This paper studies an M-estimation-based method for linear estimation with weighted L1 regularization and its recursive implementation. Motivated by the sensitivity of conventional least-squares-based L1-regularized linear estimation (Lasso) in impulsive noise environment, an M-estimator-based Lasso (M-Lasso) method is introduced to restrain the outliers and an iterative re-weighted least-squares (IRLS) algorithm is proposed to solve this M-estimation problem. Moreover, instead of using the matrix inversion formula, QR decomposition (QRD) is employed in the M-Lasso for recursive implementation with a lower arithmetic complexity. Simulation results show that the M-estimation-based Lasso performs considerably better than the traditional LS-ba...
The performance of regularized least-squares estimation in noisy compressed sensing is analyzed in t...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
An M-estimate adaptive filter for robust adaptive filtering in impulse noise is proposed. Instead of...
Proceedings of the International Conference on Green Circuits and Systems, 2010, p. 190-195This pape...
Abstract—A new robust recursive least-squares (RLS) adaptive filtering algorithm that uses a priori ...
This paper presents a new l1-RLS method to estimate a sparse impulse response estimation. A new regu...
MasterThis thesis proposes a robust least mean square algorithm (rLMS) to eliminate bias due to nois...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
This paper proposes a new variable forgetting factor QR-based recursive least M-estimate (VFF-QRRLM)...
This paper proposes a new QR-decomposition-based recursive frequency estimation algorithm for multip...
In this paper, a FIR adaptive equalizer for impulse noise suppression is proposed. It is based on th...
(Uncorrected OCR) Abstract Abstract of thesis entitled Robust Statistics Based Adaptive Filteri...
The sign least mean square with reweighted L1-norm constraint (SLMS-RL1) algorithm is an attractive ...
Least squares (LS) algorithms are often used in many spectrum estimation methods. However, when the ...
The performance of regularized least-squares estimation in noisy compressed sensing is analyzed in t...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
An M-estimate adaptive filter for robust adaptive filtering in impulse noise is proposed. Instead of...
Proceedings of the International Conference on Green Circuits and Systems, 2010, p. 190-195This pape...
Abstract—A new robust recursive least-squares (RLS) adaptive filtering algorithm that uses a priori ...
This paper presents a new l1-RLS method to estimate a sparse impulse response estimation. A new regu...
MasterThis thesis proposes a robust least mean square algorithm (rLMS) to eliminate bias due to nois...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
This paper proposes a new variable forgetting factor QR-based recursive least M-estimate (VFF-QRRLM)...
This paper proposes a new QR-decomposition-based recursive frequency estimation algorithm for multip...
In this paper, a FIR adaptive equalizer for impulse noise suppression is proposed. It is based on th...
(Uncorrected OCR) Abstract Abstract of thesis entitled Robust Statistics Based Adaptive Filteri...
The sign least mean square with reweighted L1-norm constraint (SLMS-RL1) algorithm is an attractive ...
Least squares (LS) algorithms are often used in many spectrum estimation methods. However, when the ...
The performance of regularized least-squares estimation in noisy compressed sensing is analyzed in t...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...