We describe a method of integrating Karhunen-Loeve Transform (KLT) into compressive sensing, which can as a result leverage KLT’s optimality in revealing the sparsity of a signal. We present two complementary results: (1) by using the KLT to find the optimal basis for decoding we can drastically reduce the number of measurements for compressive sensing used in applications such as spectrum sensing; (2) by using compressive sensing we can compute the KLT basis directly from measurements of the input signal, with substantially fewer samples than the Nyquist rate. For a non-stationary signal, we suggest strategies in addressing the trade-off of incurring additional measurements for updating a KLT basis or compensating an obsolete KLT basis in ...
International audienceWe advocate a compressed sensing strategy that consists of multiplying the sig...
Compressed sensing is a new concept in signal processing where one seeks to minimize the number of m...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a ...
Abstract—We describe a method of integrating Karhunen-Loève Transform (KLT) into compressive sensin...
This paper proposes a best basis extension of compressed sensing recovery. Instead of regularizing t...
Compressive sensing is a relatively new technique in the signal processing field which allows acquir...
This thesis develops algorithms and applications for compressive sensing, a topic in signal processi...
The recently introduced theory of Compressive Sensing (CS) enables a new method for signal recovery ...
Compressive spectrum sensing techniques present many advantages over traditional spectrum sensing ap...
In this work we propose a method based on compressive sensing (CS) for estimating the spectrum of a...
Compressive Sensing, as an emerging technique in signal processing is reviewed in this paper togethe...
Compressive Sensing (CS) is a new sensing paradigm which permits sampling of a signal at its intrins...
Nowadays, the development of efficient communication system is necessary for future networks. Compre...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a l...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
International audienceWe advocate a compressed sensing strategy that consists of multiplying the sig...
Compressed sensing is a new concept in signal processing where one seeks to minimize the number of m...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a ...
Abstract—We describe a method of integrating Karhunen-Loève Transform (KLT) into compressive sensin...
This paper proposes a best basis extension of compressed sensing recovery. Instead of regularizing t...
Compressive sensing is a relatively new technique in the signal processing field which allows acquir...
This thesis develops algorithms and applications for compressive sensing, a topic in signal processi...
The recently introduced theory of Compressive Sensing (CS) enables a new method for signal recovery ...
Compressive spectrum sensing techniques present many advantages over traditional spectrum sensing ap...
In this work we propose a method based on compressive sensing (CS) for estimating the spectrum of a...
Compressive Sensing, as an emerging technique in signal processing is reviewed in this paper togethe...
Compressive Sensing (CS) is a new sensing paradigm which permits sampling of a signal at its intrins...
Nowadays, the development of efficient communication system is necessary for future networks. Compre...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a l...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
International audienceWe advocate a compressed sensing strategy that consists of multiplying the sig...
Compressed sensing is a new concept in signal processing where one seeks to minimize the number of m...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a ...