Data fusion performance evaluation for range measurements combined with cartesian ones for road obstacle tracking

C. Blanc, P. Checchin, S. Gidel, L. Trassoudaine
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引用次数: 5

Abstract

This paper deals with the assessment of centralized fusion for two dissimilar sensors for the purpose of tracking road obstacles. The aim of sensor fusion is to produce an improved estimated state of a system from a set of independent data sources. Indeed, for a robust perception of the environment, seen here as obstacles, several sensors should be installed in the equipped vehicle: camera, lidar, radar, etc. In our case, the motivation for this work comes from the need to track road targets with lidar measurements combined with radar ones. Thus, the aim is to combine effectively radar range measurements (i.e. range and range rate) with lidar Cartesian measurements for a "turn" scenario. Centralized fusion, i.e. measurement fusion, for two dissimilar sensors is considered here for assessment which is based on Cramer- Rao Lower Bound (CRLB), the basic tool for investigating estimation performance as it represents a limit of cognizability of the state. In the target tracking area, a recursive formulation of the Posterior Cramer-Rao Lower Bound (PCRLB) is used to analyze performance. Many bound comparisons are made according to the scenarios used and various sensor configurations. Moreover, two algorithms for target motion analysis are developed and compared to the theoretical bounds of performance: the extended Kalman filter and the particle filter.
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道路障碍物跟踪中距离测量与笛卡尔测量相结合的数据融合性能评价
本文研究了用于道路障碍物跟踪的两种不同传感器集中融合的评估。传感器融合的目的是从一组独立的数据源中产生一个改进的系统状态估计。事实上,为了对环境(这里被视为障碍物)有一个强大的感知,配备的车辆应该安装几个传感器:摄像头、激光雷达、雷达等。在我们的案例中,这项工作的动机来自于需要结合激光雷达测量和雷达测量来跟踪道路目标。因此,目标是将雷达距离测量(即距离和距离速率)与激光雷达笛卡尔测量有效地结合起来,以实现“转弯”场景。集中融合,即测量融合,两个不同的传感器被考虑在这里进行评估,这是基于Cramer- Rao下界(CRLB),研究估计性能的基本工具,因为它代表状态的可认知性的限制。在目标跟踪区域,使用后验Cramer-Rao下界(PCRLB)的递归公式来分析性能。根据所使用的场景和各种传感器配置进行了许多边界比较。此外,提出了两种目标运动分析算法:扩展卡尔曼滤波和粒子滤波,并与理论性能界限进行了比较。
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