调查,行驶时间估计以及车辆能量/排放评估。由于智能手机等移动传感器无处不在,因此可以大规模收集现实世界的车辆轨迹数据。但是,实际上,由于实施成本的原因,大多数大规模移动传感器数据的采样率都很稀疏。在将这些数据用于某些应用之前,必须首先将数据重构为高分辨率的车辆轨迹(例如,每秒)。本文提出了一种概率模型,用于从高速公路上收集的稀疏移动传感器数据重建车辆轨迹。先验概率分布用于量化不同驾驶模式(例如,加速,减速,巡航和空转)的统计量。然后,将最大似然估计(MLE)技术用于在连续采样时间之间重建每秒的车辆轨迹。所提出的模型已使用NGSIM的US-101数据集进行了校准和验证,在增强稀疏移动传感器数据的适用性方面显示出巨大的希望。结果表明,每秒定位和速度估计的平均绝对误差(MAE)分别为1.39 m和0.47 m / s。

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