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动态加权的多频段距离特征量数据融合方法
引用本文:何青海,笪良龙,徐国军.动态加权的多频段距离特征量数据融合方法[J].应用声学,2012,31(5):372-378.
作者姓名:何青海  笪良龙  徐国军
作者单位:海军潜艇学院
基金项目:“十二五”预研基金项目(No.51303070407);水下测控技术重点实验室资助项目(No.613122)
摘    要:距离特征量反映了目标距离变化规律,该观测量可由基于LOFAR谱图的距离特征量提取方法得到。为解决单一频段提取的距离特征量精度不高的问题,本文基于最优加权平均法,提出了多频段距离特征量值提取技术。针对该方法在实际应用中无法准确得到距离特征量解算值误差的标准差,提出了一种对方差进行实时估计的动态加权融合方法。试验数据处理结果表明,融合后精度明显提高。

关 键 词:距离特征量  最优加权平均  动态加权  融合
收稿时间:2012/3/20 0:00:00

A fusion algorithm of distance characteristic feature based on dynamically allocating weights
HE Qinghai,DA Lianglong and XU Guojun.A fusion algorithm of distance characteristic feature based on dynamically allocating weights[J].Applied Acoustics,2012,31(5):372-378.
Authors:HE Qinghai  DA Lianglong and XU Guojun
Institution:(Navy Submarine Academy,Qingdao 266071)
Abstract:The distance of an object can be described by the distance characteristic feature. A new method for extracting distance characteristic feature based on Low-Frequency Array (LOFAR) spectrum has been presented. In view of low precision of distance characteristic feature extracted from single frequency band, an optimal weighted average method is applied to the extraction process in this paper. Since the variance of distance characteristic feature can not be accurately obtained in the practical application, a weighted fusion algorithm is given which estimates the variance in the real time and allocating weights dynamically based on optimal weight allocation principle. The experimental results show that the precision of distance characteristic feature is one time higher by applying fusion.
Keywords:Distance characteristic feature  Optimal weighted average  Dynamically weighting  Fusion
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