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Sub-Nyquist multicoset and MIMO sampling: Perfect reconstruction, performance analysis, and necessary density conditions.

机译:次奈奎斯特多陪集和MIMO采样:完美的重构,性能分析和必要的密度条件。

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摘要

We study two sub-Nyquist sampling schemes for multiband signals known as multicoset sampling and multiple-input, multiple-output (MIMO) sampling. A multiband signal is one whose Fourier transform is supported on a set FR consisting of a finite union of intervals. Unlike uniform sampling, multicoset sampling allows perfect reconstruction of a multiband input at sampling rates arbitrarily close to its Landau minimum rate equal to the Lebesgue measure of F . We derive perfect reconstruction conditions, an explicit interpolation formula, and bounds on the aliasing error for signals not spectrally supported on F . We also examine the performance of the reconstruction system when the input contains additive sample noise. Using these measures of performance, we optimize the reconstruction system. We find that optimizing these parameters improves the performance significantly. There is an increased sensitivity to errors associated with nonuniform sampling, as opposed to uniform sampling. However, these errors can be controlled by optimal design, demonstrating the potential for practical multifold reductions in sampling rate. Multicoset sampling is applicable to Fourier imaging problems like synthetic aperture radar and magnetic resonance imaging, where the objective is to image a sparse object from limited Fourier data.; We then study the MIMO sampling problem, where a set of multiband input signals is passed through a MIMO channel and the outputs are sampled nonuniformly. MIMO sampling is motivated from applications like multiuser communications and multiple source separation. MIMO sampling encompasses several sampling strategies as special cases, including multicoset sampling and Papoulis's generalized sampling. We derive necessary density conditions for stable reconstruction of the channel inputs from the output. These results generalize Landau's sampling density results to the MIMO problem. We then investigate a special case of MIMO sampling called commensurate periodic nonuniform MIMO sampling , for which we present reconstruction conditions. Finally, we address the problem of reconstruction FIR filter design, formulating it as a minimization and recasting as a standard semi-infinite linear program. Owing to the generality of the MIMO sampling scheme, the design algorithm readily applies to several sampling schemes for multiband signals.
机译:我们研究了两种针对多频带信号的亚奈奎斯特采样方案,分别称为 multicoset采样多输入,多输出 MIMO < / italic>)采样。多频带信号是在一组 F R 上支持傅立叶变换的信号。 blkbd> 由间隔的有限并集组成。与均匀采样不同,多陪集采样允许以任意接近其Landau最小速率(等于Lebesgue测度 F 。我们得出完美的重构条件,一个明确的插值公式以及 F 上频谱不支持的信号的混叠误差范围。当输入包含加性样本噪声时,我们还将检查重建系统的性能。使用这些性能指标,我们优化了重建系统。我们发现优化这些参数可以显着提高性能。与统一采样相比,对与非均匀采样相关的错误的敏感性提高了。但是,可以通过最佳设计来控制这些误差,这证明了实际降低采样率的可能性。 Multicoset采样适用于傅立叶成像问题,例如合成孔径雷达和磁共振成像,其目的是从有限的傅立叶数据中成像稀疏物体。然后,我们研究MIMO采样问题,其中一组多频带输入信号通过MIMO通道传递,并且对输出进行非均匀采样。 MIMO采样来自多用户通信和多源分离等应用程序。 MIMO采样包含几种特殊情况下的采样策略,包括多陪集采样和Papoulis的广义采样。我们从输出中导出必要的密度条件,以稳定重建通道输入。这些结果将Landau的采样密度结果推广到MIMO问题。然后,我们调查称为相应周期性非均匀MIMO采样的MIMO采样的特殊情况,为此我们提出了重建条件。最后,我们解决了重建FIR滤波器设计的问题,将其表示为最小化并重新铸造为标准的半无限线性程序。由于MIMO采样方案的普遍性,该设计算法很容易应用于多频带信号的几种采样方案。

著录项

  • 作者

    Venkataramani, Raman C.;

  • 作者单位

    University of Illinois at Urbana-Champaign.;

  • 授予单位 University of Illinois at Urbana-Champaign.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 162 p.
  • 总页数 162
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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