基于奇异值分解的波网分解语音转换

Hongqiang Du, Xiaohai Tian, Lei Xie, Haizhou Li
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引用次数: 4

摘要

WaveNet声码器在语音质量上比传统的声码器有很大的优势。然而,通常需要相对大量的语音数据来训练一个依赖于说话人的WaveNet声码器。因此,为低资源任务构建高质量的WaveNet声码器仍然是一个挑战,例如语音转换,在实际应用中语音样本有限。我们建议使用奇异值分解(SVD)来减少WaveNet参数,同时保持其输出语音质量。具体来说,我们在扩展卷积层上应用奇异值分解,并施加半正交约束来提高性能。在CMU-ARCTIC数据库上进行的实验表明,与原始的WaveNet声码器相比,该方法在使用更少的训练数据的同时,在质量和相似度方面保持了相似的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WaveNet Factorization with Singular Value Decomposition for Voice Conversion
WaveNet vocoder has seen its great advantage over traditional vocoders in voice quality. However, it usually requires a relatively large amount of speech data to train a speaker-dependent WaveNet vocoder. Therefore, it remains a challenge to build a high-quality WaveNet vocoder for low resource tasks, e.g. voice conversion, where speech samples are limited in real applications. We propose to use singular value decomposition (SVD) to reduce WaveNet parameters while maintaining its output voice quality. Specifically, we apply SVD on dilated convolution layers, and impose semi-orthogonal constraint to improve the performance. Experiments conducted on CMU-ARCTIC database show that as compared with the original WaveNet vocoder, the proposed method maintains similar performance, in terms of both quality and similarity, while using much less training data.
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