Is compressive sensing overrated? Or can it live up to our expectations? What will come after compressive sensing and sparsity? And what has Galileo Galilei got to do with it? Compressive sensing has taken the signal processing community by storm. A large corpus of research devoted to the theory and numerics of compressive sensing has been published in the last few years. Moreover, compressive sensing has inspired and initiated intriguing new research directions, such as matrix completion. Potential new applications emerge at a dazzling rate. Yet some important theoretical questions remain open, and seemingly obvious applications keep escaping the grip of compressive sensing. In...
We are living in a world in which the growth rate of the data generated every year is almost exponen...
Data acquisition in compressive sensing (CS) is commonly believed to be less complicated, and even l...
Abstract—Recently, a new direction in signal processing – “Compressed Sensing " is being active...
Is compressive sensing overrated? Or can it live up to our expectations? What will come aft...
Abstract—Is compressive sensing overrated? Or can it live up to our expectations? What will come aft...
Compressive sensing is a relatively new technique in the signal processing field which allows acquir...
Compressed sensing (CS) is an emerging field that has attracted considerable research interest over ...
•Compressive sensing (CS) is a sampling strategy for signals that are sparse in an arbitrary orthono...
At its core, signal acquisition is concerned with efficient algorithms and protocols capable to capt...
Abstract. Compressive sensing is a method for recording a k-sparse signal x ∈ Rn with (possibly nois...
Description: The modern field of Compressed Sensing has revealed that it is possible to re-construct...
Compressive (or compressed) sensing (CS) is an emerging methodology in computational signal processi...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
Compressive sensing allows the reconstruction of original signals from a much smaller number of samp...
The physics of compressive sensing (CS) and the gradient-based recovery algorithms are presented. Fi...
We are living in a world in which the growth rate of the data generated every year is almost exponen...
Data acquisition in compressive sensing (CS) is commonly believed to be less complicated, and even l...
Abstract—Recently, a new direction in signal processing – “Compressed Sensing " is being active...
Is compressive sensing overrated? Or can it live up to our expectations? What will come aft...
Abstract—Is compressive sensing overrated? Or can it live up to our expectations? What will come aft...
Compressive sensing is a relatively new technique in the signal processing field which allows acquir...
Compressed sensing (CS) is an emerging field that has attracted considerable research interest over ...
•Compressive sensing (CS) is a sampling strategy for signals that are sparse in an arbitrary orthono...
At its core, signal acquisition is concerned with efficient algorithms and protocols capable to capt...
Abstract. Compressive sensing is a method for recording a k-sparse signal x ∈ Rn with (possibly nois...
Description: The modern field of Compressed Sensing has revealed that it is possible to re-construct...
Compressive (or compressed) sensing (CS) is an emerging methodology in computational signal processi...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
Compressive sensing allows the reconstruction of original signals from a much smaller number of samp...
The physics of compressive sensing (CS) and the gradient-based recovery algorithms are presented. Fi...
We are living in a world in which the growth rate of the data generated every year is almost exponen...
Data acquisition in compressive sensing (CS) is commonly believed to be less complicated, and even l...
Abstract—Recently, a new direction in signal processing – “Compressed Sensing " is being active...