The gender of a voice assistant or any voice user interface is a central element of its perceived identity. While a female voice is a common choice, there is an increasing interest in alternative approaches where the gender is ambiguous rather than clearly identifying as female or male. This work addresses the task of generating gender-ambiguous text-to-speech (TTS) voices that do not correspond to any existing person. This is accomplished by sampling from a latent speaker embeddings' space that was formed while training a multilingual, multi-speaker TTS system on data from multiple male and female speakers. Various options are investigated regarding the sampling process. In our experiments, the effects of different sampling choices on the gender ambiguity and the naturalness of the resulting voices are evaluated. The proposed method is shown able to efficiently generate novel speakers that are superior to a baseline averaged speaker embedding. To our knowledge, this is the first systematic approach that can reliably generate a range of gender-ambiguous voices to meet diverse user requirements.
翻译:语音助理或任何语音用户界面的性别是其认知身份的一个核心要素。虽然女性声音是一个常见的选择,但人们越来越关注性别模糊而非明确识别为女性或男性的替代方法。这项工作涉及生成与任何现有人员不相符合的性别模糊的文本对语音声音的任务。通过从潜在发言者嵌入空间取样,从形成的潜在发言者嵌入空间中进行取样,同时对多个男女发言者的数据进行多语种多语种TTTS系统培训。对抽样过程的各种选择进行了调查。在我们的实验中,对不同抽样选择对性别模糊的影响以及由此产生的声音的自然性质进行了评估。拟议方法显示,能够有效地生成比基线平均发言者嵌入的更优秀的新发言者。据我们所知,这是能够可靠地生成一系列性别模糊声音以满足不同用户要求的第一个系统方法。