On the reconstruction of bandlimited signals from random samples quantized via noise-shaping
Rohan Joy, Felix Krahmer, Alessandro Lupoli, Radha Ramakrishnan

TL;DR
This paper demonstrates that noise-shaping quantization schemes can reliably reconstruct bandlimited signals from completely random samples, with error decreasing as the number of samples increases.
Contribution
It establishes the first theoretical results showing successful signal reconstruction from random samples using noise-shaping quantization techniques.
Findings
Reconstruction error decays with increasing samples and range.
Compatible with random, unstructured sample points.
Uniform high-probability guarantees over all bandlimited functions.
Abstract
Noise-shaping quantization techniques are widely used for converting bandlimited signals from the analog to the digital domain. They work by ``shaping" the quantization noise so that it falls close to the reconstruction operator's null space. We investigate the compatibility of two such schemes, specifically quantization and distributed noise-shaping quantization, with random samples of bandlimited functions. Suppose is a real number and assume that is a sequence of i.i.d random variables uniformly distributed on , where is appropriately chosen. We show that by using a noise-shaping quantizer to quantize the (randomly sign flipped) values of a real-valued -bandlimited function at , a function can be reconstructed from these quantized values such that…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Image and Signal Denoising Methods · Mathematical Analysis and Transform Methods
