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Human–computer interaction / Speech recognition / Speech synthesis / Speech Recognition Grammar Specification / Medical transcription / Acoustic model / Tuner / Microsoft Speech API / Computational linguistics / Computing / Science
Date: 2012-11-09 15:56:25
Human–computer interaction
Speech recognition
Speech synthesis
Speech Recognition Grammar Specification
Medical transcription
Acoustic model
Tuner
Microsoft Speech API
Computational linguistics
Computing
Science

® Speech Recognizer Speech Understood

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