The compressive sensing (CS) theory says that for some kind of signals there is no need to keep or transfer all the data acquired accordingly to the Nyquist criterion. In this work we investigate if the CS approach is applicable for recording and analysis of radio astronomy (RA) signals. Since CS methods are applicable for the signals with sparse (and compressible) representations, the compressibility of RA signals is verified. As a result, we identify which RA signals can be processed using CS, find the parameters which can improve or degrade CS application to RA results, describe the optimum way how to perform signal filtering in CS applications. Also, a range of virtual LabVIEW instruments are created for the signal analysis with the CS ...
This paper presents the application of Compressive Sensing (CS) theory in radar signal processing. C...
In radio interferometry, information about a small region of the sky is obtained in the form of samp...
This thesis develops algorithms and applications for compressive sensing, a topic in signal processi...
The compressive sensing (CS) theory says that for some kind of signals there is no need to keep or t...
International audienceThe design of a new digital radio receiver for radio astronomical observations...
Compressive sensing (CS) techniques offer a framework for the detection and allocation of sparse sig...
Compressive sensing is a relatively new technique in the signal processing field which allows acquir...
Radio interferometry probes astrophysical signals through incomplete and noisy Fourier measurements....
International audienceThe paradigm of Compressive Sensing (CS) has emerged in the last few years as ...
Abstract—Compressive sensing (CS) is an alternative to Shan-non/Nyquist sampling for the acquisition...
Radio interferometry is a powerful technique for astronomical imaging. The theory of Compressed Sens...
Data acquisition in compressive sensing (CS) is commonly believed to be less complicated, and even l...
Radio interferometry probes astrophysical signals through incomplete and noisy Fourier measurements....
In this paper we give a brief review of compressive sensing (CS) applied to radar. Though CS theory ...
Radio interferometry is a powerful technique for astronomi-cal imaging. The theory of compressed sen...
This paper presents the application of Compressive Sensing (CS) theory in radar signal processing. C...
In radio interferometry, information about a small region of the sky is obtained in the form of samp...
This thesis develops algorithms and applications for compressive sensing, a topic in signal processi...
The compressive sensing (CS) theory says that for some kind of signals there is no need to keep or t...
International audienceThe design of a new digital radio receiver for radio astronomical observations...
Compressive sensing (CS) techniques offer a framework for the detection and allocation of sparse sig...
Compressive sensing is a relatively new technique in the signal processing field which allows acquir...
Radio interferometry probes astrophysical signals through incomplete and noisy Fourier measurements....
International audienceThe paradigm of Compressive Sensing (CS) has emerged in the last few years as ...
Abstract—Compressive sensing (CS) is an alternative to Shan-non/Nyquist sampling for the acquisition...
Radio interferometry is a powerful technique for astronomical imaging. The theory of Compressed Sens...
Data acquisition in compressive sensing (CS) is commonly believed to be less complicated, and even l...
Radio interferometry probes astrophysical signals through incomplete and noisy Fourier measurements....
In this paper we give a brief review of compressive sensing (CS) applied to radar. Though CS theory ...
Radio interferometry is a powerful technique for astronomi-cal imaging. The theory of compressed sen...
This paper presents the application of Compressive Sensing (CS) theory in radar signal processing. C...
In radio interferometry, information about a small region of the sky is obtained in the form of samp...
This thesis develops algorithms and applications for compressive sensing, a topic in signal processi...