Convnext-TTS And Convnext-VC: Convnext-Based Fast End-To-End Sequence-To-Sequence Text-To-Speech And Voice Conversion
Takuma Okamoto, Yamato Ohtani, Tomoki Toda, Hisashi Kawai
Abstract
End-to-end (E2E) sequence-to-sequence (S2S) neural text-to-speech (TTS) models and E2E-S2S neural voice conversion (VC) models can achieve high-quality speech synthesis with a single neural network. To further improve the synthesis quality of E2E-S2S TTS and VC models and increase their inference speed, we propose a Transformer-free ConvNeXt-based encoder and decoder. Additionally, to further increase the inference speed, we propose ConvNeXt-TTS and ConvNeXt-VC, which include the WaveNeXt neural vocoder. This is also constructed from ConvNeXt blocks and can achieve much faster synthesis than HiFi-GAN. The results of experiments using the Hi-Fi-CAPTAIN corpus for the E2E-S2S-TTS and E2E-S2S-VC conditions demonstrate that the proposed ConvNeXt-based encoder and decoder can perform inference three times faster than a Transformer-based encoder and decoder while improving the synthesis quality. In particular, ConvNeXt-TTS and ConvNeXt-VC can achieve very fast E2E-S2S-TTS and E2E-S2S-VC with a real-time factor of 0.05 using a single-core CPU.