Many-to-many Cross-lingual Voice Conversion with a Jointly Trained Speaker Embedding Network

Yi Zhou, Xiaohai Tian, Rohan Kumar Das, Haizhou Li
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引用次数: 7

Abstract

Among various voice conversion (VC) techniques, average modeling approach has achieved good performance as it benefits from training data of multiple speakers, therefore, reducing the reliance on training data from the target speaker. Many existing average modeling approaches rely on the use of i-vector to represent the speaker identity for model adaptation. As such i-vector is extracted in a separate process, it is not optimized to achieve the best voice conversion quality for the average model. To address this problem, we propose a low dimensional trainable speaker embedding network that augments the primary VC network for joint training. We validate the effectiveness of the proposed idea by performing a many-to-many cross-lingual VC, which is one of the most challenging tasks in VC. We compare the i-vector scheme with the speaker embedding network in the experiments. It is found that the proposed system effectively improves the speech quality and speaker similarity.
基于联合训练说话人嵌入网络的多对多跨语言语音转换
在各种语音转换(VC)技术中,平均建模方法得益于多说话人的训练数据,从而减少了对目标说话人训练数据的依赖,取得了较好的效果。许多现有的平均建模方法依赖于使用i向量来表示说话人身份以进行模型自适应。由于这种i向量是在一个单独的过程中提取的,因此没有对其进行优化以达到平均模型的最佳语音转换质量。为了解决这个问题,我们提出了一个低维可训练的说话人嵌入网络,它增强了初级VC网络进行联合训练。我们通过执行多对多跨语言风险投资来验证所提出想法的有效性,这是风险投资中最具挑战性的任务之一。在实验中,我们将i向量方案与说话人嵌入网络进行了比较。实验结果表明,该系统有效地提高了语音质量和说话人相似度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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