Course Projects Speech Recognition Spring 1386

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Course Projects Speech Recognition Spring 1386

Course Projects, Speech Recognition Spoken language understanding and dialogue systems Out of vocabulary recognition Spontaneous speech recognition Recognition based on blind source separation Systems for recording minutes of meetings Speech recognition in car environments

Course Projects, Speech Recognition Motor theory of speech perception ASR using bio-signals and bio approaches Automatic spoken document processing for retrieval and browsing Discriminative training and features LVCSR systems, latest developments Speech recognition results confidence measures