SKQVC: One-Shot Voice Conversion by K-Means Quantization with Self-Supervised Speech Representations
- URL: http://arxiv.org/abs/2411.16147v1
- Date: Mon, 25 Nov 2024 07:14:26 GMT
- Title: SKQVC: One-Shot Voice Conversion by K-Means Quantization with Self-Supervised Speech Representations
- Authors: Youngjun Sim, Jinsung Yoon, Young-Joo Suh,
- Abstract summary: One-shot voice conversion (VC) is a method that enables the transformation between any two speakers using only a single target speaker utterance.
Recent works utilizing K-means quantization (KQ) with self-supervised learning (SSL) features have proven capable of capturing content information from speech.
We propose a simple yet effective one-shot VC model that utilizes the characteristics of SSL features and speech attributes.
- Score: 12.423959479216895
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: One-shot voice conversion (VC) is a method that enables the transformation between any two speakers using only a single target speaker utterance. Existing methods often rely on complex architectures and pre-trained speaker verification (SV) models to improve the fidelity of converted speech. Recent works utilizing K-means quantization (KQ) with self-supervised learning (SSL) features have proven capable of capturing content information from speech. However, they often struggle to preserve speaking variation, such as prosodic detail and phonetic variation, particularly with smaller codebooks. In this work, we propose a simple yet effective one-shot VC model that utilizes the characteristics of SSL features and speech attributes. Our approach addresses the issue of losing speaking variation, enabling high-fidelity voice conversion trained with only reconstruction losses, without requiring external speaker embeddings. We demonstrate the performance of our model across 6 evaluation metrics, with results highlighting the benefits of the speaking variation compensation method.
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