Landmark-Based Speech Recognition: Spectrogram Reading, Support Vector Machines, Dynamic Bayesian Networks, and Phonology Mark Hasegawa-Johnson jhasegaw@uiuc.edu.

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Landmark-Based Speech Recognition: Spectrogram Reading, Support Vector Machines, Dynamic Bayesian Networks, and Phonology Mark Hasegawa-Johnson jhasegaw@uiuc.edu University of Illinois at Urbana-Champaign, USA

Lecture 12. Summary, Review, and Possible Collaborations Course Review A complete model of prosody-dependent landmark-based speech recognition Probabilistic representations of phonological concepts Two possible implementations: generative and discriminative Results so far Relationship to standard ASR methods Unsolved problems Acoustic features for speech recognition SRM training of graphical models Phonology, prosody, syntax, and semantics Graphical models of dialog structure