Huaiping Ming, Dong-Yan Huang, M. Dong, Haizhou Li, Lei Xie, Shaofei Zhang
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引用次数: 37
Abstract
This paper is to show a representation of fundamental frequency (F0) using continuous wavelet transform (CWT) for prosody modeling in emotion conversion. Emotional conversion aims at converting speech from one emotion state to another. Specifically, we use CWT to decompose F0 into a five-scale representation that corresponds to five temporal scales. A neutral voice is converted to an emotional voice under an exemplar-based voice conversion framework, where both spectrum and F0 are simultaneously converted. The simulation results demonstrate that the dynamics of F0 in different temporal scales can be well captured and converted using the five-scale CWT representation. The converted speech signals are evaluated both objectively and subjectively, that confirm the effectiveness of the proposed method.