Tone Recognition of Chinese Dissyllables Using Hidden Markov Models
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概要
- 論文の詳細を見る
A method of tone recognition has been developed for dissyllabic speech of Standard Chinese based on discrete hidden Markov modeling. As for the feature parameters of recognition, combination of macroscopic and microscopic parameters of fundamental frequency contours was shown to give a better result as compared to the isolated use of each parameter. Speaker normalization was realized by introducing an offset to the fundamental frequency. In order to avoid recognition errors due to syllable segmentation, a scheme of concatenated learning was adopted for training hidden Markov models. Based on the observations of fundamental frequency contours of dissyllables, a scheme was introduced to the method, where a contour was represented with a series of three syllabic tone models, two for the first and the second syllables and one for the transition part around the syllabic boundary. Corresponding to the voiceless consonant of the second syllable, fundamental frequency contour of a dissyllable may include a part without fundamental frequencies. This part was linearly interpolated in the current method. To prove the validity of the proposed method, it was compared with other methods, such as representing all of the dissyllabic contours as the concatenation of two models, assigning a special code to the voiceless part, and so on. Tone sandhi was also taken into account by introducing two additional models for the half-third tone and for the first 4th tone of the combination of two 4th tones. With the proposed method, averaged recognition rate of 96% was achieved for 5 male and 5 female speakers.
- 社団法人電子情報通信学会の論文
- 1995-06-25
著者
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Hirose Keikichi
Faculty Of Engineering The University Of Tokyo
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Hu Xinhui
Faculty of Engineering, The University of Tokyo
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Hu X
East China Normal Univ. Shanghai Chn
関連論文
- Duration Modeling with Decreased Intra-Group Temporal Variation for HMM-Based Phoneme Recognition
- Tone Recognition of Chinese Dissyllables Using Hidden Markov Models
- A Dialogue Processing System for Speech Response with High Adaptability to Dialogue Topics (Special Issue on Speech and Discourse Processing in Dialogue Systems)