We present a low-complexity minimum L-infinity-norm adaptive filtering algorithm with sparse updates. A new constrained minimization problem based on the minimum disturbance in the L-infinity-norm sense is developed. Solving this minimization problem gives birth to an efficient algorithm which decreases the number of updates as well as the complexity per each iteration. Experimental results comparing the proposed algorithm to the conventional algorithms clearly indicate its good convergence performance with greatly reduced complexity.X112sciescopu
Abstract—We introduce a new family of algorithms to exploit sparsity in adaptive filters. It is base...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
3siThe paper addresses adaptive algorithms for Volterra filter identification capable of exploiting ...
The complexity of an adaptive filtering algorithm is proportional to the tap length of the filter an...
This paper provides a novel normalized sign least-mean square (NSLMS) algorithm which updates only a...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
An extension of the field of fast least-squares techniques is presented. It is shown that the adapta...
This thesis develops new adaptive filtering algorithms suitable for communications applications with...
In the fields related to digital signal processing and communication, as system identification, nois...
ℓ⁰ Norm based signal recovery is attractive in compressed sensing as it can facilitate exact recover...
This paper develops an algorithm for finding sparse signals from limited observations of a linear sy...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
Convergence and steady-state analyses of a least-mean mixed-norm adaptive algorithm are presented. T...
filtering application. Three forms of MR based algorithm are presented: i) the low complexity SPCG, ...
This paper presents a normalized subband adaptive filtering (NSAF) algorithm to cope with the sparsi...
Abstract—We introduce a new family of algorithms to exploit sparsity in adaptive filters. It is base...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
3siThe paper addresses adaptive algorithms for Volterra filter identification capable of exploiting ...
The complexity of an adaptive filtering algorithm is proportional to the tap length of the filter an...
This paper provides a novel normalized sign least-mean square (NSLMS) algorithm which updates only a...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
An extension of the field of fast least-squares techniques is presented. It is shown that the adapta...
This thesis develops new adaptive filtering algorithms suitable for communications applications with...
In the fields related to digital signal processing and communication, as system identification, nois...
ℓ⁰ Norm based signal recovery is attractive in compressed sensing as it can facilitate exact recover...
This paper develops an algorithm for finding sparse signals from limited observations of a linear sy...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
Convergence and steady-state analyses of a least-mean mixed-norm adaptive algorithm are presented. T...
filtering application. Three forms of MR based algorithm are presented: i) the low complexity SPCG, ...
This paper presents a normalized subband adaptive filtering (NSAF) algorithm to cope with the sparsi...
Abstract—We introduce a new family of algorithms to exploit sparsity in adaptive filters. It is base...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
3siThe paper addresses adaptive algorithms for Volterra filter identification capable of exploiting ...