Voice Conversion
Voice conversion (VC) aims to transform a speaker's voice into another's while preserving the original linguistic content. Current research focuses on improving the quality and naturalness of converted speech, particularly in challenging scenarios like cross-lingual conversion and low-resource settings, often employing techniques like diffusion models, generative adversarial networks (GANs), and self-supervised learning with various encoder-decoder architectures. These advancements are significant for applications ranging from personalized voice assistants and accessibility tools to enhancing privacy in speech data and improving speech intelligibility assessment. The field is also actively addressing challenges related to disentangling speaker identity from other speech characteristics and mitigating vulnerabilities to deepfake attacks.
Papers
Mandarin Electrolaryngeal Speech Voice Conversion using Cross-domain Features
Hsin-Hao Chen, Yung-Lun Chien, Ming-Chi Yen, Shu-Wei Tsai, Yu Tsao, Tai-shih Chi, Hsin-Min Wang
Audio-Visual Mandarin Electrolaryngeal Speech Voice Conversion
Yung-Lun Chien, Hsin-Hao Chen, Ming-Chi Yen, Shu-Wei Tsai, Hsin-Min Wang, Yu Tsao, Tai-Shih Chi
Make-A-Voice: Unified Voice Synthesis With Discrete Representation
Rongjie Huang, Chunlei Zhang, Yongqi Wang, Dongchao Yang, Luping Liu, Zhenhui Ye, Ziyue Jiang, Chao Weng, Zhou Zhao, Dong Yu
Pseudo-Siamese Network based Timbre-reserved Black-box Adversarial Attack in Speaker Identification
Qing Wang, Jixun Yao, Ziqian Wang, Pengcheng Guo, Lei Xie
Voice Conversion With Just Nearest Neighbors
Matthew Baas, Benjamin van Niekerk, Herman Kamper