Periodnet: A Non-Autoregressive Waveform Generation Model with a Structure Separating Periodic and Aperiodic Components

Yukiya Hono, Shinji Takaki, Kei Hashimoto, Keiichiro Oura, Yoshihiko Nankaku, K. Tokuda
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引用次数: 15

Abstract

We propose PeriodNet, a non-autoregressive (non-AR) waveform generation model with a new model structure for modeling periodic and aperiodic components in speech waveforms. The non-AR waveform generation models can generate speech waveforms parallelly and can be used as a speech vocoder by conditioning an acoustic feature. Since a speech waveform contains periodic and aperiodic components, both components should be appropriately modeled to generate a high-quality speech waveform. However, it is difficult to decompose the components from a natural speech waveform in advance. To address this issue, we propose a parallel model and a series model structure separating periodic and aperiodic components. The features of our proposed models are that explicit periodic and aperiodic signals are taken as input, and external periodic/aperiodic decomposition is not needed in training. Experiments using a singing voice corpus show that our proposed structure improves the naturalness of the generated waveform. We also show that the speech waveforms with a pitch outside of the training data range can be generated with more naturalness.
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周期网:具有分离周期和非周期分量结构的非自回归波形生成模型
我们提出了一种非自回归(非ar)波形生成模型PeriodNet,该模型具有新的模型结构,用于建模语音波形中的周期和非周期分量。非ar波形生成模型可以并行生成语音波形,并且可以通过调节声学特征用作语音声码器。由于语音波形包含周期性和非周期性分量,因此应该对这两个分量进行适当的建模,以生成高质量的语音波形。然而,从自然语音波形中提前分解出分量是很困难的。为了解决这个问题,我们提出了一种分离周期和非周期分量的并行模型和串联模型结构。我们提出的模型的特点是将显式周期和非周期信号作为输入,并且在训练中不需要外部周期/非周期分解。用一个歌唱语料库进行的实验表明,我们提出的结构提高了生成波形的自然度。我们还证明了在训练数据范围之外的音高的语音波形可以以更自然的方式生成。
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