首页> 外文期刊>IEEE Transactions on Signal Processing >Performance of Uniform and Sparse Non-Uniform Samplers In Presence of Modeling Errors: A Cramér-Rao Bound Based Study
【24h】

Performance of Uniform and Sparse Non-Uniform Samplers In Presence of Modeling Errors: A Cramér-Rao Bound Based Study

机译:存在建模误差的均匀和稀疏非均匀采样器的性能:基于Cramér-Rao界的研究

获取原文
获取原文并翻译 | 示例

摘要

This paper evaluates the performance of uniform and sparse nonuniform sampling techniques (namely nested and coprime sampling) for line spectrum estimation, in presence of nonideal conditions such as perturbation in sampling instants, and limited data for computing statistical averages. Coprime and nested sampling are well-known deterministic sampling techniques that operate at rates significantly lower than Nyquist, and yet allow perfect reconstruction of the spectra of wide sense stationary signals. However, theoretical guarantees for these samplers assume ideal conditions such as synchronous sampling, and ability to perfectly compute statistical expectations. This paper studies the performance of coprime and nested samplers when these assumptions are violated. Using a general grid-based signal model that applies to both spatial and temporal line spectrum estimation, the effect of perturbations in sampling instants is evaluated by deriving fundamental Cramer-Rao Bounds (CRB) for line spectrum estimation with perturbed samplers. For the first time, simplified expressions for the Fisher Information matrix for perturbed coprime and nested samplers are derived, which explicitly highlight the role of coarray. Even in presence of perturbations, it is possible to resolve O(M2) spectral lines under appropriate conditions on the size of the grid. The effect of finite data on the CRB is also studied, and necessary and sufficient conditions are derived to ensure that the CRB decreases monotonically to zero with the number of measurements, even when there are more sources than sensors. Finally, the theoretical results derived in this paper are supported by extensive numerical experiments.
机译:本文评估了在非理想条件下(例如采样瞬间的扰动)和用于计算统计平均值的有限数据的情况下,用于线谱估计的均匀稀疏非均匀采样技术(即嵌套采样和共质数采样)的性能。互质和嵌套采样是众所周知的确定性采样技术,其工作频率大大低于奈奎斯特,但仍可以完美重构宽范围平稳信号的频谱。但是,这些采样器的理论保证假设理想条件,例如同步采样,以及能够完美计算统计期望值。当违反这些假设时,本文研究了互质和嵌套采样器的性能。使用适用于空间和时间线谱估计的基于网格的通用信号模型,通过推导用于扰动采样器的线谱估计的基本Cramer-Rao界限(CRB),可以评估采样瞬间的扰动效果。首次获得了扰动互质和嵌套采样器的Fisher信息矩阵的简化表达式,这些表达式明确强调了协同数组的作用。即使存在扰动,也可以在适当的条件下在网格大小上解析O(M2)谱线。还研究了有限数据对CRB的影响,并推导出了必要和充分的条件,以确保CRB随着测量次数的增加而单调减少到零,即使当源比传感器多时也是如此。最后,本文得出的理论结果得到大量数值实验的支持。

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