A new set of algorithms for transform adaptation in adaptive transform coding is presented. These algorithms are inspired by standard techniques in adaptive finite impulse response (FIR) Wiener filtering and demonstrate that similar algorithms with simple updates exist for tracking principal components (eigenvectors of a correlation matrix). For coding an N-dimensional source, the transform adaptation problem is posed as an unconstrained minimization over K = N(N \Gamma 1)=2 parameters, and this for two possible performance measures. Performing this minimization through a gradient descent gives an algorithm analogous to LMS. Step size bounds for stability similar in form to those for LMS are proven. Linear and fixed-step random search meth...
This work studies the mean-square stability of stochastic gradient algorithms without resorting to s...
A design method is presented that extends least mean squared (LMS) adaptation of time-varying parame...
In this paper, we establish a probabilistic framework for adaptive transform coding that leads to a ...
The problem of computing the eigendecomposition of anN N symmetric matrix is cast as an unconstrain...
. The LMS adaptive algorithm is the most popular algorithm for adaptive filtering because of its sim...
ABSTRACT. The LMS adaptive algorithm is the most popular algorithm for adaptive ltering because of i...
We establish a principled framework for adaptive transform cod-ing. Transform coders are often const...
Among many adaptive algorithms that exist in the open literature, the class of approaches which are ...
The convergence rate of the Least Mean Squares (LMS) algorithm is poor whenever the adaptive lter in...
This thesis covers the development of a series of new methods and the application of adaptive filte...
Adaptive filtering is a technique used to implement filtering in time-varying environments. The alg...
A general formulation for developing a fast block-LMS adaptive algorithm is presented. In this algor...
algorithm was well established [1], which itself grew out of even earlier work in adaptive arrays, i...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
The LMS adaptive algorithm has always been attractive to researchers in the field of adaptive signal...
This work studies the mean-square stability of stochastic gradient algorithms without resorting to s...
A design method is presented that extends least mean squared (LMS) adaptation of time-varying parame...
In this paper, we establish a probabilistic framework for adaptive transform coding that leads to a ...
The problem of computing the eigendecomposition of anN N symmetric matrix is cast as an unconstrain...
. The LMS adaptive algorithm is the most popular algorithm for adaptive filtering because of its sim...
ABSTRACT. The LMS adaptive algorithm is the most popular algorithm for adaptive ltering because of i...
We establish a principled framework for adaptive transform cod-ing. Transform coders are often const...
Among many adaptive algorithms that exist in the open literature, the class of approaches which are ...
The convergence rate of the Least Mean Squares (LMS) algorithm is poor whenever the adaptive lter in...
This thesis covers the development of a series of new methods and the application of adaptive filte...
Adaptive filtering is a technique used to implement filtering in time-varying environments. The alg...
A general formulation for developing a fast block-LMS adaptive algorithm is presented. In this algor...
algorithm was well established [1], which itself grew out of even earlier work in adaptive arrays, i...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
The LMS adaptive algorithm has always been attractive to researchers in the field of adaptive signal...
This work studies the mean-square stability of stochastic gradient algorithms without resorting to s...
A design method is presented that extends least mean squared (LMS) adaptation of time-varying parame...
In this paper, we establish a probabilistic framework for adaptive transform coding that leads to a ...