Adversarial Training of Denoising Diffusion Model Using Dual Discriminators for High-Fidelity Multi-Speaker TTS

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE open journal of signal processing Pub Date : 2024-04-08 DOI:10.1109/OJSP.2024.3386495
Myeongjin Ko;Euiyeon Kim;Yong-Hoon Choi
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Abstract

The diffusion model is capable of generating high-quality data through a probabilistic approach. However, it suffers from the drawback of slow generation speed due to its requirement for many time steps. To address this limitation, recent models such as denoising diffusion implicit models (DDIM) focus on sample generation without explicitly modeling the entire probability distribution, while models like denoising diffusion generative adversarial networks (GAN) combine diffusion processes with GANs. In the field of speech synthesis, a recent diffusion speech synthesis model called DiffGAN-TTS, which utilizes the structure of GANs, has been introduced and demonstrates superior performance in both speech quality and generation speed. In this paper, to further enhance the performance of DiffGAN-TTS, we propose a speech synthesis model with two discriminators: a diffusion discriminator to learn the distribution of the reverse process, and a spectrogram discriminator to learn the distribution of the generated data. Objective metrics such as the structural similarity index measure (SSIM), mel-cepstral distortion (MCD), F0 root mean squared error (F0- RMSE), phoneme error rate (PER), word error rate (WER), as well as subjective metrics like mean opinion score (MOS), are used to evaluate the performance of the proposed model. The evaluation results demonstrate that our model matches or exceeds recent state-of-the-art models like FastSpeech 2 and DiffGAN-TTS across various metrics. Our code and audio samples are available on GitHub.
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使用双判别器对去噪扩散模型进行对抗训练,以实现高保真多扬声器 TTS
扩散模型能够通过概率方法生成高质量的数据。然而,由于需要许多时间步骤,它存在生成速度慢的缺点。为了解决这一局限,最近的一些模型,如去噪扩散隐含模型(DDIM),侧重于样本生成,而没有明确地对整个概率分布进行建模,而去噪扩散生成对抗网络(GAN)等模型则将扩散过程与 GANs 结合起来。在语音合成领域,最近推出了一种名为 DiffGAN-TTS 的扩散语音合成模型,它利用了 GANs 的结构,在语音质量和生成速度方面都表现出了卓越的性能。在本文中,为了进一步提高 DiffGAN-TTS 的性能,我们提出了一种带有两个判别器的语音合成模型:一个是用于学习反向过程分布的扩散判别器,另一个是用于学习生成数据分布的谱图判别器。结构相似性指数(SSIM)、mel-cepstral 失真(MCD)、F0 均方根误差(F0- RMSE)、音素误差率(PER)、单词误差率(WER)等客观指标以及平均意见分(MOS)等主观指标被用来评估所提出模型的性能。评估结果表明,在各种指标上,我们的模型与 FastSpeech 2 和 DiffGAN-TTS 等最新的一流模型不相上下,甚至有过之而无不及。我们的代码和音频样本可在 GitHub 上获取。
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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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