This paper studies the convergence behaviors of the fast least mean M-estimate/Newton adaptive filtering algorithm proposed in [4], which is based on the fast LMS/Newton principle and the minimization of an M-estimate function using robust statistics for robust filtering in impulsive noise. By using the Price's theorem and its extension for contaminated Gaussian (CG) noise case, the convergence behaviors of the fast LMM/Newton algorithm with Gaussian inputs and both Gaussian and CG noises are analyzed. Difference equations describing the mean and mean square behaviors of this algorithm and step size bound for ensuring stability are derived. These analytical results reveal the advantages of the fast LMM/Newton algorithm in combating impulsiv...
DoctorThis thesis proposes the various methods to improve the robustness against impulsive measureme...
# The Author(s) 2010. This article is published with open access at Springerlink.com Abstract This p...
The sequential partial-update least mean square (S-LMS)-based algorithms are efficient methods for r...
This paper proposes a new LMS/Newton algorithm for robust adaptive filtering in impulse noise. The n...
We present the convergence analysis of the recursive least M-estimate (RLM) adaptive filter algorith...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
This paper studies the convergence analysis of the least mean M-estimate (LMM) and normalized least ...
This paper studies the problem of robust adaptive filtering in impulsive noise environment using a r...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
An M-estimate adaptive filter for robust adaptive filtering in impulse noise is proposed. Instead of...
The performance of the Frequency-Response-ShapedLeast Mean Square (FRS-LMS) adaptive algorithm in es...
MasterThis thesis proposes a robust least mean square algorithm (rLMS) to eliminate bias due to nois...
(Uncorrected OCR) Abstract Abstract of thesis entitled Robust Statistics Based Adaptive Filteri...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
This paper proposes a new noise-constrained normalized least mean squares (NC-NLMS) adaptive filteri...
DoctorThis thesis proposes the various methods to improve the robustness against impulsive measureme...
# The Author(s) 2010. This article is published with open access at Springerlink.com Abstract This p...
The sequential partial-update least mean square (S-LMS)-based algorithms are efficient methods for r...
This paper proposes a new LMS/Newton algorithm for robust adaptive filtering in impulse noise. The n...
We present the convergence analysis of the recursive least M-estimate (RLM) adaptive filter algorith...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
This paper studies the convergence analysis of the least mean M-estimate (LMM) and normalized least ...
This paper studies the problem of robust adaptive filtering in impulsive noise environment using a r...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
An M-estimate adaptive filter for robust adaptive filtering in impulse noise is proposed. Instead of...
The performance of the Frequency-Response-ShapedLeast Mean Square (FRS-LMS) adaptive algorithm in es...
MasterThis thesis proposes a robust least mean square algorithm (rLMS) to eliminate bias due to nois...
(Uncorrected OCR) Abstract Abstract of thesis entitled Robust Statistics Based Adaptive Filteri...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
This paper proposes a new noise-constrained normalized least mean squares (NC-NLMS) adaptive filteri...
DoctorThis thesis proposes the various methods to improve the robustness against impulsive measureme...
# The Author(s) 2010. This article is published with open access at Springerlink.com Abstract This p...
The sequential partial-update least mean square (S-LMS)-based algorithms are efficient methods for r...