We address two challenges of applying compressed sensing in a practical application, namely, its poor reconstruction quality and its high computational complexity. Since most signals are not fully sparse in practice, the reconstructed signals from conventional reconstruction methods often suffer from reconstruction artifacts due to the distortion of small coefficients. To improve the reconstruction quality, we introduce referenced compressed sensing (RefCS), a reconstruction method that exploits the spatial and/or temporal redundancy between a pair of signals. We show that using a correlated reference—an arbitrary signal close to the compressed signal—there exists the bound of reconstruction error that depends on the distance between the re...
Compressive Sensing (CS) theory combines the signal sampling and compression for sparse signals resu...
Compressive Sensing, as an emerging technique in signal processing is reviewed in this paper togethe...
This thesis addresses the possibility of applying the compressed sensing (CS) framework to Functiona...
A fast compressed sensing reconstruction using least squares method with the signal correlation is p...
Our recent work has shown that quality of compressed sensing reconstruction can be improved immensel...
AbstractCompressed sensing enables the acquisition of sparse signals at a rate that is much lower th...
Existing convex relaxation-based approaches to reconstruction in compressed sensing assume that nois...
Reconstruction of continuous signals from a number of their discrete samples is central to digital s...
Compressed sensing (CS) theory has demonstrated that sparse signals can be reconstructed from far fe...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a l...
Compressed sensing (CS) is a new signal acquisition paradigm that enables the reconstruction of sign...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a l...
Two-part reconstruction is a framework for signal recovery in compressed sensing (CS), in which the ...
One of the approaches to exploit temporal redundancy in compressive sensing reconstruction of spatio...
Compressed sensing enables the acquisition of sparse signals at a rate that is much lower than the N...
Compressive Sensing (CS) theory combines the signal sampling and compression for sparse signals resu...
Compressive Sensing, as an emerging technique in signal processing is reviewed in this paper togethe...
This thesis addresses the possibility of applying the compressed sensing (CS) framework to Functiona...
A fast compressed sensing reconstruction using least squares method with the signal correlation is p...
Our recent work has shown that quality of compressed sensing reconstruction can be improved immensel...
AbstractCompressed sensing enables the acquisition of sparse signals at a rate that is much lower th...
Existing convex relaxation-based approaches to reconstruction in compressed sensing assume that nois...
Reconstruction of continuous signals from a number of their discrete samples is central to digital s...
Compressed sensing (CS) theory has demonstrated that sparse signals can be reconstructed from far fe...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a l...
Compressed sensing (CS) is a new signal acquisition paradigm that enables the reconstruction of sign...
Compressed sensing hinges on the sparsity of signals to allow their reconstruction starting from a l...
Two-part reconstruction is a framework for signal recovery in compressed sensing (CS), in which the ...
One of the approaches to exploit temporal redundancy in compressive sensing reconstruction of spatio...
Compressed sensing enables the acquisition of sparse signals at a rate that is much lower than the N...
Compressive Sensing (CS) theory combines the signal sampling and compression for sparse signals resu...
Compressive Sensing, as an emerging technique in signal processing is reviewed in this paper togethe...
This thesis addresses the possibility of applying the compressed sensing (CS) framework to Functiona...