Abstract—Compressive Sensing (CS) is a new sampling theory which allows signals to be sampled at sub-Nyquist rate without loss of information. Fundamentally, its proce-dure can be modeled as a linear projection on one specific sensing matrix, which, in order to guarantee the information conservation, satisfies Restricted Isometry Property (RIP). Ordinarily, this matrix is constructed by the Gaussian random matrix or Bernoulli random matrix. In previous work, we have proved that the typical chaotic sequence-logistic map can be adopted to generate the sensing matrix for CS. In this paper, we show that Toeplitz-structured matrix constructed by chaotic sequence is sufficient to satisfy RIP with high probability. With the Toeplitz-structured Cha...
We consider the question of estimating a real low-complexity signal (such as a sparse vector or a lo...
In compressive sensing (CS), the restricted isometry property (RIP) is an important condition on mea...
Abstract—Compressive sensing is a methodology for the re-construction of sparse or compressible sign...
International audienceCompressive Sensing (CS) is a new sampling theory which allows signals to be s...
Abstract—Compressive sensing is a new methodology to cap-ture signals at sub-Nyquist rate. To guaran...
Compressive sensing uses simultaneous sensing and compression to provide an efficient image acquisit...
Abstract: Compressive sensing is a new sampling theory to capture signals at sub-Nyquist rate. To gu...
International audienceCompressive sensing is a new methodology to cap- ture signals at sub-Nyquist r...
As an emerging field for sampling paradigms, compressive sensing (CS) can sample and represent signa...
Abstract. Recent work in compressed sensing theory shows that n×N independent and identically distri...
Compressive sensing encodes a signal into a relatively small number of incoherent linear measurement...
In this paper, a novel paradigm of constructing measurement matrices is proposed for compressive sen...
Abstract. In this paper, a binary sparse observation matrix for compressive sensing is deterministic...
In this paper, we propose a high efficiency deterministic measurement matrix for practical compressi...
AbstractCompressed sensing (CS) is a new approach to signal sampling that allows signal recovery fro...
We consider the question of estimating a real low-complexity signal (such as a sparse vector or a lo...
In compressive sensing (CS), the restricted isometry property (RIP) is an important condition on mea...
Abstract—Compressive sensing is a methodology for the re-construction of sparse or compressible sign...
International audienceCompressive Sensing (CS) is a new sampling theory which allows signals to be s...
Abstract—Compressive sensing is a new methodology to cap-ture signals at sub-Nyquist rate. To guaran...
Compressive sensing uses simultaneous sensing and compression to provide an efficient image acquisit...
Abstract: Compressive sensing is a new sampling theory to capture signals at sub-Nyquist rate. To gu...
International audienceCompressive sensing is a new methodology to cap- ture signals at sub-Nyquist r...
As an emerging field for sampling paradigms, compressive sensing (CS) can sample and represent signa...
Abstract. Recent work in compressed sensing theory shows that n×N independent and identically distri...
Compressive sensing encodes a signal into a relatively small number of incoherent linear measurement...
In this paper, a novel paradigm of constructing measurement matrices is proposed for compressive sen...
Abstract. In this paper, a binary sparse observation matrix for compressive sensing is deterministic...
In this paper, we propose a high efficiency deterministic measurement matrix for practical compressi...
AbstractCompressed sensing (CS) is a new approach to signal sampling that allows signal recovery fro...
We consider the question of estimating a real low-complexity signal (such as a sparse vector or a lo...
In compressive sensing (CS), the restricted isometry property (RIP) is an important condition on mea...
Abstract—Compressive sensing is a methodology for the re-construction of sparse or compressible sign...