Title of article :
Hybrid of Evolutionary and Swarm Intelligence Algorithms for Prosody Modeling in Natural Speech Synthesis
Author/Authors :
شيخان ، منصور نويسنده ,
Issue Information :
فصلنامه با شماره پیاپی 30 سال 2016
Pages :
12
From page :
33
To page :
44
Abstract :
To reduce the number of input features to a prosody generator in natural speech synthesis application, a hybrid of an evolutionary algorithm and a swarm intelligence-based algorithm is used for feature selection (FS) in this study. The input features to FS unit are word-level and syllable-level linguistic features. The word-level features include punctuation information, part-of-speech tags, semantic indicators, and length of the words. The syllable-level features include the phonemic structure and position indicator of the current syllable in a word. A modified Elman-type dynamic neural network (DNN) is used for prosody generation in this study. The output layer of this DNN provides prosody information at the syllable-level including pitch contour, log-energy level, duration information, and pause data. Simulation results show that the prosody information is predicted with an acceptable error by this hybrid soft-computing method as compared to Elman-type neural network prosody generator and binary gravitational search algorithm-based FS unit.
Journal title :
International Journal of Information and Communication Technology Research
Serial Year :
2016
Journal title :
International Journal of Information and Communication Technology Research
Record number :
2397414
Link To Document :
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