The development of compressed sensing technology has greatly facilitated its applications in many fields, such as medical imaging, multi-sensor and distributed sensing, coding theory, hyper-spectral imaging, and machine learning. Among these applications, the permuted Walsh-Hadamard matrices are frequently chosen for modeling real-world measurements that are limited to binary entry states by special structure (one typical example is the digital mirror device in singlepixel cameras) because the fast Walsh-Hadamard transform can efficiently calculate its multiplications; however, for a large-scale problem, the Walsh-Hadamard matrix would become unacceptably large to be stored in advance. To eliminate this defect, this paper proposes a maximum...
The problem of estimating sparse signals based on incomplete set of noiseless or noisy measurements...
We introduce a new class of measurement matrices for compressed sensing, using low order sum-maries ...
Abstract—This paper investigates the construction of deter-ministic matrices preserving the entropy ...
The development of compressed sensing technology has greatly facilitated its applications in many fi...
The measurement matrix which plays an important role in compressed sensing has got a lot of attentio...
The quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensing arch...
The quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensing arch...
The quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensing arch...
The quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensing arch...
none3noThe quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensi...
We use deterministic and probabilistic methods to analyze the performance of compressed sensing matr...
Abstract—For a measurement matrix in compressed sensing, its spark (or the smallest number of column...
This paper investigates the construction of determin- istic measurement matrices preserving the entr...
This paper studies the stability of some reconstruction algorithms for compressed sensing in terms o...
Compressed sensing (CS) is a signal acquisition paradigm to simultaneously acquire and reduce dimen...
The problem of estimating sparse signals based on incomplete set of noiseless or noisy measurements...
We introduce a new class of measurement matrices for compressed sensing, using low order sum-maries ...
Abstract—This paper investigates the construction of deter-ministic matrices preserving the entropy ...
The development of compressed sensing technology has greatly facilitated its applications in many fi...
The measurement matrix which plays an important role in compressed sensing has got a lot of attentio...
The quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensing arch...
The quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensing arch...
The quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensing arch...
The quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensing arch...
none3noThe quest for optimal sensing matrices is crucial in the design of efficient Compressed Sensi...
We use deterministic and probabilistic methods to analyze the performance of compressed sensing matr...
Abstract—For a measurement matrix in compressed sensing, its spark (or the smallest number of column...
This paper investigates the construction of determin- istic measurement matrices preserving the entr...
This paper studies the stability of some reconstruction algorithms for compressed sensing in terms o...
Compressed sensing (CS) is a signal acquisition paradigm to simultaneously acquire and reduce dimen...
The problem of estimating sparse signals based on incomplete set of noiseless or noisy measurements...
We introduce a new class of measurement matrices for compressed sensing, using low order sum-maries ...
Abstract—This paper investigates the construction of deter-ministic matrices preserving the entropy ...