This paper presents a novel optimization method for blind multi-channel identification. The formulation of the optimal blind channel identification problem consists of three components: a least squares fitting term, and two regularization terms representing objective functions of the cross relation and the deterministic subspace methods, respectively. The proposed method is robust to noise since it does not separately compute the common system input and channel functions but to estimate them concurrently using the convolution model of the channels and channel input. Simulation results are demonstrated showing that the proposed method outperforms both the cross relation method and the deterministic subspace method
In this paper the performance of two second order based blind channel identification techniques is s...
Blind channel identification and equalization have recently attracted a great deal of attention due ...
In this paper, we address the problem of restoring a signal from its noisy convolutions with two unk...
Deterministic blind identification algorithms of single-input and multi-output (SIMO) systems can ef...
approach is presented to solve the joint blind channel identi-fication and blind symbol estimation p...
This paper considers the problem of blind channel estimation of multi channel FIR filters. This is a...
The least-squares and the subspace methods are well known approaches for blind channel identificatio...
We study the performances of the subspace (SS), cross-relation (CR) and two-step maximum likelihood ...
This paper develops a fast maximum likelihood method for estimating the impulse responses ofmultiple...
In this paper a novel technique for blind identification of multi-channel FIR systems is derived fro...
AbstractIn this paper, we study the deterministic blind identification of multiple channel state-spa...
In this paper, we study the deterministic blind identification of multiple channel state-space model...
Developing fast and robust methods for identifying multiple FIR channels driven by an unknown common...
n this paper, we consider three blind channel estimation methods. Cross-relation (CR), subspace (SS)...
Summarization: The least-squares and the subspace methods are well known approaches for blind channe...
In this paper the performance of two second order based blind channel identification techniques is s...
Blind channel identification and equalization have recently attracted a great deal of attention due ...
In this paper, we address the problem of restoring a signal from its noisy convolutions with two unk...
Deterministic blind identification algorithms of single-input and multi-output (SIMO) systems can ef...
approach is presented to solve the joint blind channel identi-fication and blind symbol estimation p...
This paper considers the problem of blind channel estimation of multi channel FIR filters. This is a...
The least-squares and the subspace methods are well known approaches for blind channel identificatio...
We study the performances of the subspace (SS), cross-relation (CR) and two-step maximum likelihood ...
This paper develops a fast maximum likelihood method for estimating the impulse responses ofmultiple...
In this paper a novel technique for blind identification of multi-channel FIR systems is derived fro...
AbstractIn this paper, we study the deterministic blind identification of multiple channel state-spa...
In this paper, we study the deterministic blind identification of multiple channel state-space model...
Developing fast and robust methods for identifying multiple FIR channels driven by an unknown common...
n this paper, we consider three blind channel estimation methods. Cross-relation (CR), subspace (SS)...
Summarization: The least-squares and the subspace methods are well known approaches for blind channe...
In this paper the performance of two second order based blind channel identification techniques is s...
Blind channel identification and equalization have recently attracted a great deal of attention due ...
In this paper, we address the problem of restoring a signal from its noisy convolutions with two unk...