Stochastic gradient-based adaptive algorithms are developed for the optimization of Weighted Myriad Filters, a class of nonlinear filters, motivated by the properties of ff-stable distributions, that have been proposed for robust non-Gaussian signal processing in impulsive noise environments. An implicit formulation of the filter output is used to derive an expression for the gradient of the mean absolute error (MAE) cost function, leading to necessary conditions for the optimal filter weights. An adaptive steepest -descent algorithm is then derived to optimize the filter weights. This is modified to yield an algorithm with a very simple weight update, computationally comparable to the update in the classical LMS algorithm. Simulations dem...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
This paper studies the convergence behaviors of the fast least mean M-estimate/Newton adaptive filte...
We introduce the boosting notion of machine learning to the adaptive signal processing literature. I...
This paper addresses the problem of computation of the output of the Weighted Myriad Filter. Weighte...
A new class of nonlinear filters called FIR-weighted myriad hybrid (FIR-WMyH) filters was introduced...
Derivative-based algorithms, called classical algorithms, for optimization of weighted myriad (WMy) ...
Robust nonlinear filters are robust against outliers in applications in which the underlying process...
Abstract:- An adaptive filter is essentially a digital filter with self-adjusting characteristic. It...
(Uncorrected OCR) Abstract Abstract of thesis entitled Robust Statistics Based Adaptive Filteri...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
Locally-adaptive algorithms of myriad filtering are proposed with adaptation of a sample myriad line...
This paper derives an expression for the optimal error nonlinearity in adaptive filter design. Usi...
The least-mean squares algorithm is non-robust against impulsive noise. Incorporating an error nonli...
A large class of physical phenomenon observed in practice exhibit non-Gaussian behavior. In this let...
The theory and design of linear adaptive filters based on FIR filter structures is well developed an...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
This paper studies the convergence behaviors of the fast least mean M-estimate/Newton adaptive filte...
We introduce the boosting notion of machine learning to the adaptive signal processing literature. I...
This paper addresses the problem of computation of the output of the Weighted Myriad Filter. Weighte...
A new class of nonlinear filters called FIR-weighted myriad hybrid (FIR-WMyH) filters was introduced...
Derivative-based algorithms, called classical algorithms, for optimization of weighted myriad (WMy) ...
Robust nonlinear filters are robust against outliers in applications in which the underlying process...
Abstract:- An adaptive filter is essentially a digital filter with self-adjusting characteristic. It...
(Uncorrected OCR) Abstract Abstract of thesis entitled Robust Statistics Based Adaptive Filteri...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
Locally-adaptive algorithms of myriad filtering are proposed with adaptation of a sample myriad line...
This paper derives an expression for the optimal error nonlinearity in adaptive filter design. Usi...
The least-mean squares algorithm is non-robust against impulsive noise. Incorporating an error nonli...
A large class of physical phenomenon observed in practice exhibit non-Gaussian behavior. In this let...
The theory and design of linear adaptive filters based on FIR filter structures is well developed an...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
This paper studies the convergence behaviors of the fast least mean M-estimate/Newton adaptive filte...
We introduce the boosting notion of machine learning to the adaptive signal processing literature. I...