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Robust Multidimensional Signal Processing with Application to Antenna and Image Sensor Arrays.

机译:稳健的多维信号处理及其在天线和图像传感器阵列中的应用。

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摘要

In this thesis, robust methods are analyzed and applied to several areas. We propose a novel algorithm for image demosaicking. The principal idea is that by identifying a number of replicas in the filter bank transfer domain, demosaicking schemes can be represented by robust regression frameworks. This approach is very useful since it provides mathematically reliable solutions without relying on a specific color filter array pattern. It also gives us a new way to understand the fundamental theory of demosaicking and directs us toward better color filter array design. For adaptive beamforming, it is well known that performance may degrade in the presence of steering errors. Many robust algorithms have been proposed to overcome this problem, and diagonal loading techniques are one of the most popular. We start from the discussion of loading techniques with careful study of the underline facts to robustify the system and exploit potential improvements. Two new approaches of robust beamforming algorithms---Super Gaussian loading and variable loading techniques---are proposed. Super Gaussian loading is a generalization of traditional diagonal loading in that an ℓ2 norm restriction is replaced by an ℓ p norm one. This follows from a consideration that in beamforming, both the covariance matrix and the steering vector are estimated with uncertainties. Although diagonal loading is optimal in the case that only steering vector error is considered, our proposed Super Gaussian loading technique appears more reasonable in practice. We develop methods to choose the parameter p, and design an online implementation to update the beamformer. Similarly, we propose a variable loading technique after thorough analysis of the eigenvalue structure of sample covariance matrices. Variable loading provides better approximation of the covariance matrix inverse, which leads to more robust beamformer performance. Bayesian beamforming under a minimum mean square error criterion is also developed, using an importance sampling technique. Inspired by robust beamforming, we also apply the proposed loading technique to the control variates method of variance reduction in Monte Carlo estimation. We describe a number of experiments in each topic of study, and show the improvement that we have made.
机译:本文对鲁棒方法进行了分析,并将其应用于多个领域。我们提出了一种新颖的图像去马赛克算法。其主要思想是,通过在过滤器库转移域中识别多个副本,去马赛克方案可以用健壮的回归框架表示。该方法非常有用,因为它提供了数学上可靠的解决方案,而无需依赖特定的滤色器阵列图案。这也为我们提供了一种新的方法来理解去马赛克的基本理论,并引导我们朝着更好的彩色滤光片阵列设计方向发展。对于自适应波束成形,众所周知的是,在存在转向误差的情况下性能可能下降。已经提出了许多鲁棒的算法来克服这个问题,对角线加载技术是最受欢迎的算法之一。我们从对加载技术的讨论开始,仔细研究下划线事实,以使系统稳定并利用潜在的改进。提出了两种新的鲁棒波束成形算法-超高斯加载和可变加载技术-。超高斯荷载是传统对角荷载的一种概括,其中用ℓ 2代替ℓ 2范数约束。规范一。这是因为考虑到在波束成形中,协方差矩阵和转向矢量都具有不确定性。尽管在仅考虑转向矢量误差的情况下对角线加载是最佳的,但我们提出的超级高斯加载技术在实践中似乎更为合理。我们开发了选择参数p的方法,并设计了一个在线实现来更新波束成形器。同样,在彻底分析样本协方差矩阵的特征值结构之后,我们提出了一种变量加载技术。可变负载提供了协方差矩阵逆的更好近似,这导致更强大的波束形成器性能。还使用重要性采样技术开发了最小均方误差标准下的贝叶斯波束成形。受鲁棒波束成形的启发,我们还将提出的加载技术应用于蒙特卡洛估计中方差减少的控制变量方法。我们在每个研究主题中描述了许多实验,并显示了我们所取得的进步。

著录项

  • 作者

    Gu, Jing.;

  • 作者单位

    Harvard University.;

  • 授予单位 Harvard University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 113 p.
  • 总页数 113
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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