子奈奎斯特采样高斯源的失真率函数

A. Kipnis, A. Goldsmith, Yonina C. Eldar, T. Weissman
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引用次数: 55

摘要

对连续时间高斯平稳过程的亚奈奎斯特采样中丢失的信息量进行了量化。我们考虑了一个组合的源编码和亚奈奎斯特重构问题,其中编码器的输入是模拟源的一个带噪声的亚奈奎斯特采样版本。我们首先推导了从噪声和信息速率有限的样本中重建过程中均方误差的表达式。这个表达式是采样频率和描述每个采样的平均比特数的函数。它是两项的和:从有噪声但完全观察到的亚奈奎斯特样本估计源时的最小均方误差,以及通过与源的多相分量相关的光谱密度平均值的反向注水获得的第二项。我们将此结果扩展到多分支均匀采样,其中样本可以通过一组并行通道获得,每个分支中都有均匀采样器和预采样滤波器。然后对预采样滤波器进行进一步优化以减少失真,并找到一组与输入信号和采样频率统计相关的最佳预采样滤波器。这就得到了在任何涉及均匀采样和线性滤波的模数转换方案下可实现的最小可能失真的表达式。这些结果统一了高斯源的Shannon - whittaker - kotelnikov抽样定理和Shannon率失真理论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distortion Rate Function of Sub-Nyquist Sampled Gaussian Sources
The amount of information lost in sub-Nyquist sampling of a continuous-time Gaussian stationary process is quantified. We consider a combined source coding and sub-Nyquist reconstruction problem in which the input to the encoder is a noisy sub-Nyquist sampled version of the analog source. We first derive an expression for the mean squared error in the reconstruction of the process from a noisy and information rate-limited version of its samples. This expression is a function of the sampling frequency and the average number of bits describing each sample. It is given as the sum of two terms: minimum mean square error in estimating the source from its noisy but otherwise fully observed sub-Nyquist samples, and a second term obtained by reverse waterfilling over an average of spectral densities associated with the polyphase components of the source. We extend this result to multi-branch uniform sampling, where the samples are available through a set of parallel channels with a uniform sampler and a pre-sampling filter in each branch. Further optimization to reduce distortion is then performed over the pre-sampling filters, and an optimal set of pre-sampling filters associated with the statistics of the input signal and the sampling frequency is found. This results in an expression for the minimal possible distortion achievable under any analog-to-digital conversion scheme involving uniform sampling and linear filtering. These results thus unify the Shannon–Whittaker–Kotelnikov sampling theorem and Shannon rate-distortion theory for Gaussian sources.
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