ASSDOct 19, 2021

Speech Enhancement-assisted Voice Conversion in Noisy Environments

arXiv:2110.09923v3
Originality Incremental advance
AI Analysis

This addresses the issue of voice conversion systems failing in noisy settings, which is incremental as it combines existing techniques.

The paper tackled the problem of voice conversion quality degrading in noisy environments by proposing a speech enhancement-assisted system with joint training, resulting in improved sound quality and robustness in unseen noisy conditions.

Numerous voice conversion (VC) techniques have been proposed for the conversion of voices among different speakers. Although good quality of the converted speech can be observed when VC is applied in a clean environment, the quality degrades drastically when the system is run in noisy conditions. In order to address this issue, we propose a novel speech enhancement (SE)-assisted VC system that utilizes the SE techniques for signal pre-processing, where the VC and SE components are optimized in an joint training strategy with the aim to provide high-quality converted speech signals. We adopt a popular model, StarGAN, as the VC component and thus call the combined system as EStarGAN. We test the proposed EStarGAN system using a Mandarin speech corpus. The experimental results first verified the effectiveness of joint training strategy used in EStarGAN. Moreover, EStarGAN demonstrated performance robustness in various unseen noisy environments. The subjective listening test results further showed that EStarGAN can improve the sound quality of speech signals converted from noise-corrupted source utterances.

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