Compressive sensing (CS) can be used to recover sparse data (signal) from limited measurements by solving a constrained convex optimization problem. If this approach is applied on microwave stepped frequency imaging technique, the required number of frequency steps to get clear images can be significantly reduced resulting in simple systems with fast data acquisition and real time results. To that end, three different CS techniques are applied on head imaging systems aiming at the detection of brain injuries by utilizing the sparse characteristic of the correlated time domain scattered signals. The presented measured results using a head imaging system indicate that the time domain correlation signals are indeed sparse and thus can be recov...
It is well-known that in a canonical inverse scattering problem there is only a limited amount of in...
International audienceDuring decades microwave imaging technology has achieved remarkable progress, ...
Modern scientific instruments produce vast amounts of data, which can overwhelm the processing abili...
The theory of compressive sensing (CS) provides a method to recover an unknown sparse signal (data) ...
IEEE MTT-S International Conference on Numerical Electromagnetic and Multiphysics Modeling and Optim...
Cempressive sensing (CS) technique is usually used to reconstruct the original signal (full-sampled ...
The compressive sensing [1], [2] is an emerging technique for data acquisition and signal recovery w...
International audienceOne of the fundamental theorem in information theory is the so-called sampling...
The recently introduced compressive sensing (CS) theory allows – under certain assumptions – to reco...
Abstract — One of the fundamental theorem in information theory is the so-called sampling theorem al...
International audienceA review of the features, potentialities, and applications of Compressive Sens...
A wavelet based compressive sensing technique for head imaging is presented. The non-sparsity of the...
The application of compressed sensing (CS) to biomedical imaging is exciting because \ud it allows a...
This work proposes a novel microwave imaging (MWI) multi-frequency technique, which combines compres...
Microwave tomography(MT) allows the safe, non-intrusive examination of the internal structureof an o...
It is well-known that in a canonical inverse scattering problem there is only a limited amount of in...
International audienceDuring decades microwave imaging technology has achieved remarkable progress, ...
Modern scientific instruments produce vast amounts of data, which can overwhelm the processing abili...
The theory of compressive sensing (CS) provides a method to recover an unknown sparse signal (data) ...
IEEE MTT-S International Conference on Numerical Electromagnetic and Multiphysics Modeling and Optim...
Cempressive sensing (CS) technique is usually used to reconstruct the original signal (full-sampled ...
The compressive sensing [1], [2] is an emerging technique for data acquisition and signal recovery w...
International audienceOne of the fundamental theorem in information theory is the so-called sampling...
The recently introduced compressive sensing (CS) theory allows – under certain assumptions – to reco...
Abstract — One of the fundamental theorem in information theory is the so-called sampling theorem al...
International audienceA review of the features, potentialities, and applications of Compressive Sens...
A wavelet based compressive sensing technique for head imaging is presented. The non-sparsity of the...
The application of compressed sensing (CS) to biomedical imaging is exciting because \ud it allows a...
This work proposes a novel microwave imaging (MWI) multi-frequency technique, which combines compres...
Microwave tomography(MT) allows the safe, non-intrusive examination of the internal structureof an o...
It is well-known that in a canonical inverse scattering problem there is only a limited amount of in...
International audienceDuring decades microwave imaging technology has achieved remarkable progress, ...
Modern scientific instruments produce vast amounts of data, which can overwhelm the processing abili...