We provide a scheme for exploring the reconstruction limits of compressed sensing by minimizing the general cost function under the random measurement constraints for generic correlated signal sources. Our scheme is based on the statistical mechanical replica method for dealing with random systems. As a simple but non-trivial example, we apply the scheme to a sparse autoregressive model, where the first differences in the input signals of the correlated time series are sparse, and evaluate the critical compression rate for a perfect reconstruction. The results are in good agreement with a numerical experiment for a signal reconstruction
Random sampling in compressive sensing (CS) enables the compression of large amounts of input signal...
Compressed sensing deals with efficient recovery of analog signals from linear encodings. This paper...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a ...
Abstract—Compressed sensing is designed to measure sparse signals directly in a compressed form. How...
The recently introduced theory of compressed sensing enables the reconstruction of sparse or compre...
42 pages, 37 figures, 3 appendixesInternational audienceCompressed sensing is a signal processing me...
This paper introduces a simple and very general theory of compressive sensing. In this theory, the s...
This paper introduces a simple and very general theory of compressive sensing. In this theory, the s...
8 pages, 10 figuresInternational audienceCompressed sensing is designed to measure sparse signals di...
Compressed sensing has triggered a major evolution in signal acquisition. It consists of sampling a ...
∗(Corresponding author, EURASIP member) Existing convex relaxation-based approaches to reconstructio...
Compressed sensing allows perfect recovery of sparse signals (or signals sparse in some basis) using...
Abstract—Compressed sensing deals with efficient recovery of analog signals from linear encodings. T...
Compressed sensing is a signal processing technique to encode analog sources by real numbers rather ...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Random sampling in compressive sensing (CS) enables the compression of large amounts of input signal...
Compressed sensing deals with efficient recovery of analog signals from linear encodings. This paper...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a ...
Abstract—Compressed sensing is designed to measure sparse signals directly in a compressed form. How...
The recently introduced theory of compressed sensing enables the reconstruction of sparse or compre...
42 pages, 37 figures, 3 appendixesInternational audienceCompressed sensing is a signal processing me...
This paper introduces a simple and very general theory of compressive sensing. In this theory, the s...
This paper introduces a simple and very general theory of compressive sensing. In this theory, the s...
8 pages, 10 figuresInternational audienceCompressed sensing is designed to measure sparse signals di...
Compressed sensing has triggered a major evolution in signal acquisition. It consists of sampling a ...
∗(Corresponding author, EURASIP member) Existing convex relaxation-based approaches to reconstructio...
Compressed sensing allows perfect recovery of sparse signals (or signals sparse in some basis) using...
Abstract—Compressed sensing deals with efficient recovery of analog signals from linear encodings. T...
Compressed sensing is a signal processing technique to encode analog sources by real numbers rather ...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Random sampling in compressive sensing (CS) enables the compression of large amounts of input signal...
Compressed sensing deals with efficient recovery of analog signals from linear encodings. This paper...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a ...