首页> 外文期刊>IEEE Transactions on Signal Processing >DOA Estimation and Detection in Colored Noise Using Additional Noise-Only Data
【24h】

DOA Estimation and Detection in Colored Noise Using Additional Noise-Only Data

机译:使用其他仅噪声数据在有色噪声中进行DOA估计和检测

获取原文
获取原文并翻译 | 示例
           

摘要

In a typical array processing scenario, noise acting on the array can not be assumed spatially white. It is in many cases necessary to use quiet periods, when only noise is received, to estimate the noise covariance. If estimation of the signal parameters and noise covariance is performed jointly, performance can be improved. This is especially true when stationarity considerations limit the amount of available valid noise-only data. An asymptotically valid approximative maximum likelihood method (AML) for the estimation problem is derived in this work. The resulting criterion is, when concentrated with respect to the signal parameters, relatively simple. In numerical experiments, AML shows promising small-sample performance compared to earlier methods. The criterion function is also well suited for numerical optimization. The new criterion function allows for the development of a novel, MODE-like, non-iterative estimation procedure if the array belongs to the important class of uniform linear arrays. The resulting procedure retains the asymptotic properties of maximum likelihood, and numerical simulations indicate superior threshold performance when compared to an optimally weighted subspace fitting (WSF) formulation of MODE. For the detection problem, no method has been presented that takes the unknown noise covariance into account. Here, a well known detection scheme for WSF is extended to work in this scenario as well. The derivations of this scheme further stress the importance of using the correct weighting in WSF when the noise covariance is unknown. It is also shown that the minimum value of the criterion function associated with AML can be used for the detection purpose. Numerical experiments indicate very promising performance for the AML-detection scheme.
机译:在典型的阵列处理方案中,无法假定作用在阵列上的噪声在空间上是白色的。在许多情况下,当仅接收到噪声时,有必要使用静默期来估计噪声协方差。如果联合执行信号参数和噪声协方差的估计,则可以提高性能。当平稳性考虑限制了可用的有效纯噪声数据量时,尤其如此。在这项工作中,得出了一种估计问题的渐近有效的近似最大似然方法(AML)。当相对于信号参数集中时,所得标准相对简单。在数值实验中,与早期方法相比,AML显示出有希望的小样本性能。标准函数也非常适合于数值优化。如果阵列属于均匀线性阵列的重要类别,则新的标准函数可用于开发新颖的,类似于MODE的非迭代估计程序。所得程序保留了最大似然性的渐近性质,并且与MODE的最佳加权子空间拟合(WSF)公式相比,数值模拟表明具有优越的阈值性能。对于检测问题,尚未提出考虑未知噪声协方差的方法。在这里,WSF的一种众所周知的检测方案也被扩展为可以在这种情况下使用。当噪声协方差未知时,该方案的派生进一步强调了在WSF中使用正确加权的重要性。还示出了与AML相关联的标准函数的最小值可以用于检测目的。数值实验表明,AML检测方案的性能非常有前途。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号