An alternative structure for adaptive linear prediction is proposed in which the adaptive filter is replaced by a cascade of inde- pendently adapting, low-order stages, and the prediction is generated by means of successive refinements. When the adaptation algorithm for the stages is LMS, the associated short filters are less affected by eigenvalue spread and mode coupling problems and display a faster convergence to their steady-state value. Experimental results show that a cascade of second-order LMS filters is capable of successfully modeling most input signals, with a much smaller MSE than LMS or lattice LMS predictors in the early phase of the adaptation. Other adaptation algorithms can be used for the single stages, whereas the overal...
Adaptive linear predictors have been used extensively in practice in a wide variety of forms. In the...
algorithm was well established [1], which itself grew out of even earlier work in adaptive arrays, i...
Abstract: — The numerically stable version of fast recursive least squares (NS-FRLS) algorithms rep...
This paper presents a complete analysis of the cascade structure for adaptive transversal filters ba...
This brief proposes an approach to apply least-squares techniques to adaptive FIR filtering in casca...
Abstract: This paper presents a performance analysis of three categories of adaptive filtering algor...
Among many adaptive algorithms that exist in the open literature, the class of approaches which are ...
In this paper we outline a technique for increasing the convergence rate of the LMS algorithm by mea...
In this paper, we develop adaptive linear prediction filters in the framework of maximum a posterior...
In this paper, linear prediction of signals is realized with an adaptive filter structure using a cl...
The LMS adaptive algorithm has always been attractive to researchers in the field of adaptive signal...
This paper proposes a new recursive scheme for estimating the maximum eigenvalue bound for autocorre...
The autocorrelation and covariance methods of linear prediction axe formulated in terms of an invers...
A novel linearised Recursive Least Squares (LRLS) learning algorithm is presented for an adaptive no...
When a conventional NLMS adaptive filter is used to predict a process, especially when predicting se...
Adaptive linear predictors have been used extensively in practice in a wide variety of forms. In the...
algorithm was well established [1], which itself grew out of even earlier work in adaptive arrays, i...
Abstract: — The numerically stable version of fast recursive least squares (NS-FRLS) algorithms rep...
This paper presents a complete analysis of the cascade structure for adaptive transversal filters ba...
This brief proposes an approach to apply least-squares techniques to adaptive FIR filtering in casca...
Abstract: This paper presents a performance analysis of three categories of adaptive filtering algor...
Among many adaptive algorithms that exist in the open literature, the class of approaches which are ...
In this paper we outline a technique for increasing the convergence rate of the LMS algorithm by mea...
In this paper, we develop adaptive linear prediction filters in the framework of maximum a posterior...
In this paper, linear prediction of signals is realized with an adaptive filter structure using a cl...
The LMS adaptive algorithm has always been attractive to researchers in the field of adaptive signal...
This paper proposes a new recursive scheme for estimating the maximum eigenvalue bound for autocorre...
The autocorrelation and covariance methods of linear prediction axe formulated in terms of an invers...
A novel linearised Recursive Least Squares (LRLS) learning algorithm is presented for an adaptive no...
When a conventional NLMS adaptive filter is used to predict a process, especially when predicting se...
Adaptive linear predictors have been used extensively in practice in a wide variety of forms. In the...
algorithm was well established [1], which itself grew out of even earlier work in adaptive arrays, i...
Abstract: — The numerically stable version of fast recursive least squares (NS-FRLS) algorithms rep...