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A system implementation and evaluation of a cooperative fusion and tracking algorithm based on a Gaussian Mixture PHD filter

机译:基于高斯混合PHD滤波器的协同融合与跟踪算法的系统实现与评估

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This paper focuses on a real system implementation, analysis, and evaluation of a cooperative sensor fusion algorithm based on a Gaussian Mixture Probability Hypothesis Density (GM-PHD) filter, using simulated and real vehicles endowed with automotive-grade sensors. We have extended our previously presented cooperative sensor fusion algorithm with a fusion weight optimization method and implemented it on a vehicle that we denote as the ego vehicle. The algorithm fuses information obtained from one or more vehicles located within a certain range (that we call cooperative), which are running a multi-object tracking PHD filter, and which are sharing their object estimates. The algorithm is evaluated on two Citroën C-ZERO prototype vehicles equipped with Mobileye cameras for object tracking and lidar sensors from which the ground truth positions of the tracked objects are extracted. Moreover, the algorithm is evaluated in simulation using simulated C-ZERO vehicles and simulated Mobileye cameras. The ground truth positions of tracked objects are in this case provided by the simulator. Multiple experimental runs are conducted in both simulated and real-world conditions in which a few legacy vehicles were tracked. Results show that the cooperative fusion algorithm allows for extending the sensing field of view, while keeping the tracking accuracy and errors similar to the case in which the vehicles act alone.
机译:本文重点研究了基于高斯混合概率假设密度(GM-PHD)滤波器的协作传感器融合算法的实际系统实现,分析和评估,该仿真融合使用了具有汽车级传感器的仿真车辆和真实车辆。我们使用融合权重优化方法扩展了先前介绍的协作传感器融合算法,并将其实现在我们称为“自我”车辆的车辆上。该算法融合了从一个或多个位于一定范围内的车辆(我们称为合作车辆)获得的信息,这些车辆正在运行多对象跟踪PHD滤波器,并且共享其对象估计。该算法在配备有用于目标跟踪的Mobileye相机和激光雷达传感器的两辆雪铁龙C-ZERO原型车上进行了评估,从中提取了被跟踪物体的地面真实位置。此外,使用模拟C-ZERO车辆和模拟Mobileye相机在仿真中对算法进行了评估。在这种情况下,被跟踪对象的地面真实位置由模拟器提供。在模拟和现实条件下都进行了多次实验运行,在其中跟踪了一些传统车辆。结果表明,协同融合算法可以扩展感测视野,同时保持跟踪精度和误差类似于车辆单独行动的情况。

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