The Multi-speaker Multi-style Voice Cloning Challenge 2021 (2104.01818v1)
Abstract: The Multi-speaker Multi-style Voice Cloning Challenge (M2VoC) aims to provide a common sizable dataset as well as a fair testbed for the benchmarking of the popular voice cloning task. Specifically, we formulate the challenge to adapt an average TTS model to the stylistic target voice with limited data from target speaker, evaluated by speaker identity and style similarity. The challenge consists of two tracks, namely few-shot track and one-shot track, where the participants are required to clone multiple target voices with 100 and 5 samples respectively. There are also two sub-tracks in each track. For sub-track a, to fairly compare different strategies, the participants are allowed to use only the training data provided by the organizer strictly. For sub-track b, the participants are allowed to use any data publicly available. In this paper, we present a detailed explanation on the tasks and data used in the challenge, followed by a summary of submitted systems and evaluation results.
- Qicong Xie (11 papers)
- Xiaohai Tian (24 papers)
- Guanghou Liu (3 papers)
- Kun Song (30 papers)
- Lei Xie (337 papers)
- Zhiyong Wu (171 papers)
- Hai Li (159 papers)
- Song Shi (6 papers)
- Haizhou Li (286 papers)
- Fen Hong (1 paper)
- Hui Bu (25 papers)
- Xin Xu (188 papers)