Title :
Symbolic Modeling of Prosody: From Linguistics to Statistics
Author :
Obin, Nicolas ; Lanchantin, Pierre
Author_Institution :
UPMC, Paris, France
Abstract :
The assignment of prosodic events (accent and phrasing) from the text is crucial in text-to-speech synthesis systems. This paper addresses the combination of linguistic and metric constraints for the assignment of prosodic events in text-to-speech synthesis. First, a linguistic processing chain is used to provide a rich linguistic description of a text. Then, a novel statistical representation based on a hierarchical HMM (HHMM) is used to model the prosodic structure of a text: the root layer represents the text, each intermediate layer a sequence of intermediate phrases, the pre-terminal layer the sequence of accents, and the terminal layer the sequence of linguistic contexts. For each intermediate layer, a segmental HMM and information fusion are used to fuse the linguistic and metric constraints for the segmentation of a text into phrases. A set of experiments conducted on multi-speaker databases with various speaking styles reports that: the rich linguistic representation improves drastically the assignment of prosodic events, and the fusion of linguistic and metric constraints significantly improves over standard methods for the segmentation of a text into phrases. These constitute substantial advances that can be further used to model the speech prosody of a speaker, a speaking style, and emotions for text-to-speech synthesis.
Keywords :
hidden Markov models; linguistics; speech synthesis; accent event; hierarchical HMM; hierarchical hidden Markov model; information fusion; linguistic constraint; linguistic description; linguistic processing chain; linguistics; metric constraint; phrasing event; prosodic events; prosody symbolic modeling; segmental HMM; statistical representation; statistics; text prosodic structure; text segmentation; text-to-speech synthesis system; Context; Hidden Markov models; Measurement; Pragmatics; Speech; Speech processing; Syntactics; Dempster-Shafer fusion; hierarchical HMMs; prosodic events; segmental HMMs; speaking style; speech prosody; surface/deep syntactic parsing; text-to-speech synthesis;
Journal_Title :
Audio, Speech, and Language Processing, IEEE/ACM Transactions on
DOI :
10.1109/TASLP.2014.2387389