Abstract — Blind deconvolution arises naturally when dealing with finite multipath interference on a signal. In this paper we present a new method to protect the signals from the effects of sparse multipath channels—we modulate/encode the signal using random waveforms before transmission and estimate the channel and signal from the observations, without any prior knowledge of the channel other than that it is sparse. The problem can be articulated as follows. The original message x is encoded with an overdetermined m × n (m> n) matrix A whose entries are randomly chosen; the encoded message is given by Ax. The received signal is the convolution of the encoded message with h, the s-sparse impulse response of the channel. We explore three ...
Blind deconvolution is an ubiquitous non-linear inverse problem in applications like wireless commun...
This paper considers the problem of sparse signal recovery when the decoder has prior information on...
Blind algorithms based on Information potential of output samples and a set of symbols generated in ...
In this paper we consider the classical problem of blind deconvolution of multiple signals from its ...
We consider the problem of recovering two unknown vectors, w and x, of length L from their circular ...
We consider simultaneous blind deconvolution of r source signals from their noisy superposition, a p...
We consider the recovery of sparse signals subject to sparse interference, as introduced in Studer e...
Abstract—This paper studies the problem of estimating the vector input to a sparse linear transforma...
Abstract-In this paper, we present novel probabilistic recovery guarantees for sparse signals subjec...
In this work, we consider the problem of data decoding in media-based modulation systems. The underl...
Cataloged from PDF version of article.In this paper, a novel algorithm is proposed to achieve robust...
Abstract. The In this paper we present a method for blind deconvolution of linear channels based on ...
In this paper, a novel algorithm is proposed to achieve robust high resolution detection in sparse m...
We propose a novel RF signal classification method based on sparse coding, an unsupervised learning ...
This paper presents a novel approach to blind equalization (deconvolution), which is based on direct...
Blind deconvolution is an ubiquitous non-linear inverse problem in applications like wireless commun...
This paper considers the problem of sparse signal recovery when the decoder has prior information on...
Blind algorithms based on Information potential of output samples and a set of symbols generated in ...
In this paper we consider the classical problem of blind deconvolution of multiple signals from its ...
We consider the problem of recovering two unknown vectors, w and x, of length L from their circular ...
We consider simultaneous blind deconvolution of r source signals from their noisy superposition, a p...
We consider the recovery of sparse signals subject to sparse interference, as introduced in Studer e...
Abstract—This paper studies the problem of estimating the vector input to a sparse linear transforma...
Abstract-In this paper, we present novel probabilistic recovery guarantees for sparse signals subjec...
In this work, we consider the problem of data decoding in media-based modulation systems. The underl...
Cataloged from PDF version of article.In this paper, a novel algorithm is proposed to achieve robust...
Abstract. The In this paper we present a method for blind deconvolution of linear channels based on ...
In this paper, a novel algorithm is proposed to achieve robust high resolution detection in sparse m...
We propose a novel RF signal classification method based on sparse coding, an unsupervised learning ...
This paper presents a novel approach to blind equalization (deconvolution), which is based on direct...
Blind deconvolution is an ubiquitous non-linear inverse problem in applications like wireless commun...
This paper considers the problem of sparse signal recovery when the decoder has prior information on...
Blind algorithms based on Information potential of output samples and a set of symbols generated in ...