Parametric emotional singing voice synthesis

Younsung Park, Sungrack Yun, C. Yoo
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引用次数: 8

Abstract

This paper describes an algorithm to control the expressed emotion of a synthesized song. Based on the database of various melodies sung neutrally with restricted set of words, hidden semi-Markov models (HSMMs) of notes ranging from E3 to G5 are constructed for synthesizing singing voice. Three steps are taken in the synthesis: (1) Pitch and duration are determined according to the notes indicated by the musical score; (2) Features are sampled from appropriate HSMMs with the duration set to the maximum probability; (3) Singing voice is synthesized by the mel-log spectrum approximation (MLSA) filter using the sampled features as parameters of the filter. Emotion of a synthesized song is controlled by varying the duration and the vibrato parameters according to the Thayer's mood model. Perception test is performed to evaluate the synthesized song. The results show that the algorithm can control the expressed emotion of a singing voice given a neutral singing voice database.
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参数化情感歌声合成
本文描述了一种控制合成歌曲情感表达的算法。以限定词集中性演唱的各种旋律数据库为基础,构建了E3 ~ G5音符的隐半马尔可夫模型(HSMMs),用于歌声合成。合成过程分为三个步骤:(1)根据乐谱上的音符确定音高和音长;(2)从适当的hsmm中采样特征,将持续时间设置为最大概率;(3)利用采样特征作为滤波器参数,采用梅尔-对数谱近似(mel-log spectrum approximation, MLSA)滤波器合成歌唱声音。根据塞耶的情绪模型,通过改变持续时间和振动参数来控制合成歌曲的情绪。通过感知测试对合成歌曲进行评价。结果表明,该算法在给定一个中性的歌声数据库的情况下,能够很好地控制歌唱者的情绪表达。
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