modeling acoustic correlation
Modeling Acoustic Correlations by Factor Analysis
Hidden Markov models (HMMs) for automatic speech recognition rely on high dimensional feature vectors to summarize the short(cid:173) time properties of speech. Correlations between features can arise when the speech signal is non-stationary or corrupted by noise. We investigate how to model these correlations using factor analysis, a statistical method for dimensionality reduction . Factor analysis uses a small number of parameters to model the covariance struc(cid:173) ture of high dimensional data. These parameters are estimated by an Expectation-Maximization (EM) algorithm that can be em(cid:173) bedded in the training procedures for HMMs.
Modeling Acoustic Correlations by Factor Analysis
Saul, Lawrence K., Rahim, Mazin G.
Hidden Markov models (HMMs) for automatic speech recognition rely on high dimensional feature vectors to summarize the shorttime properties of speech. Correlations between features can arise when the speech signal is non-stationary or corrupted by noise. We investigate how to model these correlations using factor analysis, a statistical method for dimensionality reduction. Factor analysis uses a small number of parameters to model the covariance structure of high dimensional data. These parameters are estimated by an Expectation-Maximization (EM) algorithm that can be embedded in the training procedures for HMMs.
Modeling Acoustic Correlations by Factor Analysis
Saul, Lawrence K., Rahim, Mazin G.
Hidden Markov models (HMMs) for automatic speech recognition rely on high dimensional feature vectors to summarize the shorttime properties of speech. Correlations between features can arise when the speech signal is non-stationary or corrupted by noise. We investigate how to model these correlations using factor analysis, a statistical method for dimensionality reduction. Factor analysis uses a small number of parameters to model the covariance structure of high dimensional data. These parameters are estimated by an Expectation-Maximization (EM) algorithm that can be embedded in the training procedures for HMMs.
Modeling Acoustic Correlations by Factor Analysis
Saul, Lawrence K., Rahim, Mazin G.
Hidden Markov models (HMMs) for automatic speech recognition rely on high dimensional feature vectors to summarize the shorttime propertiesof speech. Correlations between features can arise when the speech signal is non-stationary or corrupted by noise. We investigate how to model these correlations using factor analysis, a statistical method for dimensionality reduction. Factor analysis uses a small number of parameters to model the covariance structure ofhigh dimensional data. These parameters are estimated by an Expectation-Maximization (EM) algorithm that can be embedded inthe training procedures for HMMs.