4th International Conference on Spoken Language Processing (ICSLP 1996) 1996
DOI: 10.21437/icslp.1996-326
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Maximum likelihood learning of auditory feature maps for stationary vowels

Abstract: In this paper, a mathematical framework for learning the acoustic features from a central auditory representation is presented. We adopt a statistical approach that models the learning process as to achieve a maximum likelihood estimation of the signal distribution. An algorithm, called statistical matching pursuit (SMP), is introduced to identify regions on the cortical surface where the features for each sound class are most prominent. We model the features with distributions of Gaussian mixture densities, a… Show more

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