It is possible to reconstruct a signal from cyclic nonuniform samples and thus take advantage of a lower sampling rate than the Nyquist rate. However, this has the potential drawback of amplifying signal perturbations, e.g. due to noise and quantization. We propose an algorithm based on sparse reconstruction techniques, which is able to find the sparsest sampling pattern that permits perfect reconstruction of the sampled signal. The result of our algorithm with a proper constraint values is a sparse subset of samples that results in an ideal condition number for its equivalent sub-DFT matrix. Besides, our algorithm has low complexity in terms of computation. The method is illustrated by simulations for a sparse multi band signal
The classical approach to A/D conversion has been uniform sam-pling and we get perfect reconstructio...
Periodic nonuniform sampling has been considered in literature as an effective approach to reduce th...
In this paper we propose a low complexity adaptive algorithm for lossless compressive sampling and ...
It is possible to reconstruct a signal from cyclic nonuniform samples and thus take advantage of a l...
International audienceFaithful short-time acquisition of a sparse signal is still a challenging issu...
The classical approach to A/D conversion has been uniform sampling and we get perfect reconstruction...
Compressive Sampling (CS) is a new method of signal acquisition and reconstruction from frequency da...
A single-iteration algorithm is proposed for the reconstruction of sparse signal from its incomplete...
A multirate filter bank model is considered for reconstruction of periodically sampled signals. In c...
A traditional sampling method is that the signal should be sampled at a rate exceeding twice the hig...
A bandlimited signal can be reconstructed from its periodic nonuniformly spaced samples provided the...
Abstract—Periodic nonuniform sampling can be used to achieve sub-Nyquist sampling of bandlimited mul...
We propose a joint sparse signal recovery approach to coherent spectral analysis of irregularly samp...
In this paper we consider the problem of recovering tempo-rally smooth or correlated sparse signals ...
While the recent theory of compressed sensing provides an opportunity to overcome the Nyquist limit ...
The classical approach to A/D conversion has been uniform sam-pling and we get perfect reconstructio...
Periodic nonuniform sampling has been considered in literature as an effective approach to reduce th...
In this paper we propose a low complexity adaptive algorithm for lossless compressive sampling and ...
It is possible to reconstruct a signal from cyclic nonuniform samples and thus take advantage of a l...
International audienceFaithful short-time acquisition of a sparse signal is still a challenging issu...
The classical approach to A/D conversion has been uniform sampling and we get perfect reconstruction...
Compressive Sampling (CS) is a new method of signal acquisition and reconstruction from frequency da...
A single-iteration algorithm is proposed for the reconstruction of sparse signal from its incomplete...
A multirate filter bank model is considered for reconstruction of periodically sampled signals. In c...
A traditional sampling method is that the signal should be sampled at a rate exceeding twice the hig...
A bandlimited signal can be reconstructed from its periodic nonuniformly spaced samples provided the...
Abstract—Periodic nonuniform sampling can be used to achieve sub-Nyquist sampling of bandlimited mul...
We propose a joint sparse signal recovery approach to coherent spectral analysis of irregularly samp...
In this paper we consider the problem of recovering tempo-rally smooth or correlated sparse signals ...
While the recent theory of compressed sensing provides an opportunity to overcome the Nyquist limit ...
The classical approach to A/D conversion has been uniform sam-pling and we get perfect reconstructio...
Periodic nonuniform sampling has been considered in literature as an effective approach to reduce th...
In this paper we propose a low complexity adaptive algorithm for lossless compressive sampling and ...