Nonnegativity constraints arise frequently in statistical learning and pattern recognition. Multiplicative updates provide natural solutions to optimizations involving these constraints. One well known set of multiplicative updates is given by the Expectation-Maximization algorithm for hidden Markov models, as used in automatic speech recognition. Recently, we have derived similar algorithms for nonnegative deconvolution and nonnegative quadratic programming. These algorithms have applications to low-level problems in voice processing, such as fundamental frequency estimation, as well as high-level problems, such as the training of large margin classifiers. In this paper, we describe these algorithms and the ideas that connect them
Non-negative data arise in a variety of important signal processing domains, such as power spectra o...
Abstract During the last decade, the most significant advances in the field of continuous speech rec...
In this thesis, we develop novel training-based non-negative matrix factorization (NMF) algorithms f...
Nonnegativity constraints arise frequently in statistical learning and pattern recognition. Multipli...
Many problems in neural computation and statistical learning involve optimizations with nonnegativit...
We investigate a learning algorithm for the classification of nonnegative data by mixture models. Mu...
Various problems in nonnegative quadratic programming arise in the training of large margin classifi...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
In many numerical applications, for instance in image deconvolu- tion, the nonnegativity of the comp...
We investigate a simple algorithm that combines multiband processing and least squares fits to estim...
We recently introduced the high-resolution nonnegative ma-trix factorization (HR-NMF) model for repr...
Discovering a representation that allows auditory data to be parsimoniously represented is useful fo...
A robust and reliable noise estimation algorithm is required in many speech enhancement systems. Th...
Bayesian Regularization and Nonnegative Deconvolution (BRAND) is proposed for estimating time delays...
Abstract The aim of the present paper is to give a general method allowing us to devise maximum-like...
Non-negative data arise in a variety of important signal processing domains, such as power spectra o...
Abstract During the last decade, the most significant advances in the field of continuous speech rec...
In this thesis, we develop novel training-based non-negative matrix factorization (NMF) algorithms f...
Nonnegativity constraints arise frequently in statistical learning and pattern recognition. Multipli...
Many problems in neural computation and statistical learning involve optimizations with nonnegativit...
We investigate a learning algorithm for the classification of nonnegative data by mixture models. Mu...
Various problems in nonnegative quadratic programming arise in the training of large margin classifi...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
In many numerical applications, for instance in image deconvolu- tion, the nonnegativity of the comp...
We investigate a simple algorithm that combines multiband processing and least squares fits to estim...
We recently introduced the high-resolution nonnegative ma-trix factorization (HR-NMF) model for repr...
Discovering a representation that allows auditory data to be parsimoniously represented is useful fo...
A robust and reliable noise estimation algorithm is required in many speech enhancement systems. Th...
Bayesian Regularization and Nonnegative Deconvolution (BRAND) is proposed for estimating time delays...
Abstract The aim of the present paper is to give a general method allowing us to devise maximum-like...
Non-negative data arise in a variety of important signal processing domains, such as power spectra o...
Abstract During the last decade, the most significant advances in the field of continuous speech rec...
In this thesis, we develop novel training-based non-negative matrix factorization (NMF) algorithms f...