The sequential partial-update least mean square (S-LMS)-based algorithms are efficient methods for reducing the arithmetic complexity in adaptive system identification and other industrial informatics applications. They are also attractive in acoustic applications where long impulse responses are encountered. A limitation of these algorithms is their degraded performances in an impulsive noise environment. This paper proposes new robust counterparts for the S-LMS family based on M-estimation. The proposed sequential least mean M-estimate (S-LMM) family of algorithms employ nonlinearity to improve their robustness to impulsive noise. Another contribution of this paper is the presentation of a convergence performance analysis for the S-LMS/S-...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
Abstract. Noise control of signals is a key challenge problem in signal enhancement, signal recognit...
This paper studies the convergence behaviors of the fast least mean M-estimate/Newton adaptive filte...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
ABSTRACT This paper proposes a family of new robust adaptive filtering algorithms for stereophonic a...
MasterThis thesis proposes a robust least mean square algorithm (rLMS) to eliminate bias due to nois...
This paper studies the convergence analysis of the least mean M-estimate (LMM) and normalized least ...
This paper proposes a new LMS/Newton algorithm for robust adaptive filtering in impulse noise. The n...
This paper studies the problem of robust adaptive filtering in impulsive noise environment using a r...
In this paper, a robust M-estimate adaptive filter for impulse noise suppression is proposed. The ob...
This paper proposes a new noise-constrained normalized least mean squares (NC-NLMS) adaptive filteri...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
AbstractPartial Update LMS (PU LMS) algorithms started to play an important role in adaptive process...
(Uncorrected OCR) Abstract Abstract of thesis entitled Robust Statistics Based Adaptive Filteri...
The performance of the Frequency-Response-ShapedLeast Mean Square (FRS-LMS) adaptive algorithm in es...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
Abstract. Noise control of signals is a key challenge problem in signal enhancement, signal recognit...
This paper studies the convergence behaviors of the fast least mean M-estimate/Newton adaptive filte...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
ABSTRACT This paper proposes a family of new robust adaptive filtering algorithms for stereophonic a...
MasterThis thesis proposes a robust least mean square algorithm (rLMS) to eliminate bias due to nois...
This paper studies the convergence analysis of the least mean M-estimate (LMM) and normalized least ...
This paper proposes a new LMS/Newton algorithm for robust adaptive filtering in impulse noise. The n...
This paper studies the problem of robust adaptive filtering in impulsive noise environment using a r...
In this paper, a robust M-estimate adaptive filter for impulse noise suppression is proposed. The ob...
This paper proposes a new noise-constrained normalized least mean squares (NC-NLMS) adaptive filteri...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
AbstractPartial Update LMS (PU LMS) algorithms started to play an important role in adaptive process...
(Uncorrected OCR) Abstract Abstract of thesis entitled Robust Statistics Based Adaptive Filteri...
The performance of the Frequency-Response-ShapedLeast Mean Square (FRS-LMS) adaptive algorithm in es...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
Abstract. Noise control of signals is a key challenge problem in signal enhancement, signal recognit...
This paper studies the convergence behaviors of the fast least mean M-estimate/Newton adaptive filte...