1. 河南大学计算机与信息工程学院,河南,开封,475001
2. 杭州电子科技大学,浙江,杭州,310018
3. 清华大学智能技术与系统国家重点实验室,北京,100084
纸质出版:2004
移动端阅览
文成林, 吕 冰, 葛泉波. 一种基于分步式滤波的数据融合算法[J]. 电子学报, 2004,32(8):1264-1267.
WEN Cheng-lin, LV Bing, GE Quan-bo. A Data Fusion Algorithm Based on Filtering Step by Step[J]. Acta Electronica Sinica, 2004, 32(8): 1264-1267.
本文提出了一种基于分步式滤波的多传感器动态系统数据融合算法.在由多传感器组成的分布式动态系统中
当对目标状态的所有观测值到来时
首先基于系统先前信息对该时刻目标状态进行预测估计
利用Kalman滤波器和各局部观测值依次对该时刻目标状态的估计值进行更新
从而得到该时刻目标状态基于全局信息的融合估计值.文中详细推证了融合算法的具体形式
并与传统的集中式数据融合算法在计算复杂度上进行了比较
计算机仿真表明该算法与传统的集中式算法对目标状态具有相同的估计精确度.
This paper develops a data fusion algorithm of multisensor dynamic system based on filtering step by step.In distributed multisensor dynamic system when all of the observations aiming at the target are obtained
fistly we can predict the object state based on previous system information at this point and then use Kalman filtering and all of local observations to update the estimate value of object state in turn.Accordingly we can get a global fusion estimate value of object state based on the global information at that point.It presents the material form of this new algorithm and compares complexity of algorithm with traditional centralized data fusion algorithm.The computer simulation indicates that this algorithm possesses uniform estimate accuracy aiming at the object state with traditional centralized data fusion algorithm.
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