Cataloged from PDF version of article.A new class of algorithms based on the fractional lower order statistics is proposed for finite-impulse response adaptive filtering in the presence of alpha-stable processes, It is shown that the normalized least mean p-norm (NLMP) and Douglas' family of normalized least mean square algorithms are special cases of the proposed class of algorithms. A convergence proof for the new algorithm is given by showing that it performs a descent-type update of the NLMP cost function. Simulation studies indicate that the proposed algorithms provide superior performance in impulsive noise environments compared to the existing approaches
DoctorThis thesis proposes the various methods to improve the robustness against impulsive measureme...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
The topic of this book is proportionate-type normalized least mean squares (PtNLMS) adaptive filteri...
A new class of algorithms based on the fractional lower order statistics is proposed for finite-impu...
Abstract. Noise control of signals is a key challenge problem in signal enhancement, signal recognit...
Based on the concept of Fractional Lower Order Statistics (FLOS), we present the Robust Least Mean M...
This paper proposes a new noise-constrained normalized least mean squares (NC-NLMS) adaptive filteri...
This paper presents an adaptive algorithm for active control of noise sources that are of impulsive ...
An M-estimate adaptive filter for robust adaptive filtering in impulse noise is proposed. Instead of...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
Most algorithms for active impulsive noise control employ non-linear transformations to limit the re...
A large class of physical phenomenon observed in practice exhibit non-Gaussian behavior. In this let...
This paper proposes a new LMS/Newton algorithm for robust adaptive filtering in impulse noise. The n...
Most algorithms for active impulsive noise control employ non-linear transformations to limit the re...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
DoctorThis thesis proposes the various methods to improve the robustness against impulsive measureme...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
The topic of this book is proportionate-type normalized least mean squares (PtNLMS) adaptive filteri...
A new class of algorithms based on the fractional lower order statistics is proposed for finite-impu...
Abstract. Noise control of signals is a key challenge problem in signal enhancement, signal recognit...
Based on the concept of Fractional Lower Order Statistics (FLOS), we present the Robust Least Mean M...
This paper proposes a new noise-constrained normalized least mean squares (NC-NLMS) adaptive filteri...
This paper presents an adaptive algorithm for active control of noise sources that are of impulsive ...
An M-estimate adaptive filter for robust adaptive filtering in impulse noise is proposed. Instead of...
Adaptive filters with suitable nonlinear devices are very effective in suppressing the adverse effe...
Most algorithms for active impulsive noise control employ non-linear transformations to limit the re...
A large class of physical phenomenon observed in practice exhibit non-Gaussian behavior. In this let...
This paper proposes a new LMS/Newton algorithm for robust adaptive filtering in impulse noise. The n...
Most algorithms for active impulsive noise control employ non-linear transformations to limit the re...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
DoctorThis thesis proposes the various methods to improve the robustness against impulsive measureme...
This paper proposes a new sequential block partial update normalized least mean M-estimate (SB-NLMM)...
The topic of this book is proportionate-type normalized least mean squares (PtNLMS) adaptive filteri...