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This paper presents a front-end consisting of an Artificial Neural Network (ANN) architecture trained with multilingual corpora.The idea is to train an ANN front-end able to integrate the acoustic variations included in databases collected for different languages, through different channels, or even for specific tasks.This ANN front-end produces discriminant features that can be used as observation vectors for language or task dependent recognizers.The approach has been evaluated on three difficult tasks: recognition of non-native speaker sentences, training of a new language with a limited amount of speech data, and training of a model for car environment using a clean microphone corpus of the target language and data collected in car environment in another language.
Scanzio et al. (Mon,) studied this question.
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