Single-Gaussian and Gaussian-Mixture Models are utilized in various pattern recognition tasks. The model parameters are estimated usually via Maximum Likelihood Estimation (MLE) with respect to available training data. However, if only small amount of training data is available, the resulting model will not generalize well. Loosely speaking, classification performance given an unseen test set may be poor. In this paper, we propose a novel estimation technique of the model variances. Once the variances were estimated using MLE, they are multiplied by a scaling factor, which reflects the amount of uncertainty present in the limited sample set. The optimal value of the scaling factor is based on the Kullback-Leibler criterion and on the assump...
The learning of variational inference can be widely seen as first estimating the class assignment va...
Finite gaussian mixture models are widely used in statistics thanks to their great flexibility. Howe...
Model based clustering assumes that the data come from a finite mixture model with each component co...
Single-Gaussian and Gaussian-Mixture Models are utilized in various pattern recognition tasks. The m...
Gaussian mixture models are often used for probability density estimation in pattern recognition and...
The classification task for a real world application shall include a confidence estimation to handle...
An estimation of parameters of a multivariate Gaussian Mixture Model is usually based on a criterion...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
Gaussian mixture models (GMM), commonly used in pattern recognition and machine learning, provide a ...
CLASSIFICATION Maximum Likelihood (ML) modeling of multiclass data for classi cation often su ers fr...
This chapter is dedicated to model-based supervised and unsuper-vised classification. Probability di...
International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy featu...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
peer reviewedOnline learning, Gaussian mixture model, Uncertain model. We present a method for incre...
U ovoj disertaciji je predstavljen model koji aproksimira pune kova- rijansne matrice u modelu gauso...
The learning of variational inference can be widely seen as first estimating the class assignment va...
Finite gaussian mixture models are widely used in statistics thanks to their great flexibility. Howe...
Model based clustering assumes that the data come from a finite mixture model with each component co...
Single-Gaussian and Gaussian-Mixture Models are utilized in various pattern recognition tasks. The m...
Gaussian mixture models are often used for probability density estimation in pattern recognition and...
The classification task for a real world application shall include a confidence estimation to handle...
An estimation of parameters of a multivariate Gaussian Mixture Model is usually based on a criterion...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
Gaussian mixture models (GMM), commonly used in pattern recognition and machine learning, provide a ...
CLASSIFICATION Maximum Likelihood (ML) modeling of multiclass data for classi cation often su ers fr...
This chapter is dedicated to model-based supervised and unsuper-vised classification. Probability di...
International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy featu...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
peer reviewedOnline learning, Gaussian mixture model, Uncertain model. We present a method for incre...
U ovoj disertaciji je predstavljen model koji aproksimira pune kova- rijansne matrice u modelu gauso...
The learning of variational inference can be widely seen as first estimating the class assignment va...
Finite gaussian mixture models are widely used in statistics thanks to their great flexibility. Howe...
Model based clustering assumes that the data come from a finite mixture model with each component co...