Recently, pioneer research works have proposed a large number of acoustic features (log power spectrogram, linear frequency cepstral coefficients, constant Q cepstral coefficients, etc.) for audio deepfake detection, obtaining good performance, and showing that different subbands have different contributions to audio deepfake detection. However, this lacks an explanation of the specific information in the subband, and these features also lose information such as phase. Inspired by the mechanism of synthetic speech, the fundamental frequency (F0) information is used to improve the quality of synthetic speech, while the F0 of synthetic speech is still too average, which differs significantly from that of real speech. It is expected that F0 can be used as important information to discriminate between bonafide and fake speech, while this information cannot be used directly due to the irregular distribution of F0. Insteadly, the frequency band containing most of F0 is selected as the input feature. Meanwhile, to make full use of the phase and full-band information, we also propose to use real and imaginary spectrogram features as complementary input features and model the disjoint subbands separately. Finally, the results of F0, real and imaginary spectrogram features are fused. Experimental results on the ASVspoof 2019 LA dataset show that our proposed system is very effective for the audio deepfake detection task, achieving an equivalent error rate (EER) of 0.43%, which surpasses almost all systems.
翻译:最近,先驱研究作品提出了大量的声学特征(声频光谱、线性频谱、线性丙型系数、恒定的Q Cepstral 系数等),用于音频深藏度检测、取得良好性能并显示不同子带对音频深藏度检测有不同贡献。然而,这缺乏对子带具体信息的解释,这些特征也失去了诸如阶段等信息。在合成语音机制的启发下,基本频率(F0)信息被用于提高合成语音的质量,而合成语音F0的频率(F0)信息仍然太普通,与真实演讲的频率差异很大。预计F0可以被用作重要信息,区分善意和假言,而这种信息不能直接用于音深藏度检测。相反,包含大部分F0的频带被选为输入特征。同时,为了充分利用该阶段和全频段信息,我们还提议使用真实和想象式的光谱仪特征作为补充性输入特征和模型,几乎与真实的言词表值与真实的言词。最后,F0,FO 和AV 真实的磁带检测结果显示AV的20号系统的实际结果。