Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

FreeV: Free Lunch For Vocoders Through Pseudo Inversed Mel Filter

About

Vocoders reconstruct speech waveforms from acoustic features and play a pivotal role in modern TTS systems. Frequent-domain GAN vocoders like Vocos and APNet2 have recently seen rapid advancements, outperforming time-domain models in inference speed while achieving comparable audio quality. However, these frequency-domain vocoders suffer from large parameter sizes, thus introducing extra memory burden. Inspired by PriorGrad and SpecGrad, we employ pseudo-inverse to estimate the amplitude spectrum as the initialization roughly. This simple initialization significantly mitigates the parameter demand for vocoder. Based on APNet2 and our streamlined Amplitude prediction branch, we propose our FreeV, compared with its counterpart APNet2, our FreeV achieves 1.8 times inference speed improvement with nearly half parameters. Meanwhile, our FreeV outperforms APNet2 in resynthesis quality, marking a step forward in pursuing real-time, high-fidelity speech synthesis. Code and checkpoints is available at: https://github.com/BakerBunker/FreeV

Yuanjun Lv, Hai Li, Ying Yan, Junhui Liu, Danming Xie, Lei Xie• 2024

Related benchmarks

TaskDatasetResultRank
Neural VocodingLJSpeech 88 (test)
M-STFT1.008
12
Neural VocodingLJSpeech 1.1 (test)
M-STFT1.008
12
Neural VocodingLibriTTS
UTMOS2.6971
12
Showing 3 of 3 rows

Other info

Follow for update