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DNN-BASED SPEECH RECOGNITION FOR GLOBALPHONE LANGUAGES
- Citation Author(s):
- Submitted by:
- Martha Tachbelie
- Last updated:
- 20 May 2020 - 9:12am
- Document Type:
- Presentation Slides
- Document Year:
- 2020
- Event:
- Presenters:
- Martha Yifiru Tachbelie
- Paper Code:
- 5018
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This paper describes new reference benchmark results based on hybrid Hidden Markov Model and Deep Neural Networks (HMM-DNN) for the GlobalPhone (GP) multilingual text and speech database. GP is a multilingual database of high-quality read speech with corresponding transcriptions and pronunciation dictionaries in more than 20 languages. Moreover, we provide new results for five additional languages, namely, Amharic, Oromo, Tigrigna, Wolaytta, and Uyghur. Across the 22 languages considered, the hybrid HMM-DNN models outperform the HMM-GMM based models regardless of the size of the training speech used. Overall, we achieved relative improvements that range from 7.14% to 59.43%.