Effective Wavenet Adaptation For Voice Conversion With Limited Data
Hongqiang Du, Xiaohai Tian, Lei Xie, Haizhou Li
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WaveNet has shown its great potential as a direct conversion model in voice conversion. However, due to the model complexity, WaveNet always requires a large amount of training data, which has limited its applications in voice conversion, where training data is scarce. In this paper, we propose a WaveNet adaptation method that effectively reduces the need of adaptation data. We first train a speaker independent WaveNet conversion model with multi-speaker dataset. Adaptation is then applied with limited target speakerâs data. Specifically, singular value decomposition (SVD) is applied to dilated convolution layers of WaveNet to reduce the number of parameters, which makes adaptation more effective with limited data. Experiments conducted on CMU-ARCTIC and CSTR-VCTK corpus show that the proposed method outperforms baseline methods in terms of both quality and similarity.