VoiceFilter-Lite is a speaker-conditioned voice separation model that plays a crucial role in improving speech recognition and speaker verification by suppressing overlapping speech from non-target speakers. However, one limitation of VoiceFilter-Lite, and other speaker-conditioned speech models in general, is that these models are usually limited to a single target speaker. This is undesirable as most smart home devices now support multiple enrolled users. In order to extend the benefits of personalization to multiple users, we previously developed an attention-based speaker selection mechanism and applied it to VoiceFilter-Lite. However, the original multi-user VoiceFilter-Lite model suffers from significant performance degradation compared with single-user models. In this paper, we devised a series of experiments to improve the multi-user VoiceFilter-Lite model. By incorporating a dual learning rate schedule and by using feature-wise linear modulation (FiLM) to condition the model with the attended speaker embedding, we successfully closed the performance gap between multi-user and single-user VoiceFilter-Lite models on single-speaker evaluations. At the same time, the new model can also be easily extended to support any number of users, and significantly outperforms our previously published model on multi-speaker evaluations.
翻译:语音Filter-Lite是一个有语音条件的语音分离模型,它通过抑制非目标发言者的重复发言,在改进语音识别和语音核实方面发挥着关键作用。然而,对语音Filter-Lite和其他有语音条件的语音模型的限制一般是,这些模型通常限于单一目标发言者。这是不可取的,因为最聪明的家庭设备现在支持了多个注册用户。为了将个性化的好处扩大到多个用户,我们以前开发了一个有关注的语音选择机制,并将其应用到语音Filter-Lite。然而,与单一用户模型相比,原多用户语音Filter-Lite模型的性能严重退化。在本文中,我们设计了一系列实验来改进多用户语音Filter-Lite模型。通过采用双轨学习计划,以及使用有特色的线性调制(FILM)来为该模型提供条件,我们成功地缩小了多用户和单一用户语音平台-Lite之间的性能差距。在单一用户模型评价中,我们设计了一系列实验来改进多用户的模型,在以往的模型中可以大大扩展到任何用户。