In most modern high-resolution multi-channel radar systems one of the major problems to deal with is the huge amount of data to be acquired, processed and/or stored. But why do we need all these data? According to the well known Nyquist-Shannon sampling theorem, real signals have to be sampled at at least twice the signal bandwidth to prevent ambiguities. Therefore, sampling of very wide bandwidths may require Analog to Digital Converter (ADC) hardware that is unavailable or very expensive; especially in multi-channel systems, the cost and power consumption can become critical factors. In applications involving interleaving of radar modes in time or space (antenna aperture), multi-function operation often leads to conflicting requirements o...
We consider the problem of target detection from a set of Compressed Sensing (CS) radar measurements...
Traditional radar sensing typically employs matched filtering between the received signal and the sh...
Compressive Sensing theory shows that, a sparse signal can be reconstructed from its sub-Nyquist rat...
In most modern high-resolution multi-channel radar systems one of the major problems to deal with is...
In recent years, compressive sensing has received a lot of attention due to its ability to reduce th...
Compressive sensing (CS) techniques offer a framework for the detection and allocation of sparse sig...
Thesis (Ph.D.)--University of Washington, 2013According to Nyquist Sampling theorem, a band-limited ...
Compressive Sensing (CS) provides a new paradigm in data acquisition and signal processing based on ...
In this study, we propose compressive sampling matching pursuit (CoSaMP) algorithm for sub-Nyquist b...
Compressive sampling or compressed sensing (CS) works on the assumption of the sparsity or compressi...
This paper presents the application of Compressive Sensing (CS) theory in radar signal processing. C...
In this paper we present some preliminary results on the application of Compressive Sensing (CS) to ...
The Shannon/Nyquist sampling theorem tells us that in order to not lose information when uni-formly ...
We present compressed statistical testing (CST) with an illustrative application to radar target det...
The ultra wide band pulsed radar uses a very narrow pulse width. Sampling this narrow pulse at the N...
We consider the problem of target detection from a set of Compressed Sensing (CS) radar measurements...
Traditional radar sensing typically employs matched filtering between the received signal and the sh...
Compressive Sensing theory shows that, a sparse signal can be reconstructed from its sub-Nyquist rat...
In most modern high-resolution multi-channel radar systems one of the major problems to deal with is...
In recent years, compressive sensing has received a lot of attention due to its ability to reduce th...
Compressive sensing (CS) techniques offer a framework for the detection and allocation of sparse sig...
Thesis (Ph.D.)--University of Washington, 2013According to Nyquist Sampling theorem, a band-limited ...
Compressive Sensing (CS) provides a new paradigm in data acquisition and signal processing based on ...
In this study, we propose compressive sampling matching pursuit (CoSaMP) algorithm for sub-Nyquist b...
Compressive sampling or compressed sensing (CS) works on the assumption of the sparsity or compressi...
This paper presents the application of Compressive Sensing (CS) theory in radar signal processing. C...
In this paper we present some preliminary results on the application of Compressive Sensing (CS) to ...
The Shannon/Nyquist sampling theorem tells us that in order to not lose information when uni-formly ...
We present compressed statistical testing (CST) with an illustrative application to radar target det...
The ultra wide band pulsed radar uses a very narrow pulse width. Sampling this narrow pulse at the N...
We consider the problem of target detection from a set of Compressed Sensing (CS) radar measurements...
Traditional radar sensing typically employs matched filtering between the received signal and the sh...
Compressive Sensing theory shows that, a sparse signal can be reconstructed from its sub-Nyquist rat...