Nguyen Thi Thu Trang
2025
O_O-VC: Synthetic Data-Driven One-to-One Alignment for Any-to-Any Voice Conversion
Huu Tuong Tu
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Huan Vu
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Cuong Tien Nguyen
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Dien Hy Ngo
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Nguyen Thi Thu Trang
Findings of the Association for Computational Linguistics: EMNLP 2025
Traditional voice conversion (VC) methods typically attempt to separate speaker identity and linguistic information into distinct representations, which are then combined to reconstruct the audio. However, effectively disentangling these factors remains challenging, often leading to information loss during training. In this paper, we propose a new approach that leverages synthetic speech data generated by a high-quality, pretrained multispeaker text-to-speech (TTS) model. Specifically, synthetic data pairs that share the same linguistic content but differ in speaker identity are used as input-output pairs to train the voice conversion model. This enables the model to learn a direct mapping between source and target voices, effectively capturing speaker-specific characteristics while preserving linguistic content. Additionally, we introduce a flexible training strategy for any-to-any voice conversion that generalizes well to unseen speakers and new languages, enhancing adaptability and performance in zero-shot scenarios. Our experiments show that our proposed method achieves a 16.35% relative reduction in word error rate and a 5.91% improvement in speaker cosine similarity, outperforming several state-of-the-art methods. Voice conversion samples can be accessed at: https://oovc-emnlp-2025.github.io/
2020
Applying Graph Neural Networks for Vietnamese Dependency Parsing
Nguyen Duc Thien
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Nguyen Thi Thu Trang
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Truong Dang Quang
Proceedings of the 7th International Workshop on Vietnamese Language and Speech Processing
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- Dien Hy Ngo 1
- Cuong Tien Nguyen 1
- Truong Dang Quang 1
- Nguyen Duc Thien 1
- Huu Tuong Tu 1
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- Huan Vu 1