CLSep 25, 2018

Non-native children speech recognition through transfer learning

arXiv:1809.09658v150 citations
Originality Incremental advance
AI Analysis

This work addresses speech recognition for non-native children learning foreign languages, which is an incremental advancement in domain-specific applications.

The paper tackled non-native children's speech recognition by adapting a multi-language DNN using transfer learning from children's native speech, resulting in significant improvement over a monolingual system adapted to target language speakers.

This work deals with non-native children's speech and investigates both multi-task and transfer learning approaches to adapt a multi-language Deep Neural Network (DNN) to speakers, specifically children, learning a foreign language. The application scenario is characterized by young students learning English and German and reading sentences in these second-languages, as well as in their mother language. The paper analyzes and discusses techniques for training effective DNN-based acoustic models starting from children native speech and performing adaptation with limited non-native audio material. A multi-lingual model is adopted as baseline, where a common phonetic lexicon, defined in terms of the units of the International Phonetic Alphabet (IPA), is shared across the three languages at hand (Italian, German and English); DNN adaptation methods based on transfer learning are evaluated on significant non-native evaluation sets. Results show that the resulting non-native models allow a significant improvement with respect to a mono-lingual system adapted to speakers of the target language.

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