The paper aims to highlight relative strengths and weaknesses of some of the recently proposed architectures for hardware implementation of analog-to-information converters based on Compressive Sensing. To do so, the most common architectures are analyzed when saturation of some building blocks is taken into account, and when measurements are subject to quantization to produce a digital stream. Furthermore, the signal reconstruction is performed by established and novel algorithms (one based on linear programming and the other based on iterative guessing of the support of the target signal), as well as their specialization to the particular architecture producing the measurements. Performance is assessed both as the probability of correct s...
The Shannon-Nyquist theorem enables signal acquisition with sampling frequency greater than or equal...
The compressive sensing (CS) framework aims to ease the burden on analog-to-digital converters (ADCs...
none3noWhile classical compressive sensing aims to reduce the number of measurements with respect to...
The paper aims to highlight relative strengths and weaknesses of some of the recently proposed archi...
none5noThe paper aims to highlight relative strengths and weaknesses of some of the recently propose...
Quantization is an essential step in digitizing signals, and, therefore, an indispensable component ...
Quantization is an essential step in digitizing signals, and, therefore, an indispensable component ...
Quantization is an essential step in digitizing signals, and, therefore, an indispensable component ...
Classical design of Analog-to-Information converters based on Compressive Sensing uses random projec...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...
Classical design of Analog-to-Information converters based on Compressive Sensing uses random projec...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...
Classical design of Analog-to-Information converters based on Compressive Sensing uses random projec...
Classical design of Analog-to-Information converters based on Compressive Sensing uses random projec...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...
The Shannon-Nyquist theorem enables signal acquisition with sampling frequency greater than or equal...
The compressive sensing (CS) framework aims to ease the burden on analog-to-digital converters (ADCs...
none3noWhile classical compressive sensing aims to reduce the number of measurements with respect to...
The paper aims to highlight relative strengths and weaknesses of some of the recently proposed archi...
none5noThe paper aims to highlight relative strengths and weaknesses of some of the recently propose...
Quantization is an essential step in digitizing signals, and, therefore, an indispensable component ...
Quantization is an essential step in digitizing signals, and, therefore, an indispensable component ...
Quantization is an essential step in digitizing signals, and, therefore, an indispensable component ...
Classical design of Analog-to-Information converters based on Compressive Sensing uses random projec...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...
Classical design of Analog-to-Information converters based on Compressive Sensing uses random projec...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...
Classical design of Analog-to-Information converters based on Compressive Sensing uses random projec...
Classical design of Analog-to-Information converters based on Compressive Sensing uses random projec...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...
The Shannon-Nyquist theorem enables signal acquisition with sampling frequency greater than or equal...
The compressive sensing (CS) framework aims to ease the burden on analog-to-digital converters (ADCs...
none3noWhile classical compressive sensing aims to reduce the number of measurements with respect to...