Data processing: speech signal processing – linguistics – language – Speech signal processing – Application
Reexamination Certificate
2006-08-19
2010-12-28
Sked, Matthew J (Department: 2626)
Data processing: speech signal processing, linguistics, language
Speech signal processing
Application
C704S004000, C704S005000, C704S257000
Reexamination Certificate
active
07860719
ABSTRACT:
A computer-implemented method for creating a disfluency translation lattice includes providing a plurality of weighted finite state transducers including a translation model, a language model, and a phrase segmentation model as input, performing a cascaded composition of the weighted finite state transducers to create a disfluency translation lattice, and storing the disfluency translation lattice to a computer-readable media.
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Gao Yuqing
Maskey Sameer Raj
Zhou Bowen
F. Chau & Associates LLC
International Business Machines - Corporation
Sked Matthew J
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