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Infrastructure-enhanced Multi-target Tracking Using a Multiple-model PHD Filter

机译:基础设施 - 使用多型PHD滤波器增强多目标跟踪

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摘要

Environment perception is crucial for the development of autonomous driving and advanced driver assistance systems. The cooperative perception using the infrastructure sensors can significantly expand the field of view of on-board sensors and improve the accuracy of target tracking. In this paper, we propose a hybrid vehicular perception system that incorporates both received feature-level information from infrastructure sensors and track-level data from the multi-access edge computing server (MEC-Server). An infrastructure-enhanced multiple-model probability hypothesis density is proposed to handle the feature-level data from heterogeneous infrastructure sensors. The problem of kinematic state estimation is improved with the prior information of the road environment. Furthermore, a generic communication interface between the infrastructure sensor and MEC-Server is designed, which allows the object data to have the same notion of locality through the use of a generic object state model. Simulation results show that the presented algorithm provides higher accuracy and reliability after considering the prior information of the road environment.
机译:环境感知对于自主驾驶和高级驾驶辅助系统的发展至关重要。使用基础设施传感器的合作感知可以显着扩展板载传感器的视野,提高目标跟踪的准确性。在本文中,我们提出了一种混合车辆感知系统,其包括来自基础设施传感器和来自多访问边缘计算服务器(MEC-SERVER)的轨道级数据的接收的特征级信息。提出了基础设施增强的多型概率假设密度,以处理来自异构基础设施传感器的特征级数据。随着道路环境的先前信息,改善了运动状态估计问题。此外,设计了基础设施传感器和MEC-SERVER之间的通用通信接口,其允许对象数据通过使用通用对象状态模型具有相同的局部概念。仿真结果表明,考虑到道路环境的先前信息后,算法在算法提供更高的准确性和可靠性。

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