Atsuhiro Sakurai
Texas Instruments
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Featured researches published by Atsuhiro Sakurai.
Speech Communication | 2003
Atsuhiro Sakurai; Keikichi Hirose; Nobuaki Minematsu
This paper introduces a novel model-constrained, data-driven method to generate fundamental frequency contours for Japanese text-to-speech synthesis. In the training phase, the relationship between linguistic features and the parameters of a command-response F0 contour generation model is learned by a prediction module, which is represented by either a neural network or a set of binary regression trees. Input features consist of linguistic information related to accentual phrases that can be automatically derived from text, such as the position of the accentual phrase in the utterance, number of morae, accent type, and morphological information. In the synthesis phase, the prediction module is used to generate appropriate values of model parameters. The use of the parametric model restricts the degrees of freedom of the problem to facilitate the mapping between linguistic and prosodic features. Experimental results show that the method makes it possible to generate quite natural F0 contours with a relatively small training database.
international conference on acoustics, speech, and signal processing | 2001
Atsuhiro Sakurai; Keikichi Hirose; Nobuaki Minematsu
Introduces a model-constrained, data-driven method for generating fundamental frequency contours in Japanese text-to-speech synthesis. In the training phase, the parameters of a command-response F/sub 0/ contour generation model are learned by a prediction module, which can be a neural network or a set of binary regression trees. The input features consist of linguistic information related to accentual phrases that can be automatically derived from text, such as the position of the accentual phrase in the utterance, number of morae, accent type, and parts-of-speech. In the synthesis phase, the prediction module is used to generate appropriate values of model parameters. The use of the parametric model restricts the degrees of freedom of the problem, facilitating data-driven learning. Experimental results show that the method makes it possible to generate quite natural F/sub 0/ contours with a relatively small training database.
Archive | 2003
Atsuhiro Sakurai; Steven Trautmann; Daniel Zelazo
Archive | 2004
Atsuhiro Sakurai; Steven Trautmann
Archive | 2003
Atsuhiro Sakurai; Yoshihide Iwata
Archive | 2005
Atsuhiro Sakurai; Steven Trautmann
Archive | 2003
Atsuhiro Sakurai; Yoshihide Iwata
Archive | 2003
Atsuhiro Sakurai; Steven Trautmann
Journal of the Acoustical Society of America | 2012
Steven Trautmann; Akihiro Yonemoto; Atsuhiro Sakurai
Archive | 2003
Steven Trautmann; Atsuhiro Sakurai; Daniel Zelazo