Sparsity-based estimation techniques deal with the problem of retrieving a data vector from an undercomplete set of linear observations, when the data vector is known to have few nonzero elements with unknown positions. It is also known as the atomic decomposition problem, and has been carefully studied in the field of compressed sensing. Recent findings have led to a method called basis pursuit, also known as Least Absolute Shrinkage and Selection Operator (LASSO), as a numerically reliable sparsity-based approach. Although the atomic decomposition problem is generally NP-hard, it has been shown that basis pursuit may provide exact solutions under certain assumptions. This has led to an extensive study of signals with sparse representation...
This paper presents a novel iterative greedy reconstruction algorithm for practical compressed sensi...
The problem of recovering sparse signals from a limited number of measurements is now ubiquitous in ...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
Sparsity-based estimation techniques deal with the problem of retrieving a data vector from an under...
In the theory of compressed sensing (CS), the sparsity ‖x‖0 of the unknown signal x ∈ Rp is commonly...
The idea of representing a signal in a classical computing machine has played a central role in the ...
This letter presents a new sparsity basis selection compressed sensing method (SBSCS) for improving ...
Sparse signal modeling has received much attention recently because of its application in medical im...
Whatever the field of application, optimizing the results and sometimes even solving problems requir...
Compressed sensing has a wide range of applications that include error correction, imaging,...
The real-world data nowadays is usually in high dimension. For example, one data image can be repres...
This paper considers the problem of sparse signal recovery when the decoder has prior information on...
This paper proposes a best basis extension of compressed sensing recovery. Instead of regularizing t...
The idea of representing a signal in a classical computing machine has played a central role in the ...
Finding a sparse approximation of a signal from an arbitrary dictionary is a very useful tool to sol...
This paper presents a novel iterative greedy reconstruction algorithm for practical compressed sensi...
The problem of recovering sparse signals from a limited number of measurements is now ubiquitous in ...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
Sparsity-based estimation techniques deal with the problem of retrieving a data vector from an under...
In the theory of compressed sensing (CS), the sparsity ‖x‖0 of the unknown signal x ∈ Rp is commonly...
The idea of representing a signal in a classical computing machine has played a central role in the ...
This letter presents a new sparsity basis selection compressed sensing method (SBSCS) for improving ...
Sparse signal modeling has received much attention recently because of its application in medical im...
Whatever the field of application, optimizing the results and sometimes even solving problems requir...
Compressed sensing has a wide range of applications that include error correction, imaging,...
The real-world data nowadays is usually in high dimension. For example, one data image can be repres...
This paper considers the problem of sparse signal recovery when the decoder has prior information on...
This paper proposes a best basis extension of compressed sensing recovery. Instead of regularizing t...
The idea of representing a signal in a classical computing machine has played a central role in the ...
Finding a sparse approximation of a signal from an arbitrary dictionary is a very useful tool to sol...
This paper presents a novel iterative greedy reconstruction algorithm for practical compressed sensi...
The problem of recovering sparse signals from a limited number of measurements is now ubiquitous in ...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...