This paper considers the applicability of the least mean fourth (LM F) power gradient adaptation criteria with 'advantage' for signals associated with gaussian noise, the associated noise power estimate not being known. The proposed method, as an adaptive spectral estimator, is found to provide superior performance than the least mean square (LMS) adaptation for the same (or even lower) speed of convergence for signals having sufficiently high signal-to-gaussian noise ratio. The results include comparison of the performance of the LMS-tapped delay line, LMF-tapped delay line, LMS-lattice and LMF-lattice algorithms, with the Burg's block data method as reference. The signals, like sinusoids with noise and stochastic signals like EEG, are con...
The normalized least mean-fourth (NLMF) algorithm is presented in this work and shown to have potent...
The task of adaptive estimation in the presence of random and highly nonlinear environment such as w...
The performance of the Frequency-Response-ShapedLeast Mean Square (FRS-LMS) adaptive algorithm in es...
This paper considers the applicability of the least mean fourth (LM F) power gradient adaptation cri...
A modified least mean fourth (LMF) adaptive algorithm applicable to non-stationary signals is prese...
Abstract:- A novel approach for the least-mean-square (LMS) estimation algorithm is proposed. The ap...
Adaptive filtering is a wide area of researcher in present decade in the field of communication. The...
A new adaptive filter algorithm has been developed that combines the benefits of the Least Mean Squa...
In this work, a family of normalized least mean fourth algorithms is presented. Unlike the LMF algor...
Adaptive filters constitute an important part of signal processing. They are widely used in many app...
A novel algorithm, called the signed regressor least mean fourth (SRLMF) adaptive algorithm, that re...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
In this work, a novel algorithm, called the signed regressor least mean fourth (SRLMF) adaptive algo...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
MasterThis thesis proposes a robust least mean square algorithm (rLMS) to eliminate bias due to nois...
The normalized least mean-fourth (NLMF) algorithm is presented in this work and shown to have potent...
The task of adaptive estimation in the presence of random and highly nonlinear environment such as w...
The performance of the Frequency-Response-ShapedLeast Mean Square (FRS-LMS) adaptive algorithm in es...
This paper considers the applicability of the least mean fourth (LM F) power gradient adaptation cri...
A modified least mean fourth (LMF) adaptive algorithm applicable to non-stationary signals is prese...
Abstract:- A novel approach for the least-mean-square (LMS) estimation algorithm is proposed. The ap...
Adaptive filtering is a wide area of researcher in present decade in the field of communication. The...
A new adaptive filter algorithm has been developed that combines the benefits of the Least Mean Squa...
In this work, a family of normalized least mean fourth algorithms is presented. Unlike the LMF algor...
Adaptive filters constitute an important part of signal processing. They are widely used in many app...
A novel algorithm, called the signed regressor least mean fourth (SRLMF) adaptive algorithm, that re...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
In this work, a novel algorithm, called the signed regressor least mean fourth (SRLMF) adaptive algo...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
MasterThis thesis proposes a robust least mean square algorithm (rLMS) to eliminate bias due to nois...
The normalized least mean-fourth (NLMF) algorithm is presented in this work and shown to have potent...
The task of adaptive estimation in the presence of random and highly nonlinear environment such as w...
The performance of the Frequency-Response-ShapedLeast Mean Square (FRS-LMS) adaptive algorithm in es...