The diversity of speaker profiles in multi-speaker TTS systems is a crucial aspect of its performance, as it measures how many different speaker profiles TTS systems could possibly synthesize. However, this important aspect is often overlooked when building multi-speaker TTS systems and there is no established framework to evaluate this diversity. The reason behind is that most multi-speaker TTS systems are limited to generate speech signals with the same speaker profiles as its training data. They often use discrete speaker embedding vectors which have a one-to-one correspondence with individual speakers. This correspondence limits TTS systems and hinders their capability of generating unseen speaker profiles that did not appear during training. In this paper, we aim to build multi-speaker TTS systems that have a greater variety of speaker profiles and can generate new synthetic speaker profiles that are different from training data. To this end, we propose to use generative models with a triplet loss and a specific shuffle mechanism. In our experiments, the effectiveness and advantages of the proposed method have been demonstrated in terms of both the distinctiveness and intelligibility of synthesized speech signals.
翻译:多发言者 TTS 系统中的语音简介多样性是其工作的一个至关重要的方面,因为它衡量了多少个不同的语音简介 TTS 系统可以合成,但是,在建立多发言者的 TTS 系统时,这个重要方面常常被忽视,而且没有评估这种多样性的既定框架,其背后的原因是,大多数多发言者 TTS 系统都局限于生成语音信号,与培训数据具有相同的语音简介;它们经常使用与个别发言者一对一通信的离散语音嵌入矢量;这种通信限制了 TTS 系统,妨碍了它们生成在培训期间没有出现的看不见的语音简介的能力;在本文件中,我们的目标是建立多发言者的TTS 系统,这些系统拥有更多的语音简介,能够产生与培训数据不同的新的合成语音简介;为此,我们提议使用具有三重损失和特定震荡机制的基因化模型;在我们的实验中,拟议的方法的有效性和优势体现在合成语音信号的辨别性和洞察力上。