Distortion-Rate Function of Sub-Nyquist Sampled Gaussian Sources
Alon Kipnis, Andrea J. Goldsmith, Yonina C. Eldar, Tsachy Weissman,

TL;DR
This paper derives a comprehensive formula for the minimal distortion in sub-Nyquist sampled Gaussian sources considering noise, rate constraints, and filtering, unifying sampling theory and rate-distortion limits.
Contribution
It introduces a novel expression for reconstruction error in sub-Nyquist sampling of Gaussian sources, including optimal pre-sampling filter design.
Findings
Derived a formula for mean squared error in sub-Nyquist sampling
Extended results to multi-branch sampling with filter optimization
Unified sampling theorem with rate-distortion theory for Gaussian sources
Abstract
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…
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