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MLMI
2007
Springer

Posterior-Based Features and Distances in Template Matching for Speech Recognition

14 years 5 months ago
Posterior-Based Features and Distances in Template Matching for Speech Recognition
The use of large speech corpora in example-based approaches for speech recognition is mainly focused on increasing the number of examples. This strategy presents some difficulties because databases may not provide enough examples for some rare words. In this paper we present a different method to incorporate the information contained in such corpora in these example-based systems. A multilayer perceptron is trained on these databases to estimate speaker and task-independent phoneme posterior probabilities, which are used as speech features. By reducing the variability of features, fewer examples are needed to properly characterize a word. In this way, performance can be highly improved when limited number of examples is available. Moreover, we also study posterior-based local distances, these result more effective than traditional Euclidean distance. Experiments on Phonebook database support the idea that posterior features with a proper local distance can yield competitive results. ...
Guillermo Aradilla, Hervé Bourlard
Added 08 Jun 2010
Updated 08 Jun 2010
Type Conference
Year 2007
Where MLMI
Authors Guillermo Aradilla, Hervé Bourlard
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