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1
Intro
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ASR with no Lexicon
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ASR without transcribed data
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CMU Wildemess
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Cross-Lingual Phone Recognition
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TTS without the Text
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Iterative Decoding: German
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Iterative Decoding: English
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Speech Translation
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Intent Discovery from Acoustics
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Keyword Matching
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ASR no data: Discussion Point
Description:
Learn about applying Automatic Speech Recognition (ASR) systems to low- or no-resource languages in this 44-minute lecture from CMU's Multilingual Natural Language Processing course. Explore topics such as ASR without lexicons or transcribed data, cross-lingual phone recognition, text-to-speech without text, iterative decoding in German and English, speech translation, intent discovery from acoustics, and keyword matching. Gain insights into the challenges and innovative approaches for developing ASR systems in resource-constrained environments, presented by Alan Black as part of the CS11-737 course at Carnegie Mellon University.

CMU Multilingual NLP 2020 - Low Resource ASR

Graham Neubig
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