From compressed sensing to compressed bit-streams: practical encoders, tractable decoders
Rayan Saab, Rongrong Wang, and Ozgur Yilmaz

TL;DR
This paper introduces a practical method for analog-to-information conversion that combines sigma-delta quantization with compressed sensing, enabling efficient digital encoding and tractable decoding of sparse signals.
Contribution
It presents a novel, implementable approach for quantizing and encoding analog signals within the compressed sensing framework, with proven near-optimal performance.
Findings
The method effectively converts analog signals into compressed digital bitstreams.
Decoding can be performed using convex optimization algorithms.
Numerical experiments demonstrate the approach's effectiveness.
Abstract
Compressed sensing is now established as an effective method for dimension reduction when the underlying signals are sparse or compressible with respect to some suitable basis or frame. One important, yet under-addressed problem regarding the compressive acquisition of analog signals is how to perform quantization. This is directly related to the important issues of how "compressed" compressed sensing is (in terms of the total number of bits one ends up using after acquiring the signal) and ultimately whether compressed sensing can be used to obtain compressed representations of suitable signals. Building on our recent work, we propose a concrete and practicable method for performing "analog-to-information conversion". Following a compressive signal acquisition stage, the proposed method consists of a quantization stage, based on (sigma-delta) quantization, and a…
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