This work presents a new type of the affine projection (AP) algorithms which incorporate the sparsity condition of a system. To exploit the sparsity of the system, a weighted l1-norm regularization is imposed on the cost function of the AP algorithm. Minimizing the cost function with a subgradient calculus and choosing two distinct weighting for l1-norm, two stochastic gradient based sparsity regularized AP (SR-AP) algorithms are developed. Experimental results exhibit that the SR-AP algorithms outperform the typical AP counterparts for identifying sparse systems
The zero attraction affine projection algorithm (ZA-APA) achieves better performance in terms of con...
Sparse system identification has attracted much attention in the field of adaptive algorithms, and t...
International audienceIn this paper, we focus on tracking the signal subspace under a sparsity const...
This work presents a new type of the affine projection (AP) algorithms which incorporate the sparsit...
Proposed is a novel affine projection sign algorithm with L-0-norm cost to improve the convergence r...
This paper presents an l1-norm penalized bias compensated linear constrained affine projection (l1-B...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
Abstract – The approximate memory improved proportionate affine projection algorithm has been propos...
This book focuses on theoretical aspects of the affine projection algorithm (APA) for adaptive filte...
We propose a smooth approximation l0-norm constrained affine projection algorithm (SL0-APA) to impro...
International audienceThe problem of principal subspace tracking under a sparsity constraint on the ...
In this paper, online sparse Volterra system identification is proposed. For that purpose, the conve...
This paper introduces a new family of recursive total least-squares (RTLS) algorithms for identifica...
This paper presents a regularized modification to the weighted variable step-size affine projection ...
Proportionate adaptive filters can improve the convergence speed for the identification of sparse sy...
The zero attraction affine projection algorithm (ZA-APA) achieves better performance in terms of con...
Sparse system identification has attracted much attention in the field of adaptive algorithms, and t...
International audienceIn this paper, we focus on tracking the signal subspace under a sparsity const...
This work presents a new type of the affine projection (AP) algorithms which incorporate the sparsit...
Proposed is a novel affine projection sign algorithm with L-0-norm cost to improve the convergence r...
This paper presents an l1-norm penalized bias compensated linear constrained affine projection (l1-B...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
Abstract – The approximate memory improved proportionate affine projection algorithm has been propos...
This book focuses on theoretical aspects of the affine projection algorithm (APA) for adaptive filte...
We propose a smooth approximation l0-norm constrained affine projection algorithm (SL0-APA) to impro...
International audienceThe problem of principal subspace tracking under a sparsity constraint on the ...
In this paper, online sparse Volterra system identification is proposed. For that purpose, the conve...
This paper introduces a new family of recursive total least-squares (RTLS) algorithms for identifica...
This paper presents a regularized modification to the weighted variable step-size affine projection ...
Proportionate adaptive filters can improve the convergence speed for the identification of sparse sy...
The zero attraction affine projection algorithm (ZA-APA) achieves better performance in terms of con...
Sparse system identification has attracted much attention in the field of adaptive algorithms, and t...
International audienceIn this paper, we focus on tracking the signal subspace under a sparsity const...