基于分割协方差交叉滤波的协同多车定位

Hao Li, F. Nashashibi
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引用次数: 64

摘要

车辆定位(地面车辆)是智能车辆系统的一项重要任务,车辆之间的协作可以为这项任务带来好处。提出了一种基于分割协方差交叉滤波的多车协同定位方法。在该方法中,每辆车保持对分解后的群体状态的估计,并与相邻车辆共享该估计;分解后的群体状态估计使用自我车辆的传感器数据和其他车辆发送的估计更新;采用协方差相交滤波器进行数据融合,即使在估计间相关程度未知的情况下也能产生一致的估计。仿真结果验证了该方法的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cooperative multi-vehicle localization using split covariance intersection filter
Vehicle localization (ground vehicles) is an important task for intelligent vehicle systems and vehicle cooperation may bring benefits for this task. A new cooperative multi-vehicle localization method using split covariance intersection filter is proposed in this paper. In the proposed method, each vehicle maintains an estimate of a decomposed group state and this estimate is shared with neighboring vehicles; the estimate of the decomposed group state is updated with both the sensor data of the ego-vehicle and the estimates sent from other vehicles; the covariance intersection filter which yields consistent estimates even facing unknown degree of inter-estimate correlation has been used for data fusion. A comparative study based simulations demonstrate the effectiveness and the advantage of the proposed cooperative localization method.
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