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Investigating deep neural network adaptation for generating exclamatory and interrogative speech in Mandarin

机译:调查深度神经网络适应在普通话中产生令人叹为弦和疑问语言的影响

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Currently, most speech synthesis systems generate speech only in a reading style, which greatly affects the expressiveness of synthetized speech. To improve the expressiveness of synthetized speech, this paper focuses on the generation of exclamatory and interrogative speech for Mandarin spoken language. We propose a multi-style (exclamatory and interrogative) deep neural network-based acoustic model with a style-specific layer (can have multiple layers) while other layers are shared. The style-specific layer is used to model the distinct style specific patterns. The shared layers allow maximum knowledge sharing between the declarative and multi-style speech. Such method is also validated on different neural networks. Besides, models that adapted on both spectral and F0 parameter is compared with models while only F0 parameter is adapted. Both subjective and objective evaluations show that this method is superior to prior work (which is trained by the combination of constrained Maximum likelihood linear regression (CMLLR) and structural maximum a posterior (SMAP)), and the BLSTM where top 1 layer is style-specific layer that adapted on both spectral and F0 parameter can achieve the best results.
机译:目前,大多数语音合成系统仅在阅读样式中产生语音,这极大地影响了综合演讲的表现力。为了提高综合演讲的表现力,本文重点介绍了普通话语言的宣传和疑问演讲的产生。我们提出了一种具有风格特定层(可以具有多个层)的多种式(令人疑问和疑问)深神经网络的声学模型,而其他层则被共享。风格特定的层用于模拟不同的样式特定模式。共享层允许在声明和多种式语音之间获得最大的知识共享。这些方法也在不同的神经网络上验证。此外,在仅调整F0参数的情况下,将适用于光谱和F0参数的模型与模型进行比较。主观和客观评估表明,该方法优于前后工作(由约束最大似然线性回归(CMLLR)的组合训练(CMLLR)和结构最大后(SMAP)),以及前1层是样式的布斯特。适用于光谱和F0参数的特定层可以实现最佳结果。

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