Transfer the linguistic representations from TTS to accent conversion
with non-parallel data
- URL: http://arxiv.org/abs/2401.03538v1
- Date: Sun, 7 Jan 2024 16:39:34 GMT
- Title: Transfer the linguistic representations from TTS to accent conversion
with non-parallel data
- Authors: Xi Chen, Jiakun Pei, Liumeng Xue, Mingyang Zhang
- Abstract summary: Accent conversion aims to convert the accent of a source speech to a target accent, preserving the speaker's identity.
This paper introduces a novel non-autoregressive framework for accent conversion that learns accent-agnostic linguistic representations and employs them to convert the accent in the source speech.
- Score: 7.376032484438044
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accent conversion aims to convert the accent of a source speech to a target
accent, meanwhile preserving the speaker's identity. This paper introduces a
novel non-autoregressive framework for accent conversion that learns
accent-agnostic linguistic representations and employs them to convert the
accent in the source speech. Specifically, the proposed system aligns speech
representations with linguistic representations obtained from Text-to-Speech
(TTS) systems, enabling training of the accent voice conversion model on
non-parallel data. Furthermore, we investigate the effectiveness of a
pretraining strategy on native data and different acoustic features within our
proposed framework. We conduct a comprehensive evaluation using both subjective
and objective metrics to assess the performance of our approach. The evaluation
results highlight the benefits of the pretraining strategy and the
incorporation of richer semantic features, resulting in significantly enhanced
audio quality and intelligibility.
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