Symbol sequence search from telephone conversation
Masayuki Suzuki, Gakuto Kurata, et al.
INTERSPEECH 2017
When synthesizing speech from Japanese text, correct assignment of accent nuclei for input text with arbitrary contents is indispensable in obtaining naturally-sounding synthetic speech. A phenomenon called accent sandhi occurs in utterances of Japanese; when a word is uttered in a sentence, its accent nucleus may change depending on the contexts of preceding/succeeding words. This paper describes a statistical method for automatically predicting the accent nucleus changes due to accent sandhi. First, as the basis of the research, a database of Japanese text was constructed with labels of accent phrase boundaries and accent nucleus positions when uttered in sentences. A single native speaker of Tokyo dialect Japanese annotated all the labels for 6,344 Japanese sentences. Then, using this database, a conditional-random-field-based method was developed using this database to predict accent phrase boundaries and accent nuclei. The proposed method predicted accent nucleus positions for accent phrases with 94.66% accuracy, clearly surpassing the 87.48% accuracy obtained using our rule-based method. A listening experiment was also conducted on synthetic speech obtained using the proposed method and that obtained using the rule-based method. The results show that our method significantly improved the naturalness of synthetic speech.
Masayuki Suzuki, Gakuto Kurata, et al.
INTERSPEECH 2017
Takuma Udagawa, Masayuki Suzuki, et al.
INTERSPEECH 2022
Masayuki Suzuki, Nobuyasu Itoh, et al.
ICASSP 2019
Shintaro Ando, Masayuki Suzuki, et al.
ICASSP 2020