Distributed noise-shaping quantization: I. Beta duals of finite frames and near-optimal quantization of random measurements
Evan Chou, Sinan G\"unt\"urk

TL;DR
This paper presents a novel distributed noise-shaping quantization framework using beta duals of frames, achieving near-optimal reconstruction accuracy for random measurements with low computational cost and parallelization capabilities.
Contribution
It introduces the beta duals of frames within a distributed noise-shaping framework, providing near-optimal quantization and reconstruction guarantees for random measurements.
Findings
Beta duals achieve near-optimal accuracy in random frame quantization.
Reconstruction error decreases exponentially with the number of quantization levels.
The method is computationally efficient and suitable for parallel implementation.
Abstract
This paper introduces a new algorithm for the so-called "Analysis Problem" in quantization of finite frame representations which provides a near-optimal solution in the case of random measurements. The main contributions include the development of a general quantization framework called distributed noise-shaping, and in particular, beta duals of frames, as well as the performance analysis of beta duals in both deterministic and probabilistic settings. It is shown that for random frames, using beta duals results in near-optimally accurate reconstructions with respect to both the frame redundancy and the number of levels that the frame coefficients are quantized at. More specifically, for any frame of vectors in except possibly from a subset of Gaussian measure exponentially small in and for any number of quantization levels per measurement to be used…
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