نتایج جستجو برای: gmm پویا

تعداد نتایج: 12511  

2006
Tian Lan Deniz Erdogmus Umut Ozertem Yonghong Huang

Feature selection is a critical step for pattern recognition and many other applications. Typically, feature selection strategies can be categorized into wrapper and filter approaches. Filter approach has attracted much attention because of its flexibility and computational efficiency. Previously, we have developed an ICA-MI framework for feature selection, in which the Mutual Information (MI) ...

2004
Arthur Chan Mosur Ravishankar Alexander I. Rudnicky Jahanzeb Sherwani

Large vocabulary continuous speech recognition systems are known to be computationally intensive. A major bottleneck is the Gaussian mixture model (GMM) computation and various techniques have been proposed to address this problem. We present a systematic study of fast GMM computation techniques. As there are a large number of these and it is impractical to exhaustively evaluate all of them, we...

2011
Jason Abrevaya Stephen G. Donald

Missing data is one of the most common challenges facing empirical researchers. This paper presents a general GMM framework for dealing with missing data on explanatory variables or instrumental variables. For a linear-regression model with missing covariate data, an efficient GMM estimator under minimal assumptions on missingness is proposed. The estimator, which also allows for a specificatio...

2005
Jonathan Darch Ben P. Milner Saeed Vaseghi

This paper proposes a method of predicting the formant frequencies of a frame of speech from its mel-frequency cepstral coefficient (MFCC) representation. Prediction is achieved through the creation of a Gaussian mixture model (GMM) which models the joint density of formant frequencies and MFCCs. Using this GMM and an input MFCC vector, a maximum a posteriori (MAP) prediction of the formant fre...

2004
Hagai Aronowitz David Burshtein Amihood Amir

Speaker Indexing has recently emerged as an important task due to the rapidly growing volume of audio archives. Current filtration techniques still suffer from problems both in accuracy and efficiency. The major reason for the drawbacks of existing solutions is the use of inaccurate anchor models. The contribution of this paper is two-fold. On the theoretical side, a new method is developed for...

2009
Guoli Ye Brian Kan-Wing Mak Man-Wai Mak

Most of current state-of-the-art speaker verification (SV) systems use Gaussian mixture model (GMM) to represent the universal background model (UBM) and the speaker models (SM). For an SV system that employs log-likelihood ratio between SM and UBM to make the decision, its computational efficiency is largely determined by the GMM computation. This paper attempts to speedup GMM computation by c...

2004
Tomoki Toda Alan W. Black Keiichi Tokuda

This paper describes the acoustic-to-articulatory inversion mapping using a Gaussian Mixture Model (GMM). Correspondence of an acoustic parameter and an articulatory parameter is modeled by the GMM trained using the parallel acousticarticulatory data. We measure the performance of the GMMbased mapping and investigate the effectiveness of using multiple acoustic frames as an input feature and us...

1999
Mouhamadou Seck Frédéric Bimbot Didier Zugaj Bernard Delyon

We present a technique for the segmention of a sound track into two classes of segments. Each frame of signal is preprocessed by extracting cepstral coefficients and their first order derivatives. For each class, the distribution of the frame parameter vectors is modeled by a Gaussian Mixture Model (GMM). GMM order is selected using two criteria : the Minimum Description Length (MDL) criterion ...

2003
Fabien Cardinaux Conrad Sanderson Sébastien Marcel

We compare two classifier approaches, namely classifiers based on Multi Layer Perceptrons (MLPs) and Gaussian Mixture Models (GMMs), for use in a face verification system. The comparison is carried out in terms of performance, robustness and practicability. Apart from structural differences, the two approaches use different training criteria; the MLP approach uses a discriminative criterion, wh...

2001
Douglas E. Sturim Douglas A. Reynolds Elliot Singer Joseph P. Campbell

This paper introduces the technique of anchor modeling in the applications of speaker detection and speaker indexing. The anchor modeling algorithm is refined by pruning the number of models needed. The system is applied to the speaker detection problem where its performance is shown to fall short of the state-of-the-art Gaussian Mixture Model with Universal Background Model (GMM-UBM) system. H...

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