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Modeling Pitch Contour of Chinese Mandarin Sentences with the PENTA Model 被引量:1

Modeling Pitch Contour of Chinese Mandarin Sentences with the PENTA Model
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摘要 In continuous speech, the pitch contour of the same syllable may vary much due to its contextual information. The Parallel Encoding and Target Approximation (PENTA) model is applied here to Mandarin speech synthesis with a method to predict pitch contours for Chinese syllables with different contexts by combining the Classification And Regression Tree (CART) with the PENTA model to improve its prediction accuracy. CART was first used to cluster the syllables' normalized pitch contours according to the syllables contextual information and the distances between pitch contours. The average pitch contour was used to train the PENTA model with the average contour for each cluster. The initial pitch is required with the PENTA model to predict a continuous pitch contour. A Pitch Discontinuity Model (PDM) was used to predict the initial pitches at positions with voiceless consonants and prosodic boundaries. Initial tests on a Chinese four-syllable word corpus containing 2048 words were extended to tests with a continuous speech corpus containing 5445 sentences. The results are satisfactory in terms of the Root Mean Square Error (RMSE) comparing the predicted pitch contour with the original contour. This method can model pitch contours for Mandarin sentences with any text for speech synthesis. In continuous speech, the pitch contour of the same syllable may vary much due to its contextual information. The Parallel Encoding and Target Approximation (PENTA) model is applied here to Mandarin speech synthesis with a method to predict pitch contours for Chinese syllables with different contexts by combining the Classification And Regression Tree (CART) with the PENTA model to improve its prediction accuracy. CART was first used to cluster the syllables' normalized pitch contours according to the syllables contextual information and the distances between pitch contours. The average pitch contour was used to train the PENTA model with the average contour for each cluster. The initial pitch is required with the PENTA model to predict a continuous pitch contour. A Pitch Discontinuity Model (PDM) was used to predict the initial pitches at positions with voiceless consonants and prosodic boundaries. Initial tests on a Chinese four-syllable word corpus containing 2048 words were extended to tests with a continuous speech corpus containing 5445 sentences. The results are satisfactory in terms of the Root Mean Square Error (RMSE) comparing the predicted pitch contour with the original contour. This method can model pitch contours for Mandarin sentences with any text for speech synthesis.
出处 《Tsinghua Science and Technology》 EI CAS 2012年第2期218-224,共7页 清华大学学报(自然科学版(英文版)
基金 Supported by the National Natural Science Foundation of China (Nos.60805008,60928005,and 61003094) the Ph.D.Programs Foundation of the Ministry of Education of China (No.200800031015)
关键词 speech synthesis PENTA model prosody analysis prosody modeling speech synthesis PENTA model prosody analysis prosody modeling
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  • 1Ostendorf M, Wightman C, Veilleux N. Parse scoring with prosodic information: an analysis/synthesis approach [J]. Computer Speech and Language, 1993, 7: 193~210
  • 2Bachenko J, Fitzpatrick E A. Computational grammar of discourse-neutral prosodic phrasing in English [J ] Computational Linguistics, 1990,16:155~ 170
  • 3Quene H, Kager R. The derivation of prosody for text- to-speech from prosodic sentence structure[J]. Computer Speech and 1anguage, 1992,6:77~98
  • 4Taylor P, Black A W. Assigning phrase breaks from part-ofspeech sequences[J]. Computer Speech and Language, 1998, 12:99~117
  • 5Muller A F, Zimmermann H G, Neuneier R. Robust generation of symbolic prosody by a neural classifier based on autoassociators [A]. In: Proc. of Intl. Conf. on Acoust, Speech and .Signal Processing, 1996. 1285~1288
  • 6Wang M Q, Hirschberg J. Automatic classification of intonational phrase boundaries[J]. Computer Speech and Language, 1992, 6:175~196
  • 7Hirschberg J, Prieto P. Training intonational phrasing rules automatically for English and Spanish text-to-speech [J]. Speech Communication, 1996, 18:281~290
  • 8Lee S, Oh Y H. Tree-based modeling of prosodic phrasing and segmental duration for Korean TTS systems [J]. Speech Communication, 1999, 28:283~300
  • 9Chou F C,Tseng C Y,Chen K J,et al. Automatic generation of prosodic structure for high quality mandarin speech synthesis[A].Proc ICASSP, 1997. 1624~1627
  • 10Breiman L, Friedman J, Olshen R, et al. Classification and Regression Trees [M]. Belmont, CA: Wadsworth. 1984

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