Synthetic Speech Detection through Audio Folding

Davide Salvi, Paolo Bestagini, S. Tubaro
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引用次数: 3

Abstract

In the field of synthetic speech generation, recent advancements in deep learning and speech synthesis methods have enabled the possibility of creating highly realistic fake speech tracks that are difficult to distinguish from real ones. Since the malicious use of these data can lead to dangerous consequences, the audio forensics community has focused on developing synthetic speech detectors to determine the authenticity of speech tracks. In this work we focus on the wide class of detectors that analyze audio streams on a frame-by-frame basis. We propose a technique to reduce the inference time of these detectors by relying on the fact that it is possible to mix multiple audio frames in a single one (i.e., in the same way a mono track is obtained from a stereo one). We test the proposed audio folding technique on speech tracks obtained from the ASVspoof 2019 dataset. The technique proves effective with both entirely and partially fake speech tracks and shows remarkable results, reducing processing time down to 25%.
基于音频折叠的合成语音检测
在合成语音生成领域,深度学习和语音合成方法的最新进展使创建难以与真实语音区分的高度逼真的假语音轨道成为可能。由于恶意使用这些数据可能会导致危险的后果,音频取证社区一直致力于开发合成语音检测器来确定语音轨迹的真实性。在这项工作中,我们专注于在逐帧基础上分析音频流的各种检测器。我们提出了一种技术来减少这些检测器的推理时间,依靠的事实是,它可以混合多个音频帧在一个单一的(即,以同样的方式从一个立体声轨道获得单声道)。我们在ASVspoof 2019数据集中获得的语音轨道上测试了所提出的音频折叠技术。事实证明,该技术对完全和部分伪造的语音轨迹都是有效的,并显示出显著的效果,将处理时间减少了25%。
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