Recent advances in synthetic speech quality have enabled us to train text-to-speech (TTS) systems by using synthetic corpora. However, merely increasing the amount of synthetic data is not always advantageous for improving training efficiency. Our aim in this study is to selectively choose synthetic data that are beneficial to the training process. In the proposed method, we first adopt a variational autoencoder whose posterior distribution is utilized to extract latent features representing acoustic similarity between the recorded and synthetic corpora. By using those learned features, we then train a ranking support vector machine (RankSVM) that is well known for effectively ranking relative attributes among binary classes. By setting the recorded and synthetic ones as two opposite classes, RankSVM is used to determine how the synthesized speech is acoustically similar to the recorded data. Then, synthetic TTS data, whose distribution is close to the recorded data, are selected from large-scale synthetic corpora. By using these data for retraining the TTS model, the synthetic quality can be significantly improved. Objective and subjective evaluation results show the superiority of the proposed method over the conventional methods.
翻译:合成言语质量的最近进展使我们能够通过使用合成公司来培训文本到语音系统(TTS),然而,仅仅增加合成数据的数量并不总是有利于提高培训效率。我们本研究的目的是有选择地选择有益于培训过程的合成数据。在拟议方法中,我们首先采用一个变式自动coder,其尾部分布利用它来提取代表已记录和合成公司之间声学相似性的潜在特征。我们利用这些已学的特征,然后培训一个在二进制类中有效排序相对属性众所周知的级支持矢量机(RankSVM)。通过将记录和合成的矢量机设为两个对立的班,RankSVM被用来确定合成语与所记录的数据在声学上如何相似。然后,合成TS数据的分布接近记录的数据从大型合成公司中挑选。通过使用这些数据对TS模型进行再培训,合成质量可以大大提高。客观和主观评价结果显示拟议方法优于常规方法。