Title :
Speaker adaptation of speaking rate-dependent hierarchical prosodic model for Mandarin TTS
Author :
Po-Chun Wang ; I-Bin Liao ; Chen-Yu Chiang ; Yih-Ru Wang ; Sin-Horng Chen
Author_Institution :
ECE Dept., NCTU, Taiwan
Abstract :
In this paper, a speaker adaptation method to adapt an existing speaking rate-dependent hierarchical prosodic model (SR-HPM) of an SR-controlled Mandarin TTS system to new speaker´s data for realizing a new voice is proposed. Two main problems are addressed: data sparseness for few adaptation utterances existing only in a small range of normal speaking rate and no adaptation data in both ranges of fast and slow speaking rates. The proposed method follows the idea of SR-HPM training to firstly normalize the prosodic-acoustic features of the new speaker´s speech data, to then train an HPM by the prosody labeling and modeling algorithm, and to lastly refine the HPM to an SR-dependent model. The MAP adaptation method with model parameter extrapolation is applied to cope with the above two problems. Experimental results on a male speaker´s adaptation data confirmed that the resulting adaptive SR-HPM has reasonable parameters covering a wide range of speaking rates and hence can be used in the TTS system to generate prosodic-acoustic features for synthesizing the new speaker´s voice of any given SR.
Keywords :
feature extraction; speaker recognition; speech synthesis; SR-HPM model; SR-controlled Mandarin TTS system; data sparseness; male speaker adaptation data; prosodic-acoustic features; prosody labeling algorithm; prosody modeling algorithm; speaker adaptation method; speaking rate-dependent hierarchical prosodic model; text-to-speech synthesis; Adaptation models; Data models; Energy states; Hidden Markov models; Speech; Standards; Training; Mandarin TTS; hierarchical prosodic model; prosodic-acoustic features; speaker adaptation;
Conference_Titel :
Chinese Spoken Language Processing (ISCSLP), 2014 9th International Symposium on
Conference_Location :
Singapore
DOI :
10.1109/ISCSLP.2014.6936616