Fake Speech Detection Using Residual Network with Transformer Encoder

Zhenyu Zhang, Xiaowei Yi, Xianfeng Zhao
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引用次数: 23

Abstract

Fake speech detection aims to distinguish fake speech from natural speech. This paper presents an effective fake speech detection scheme based on residual network with transformer encoder (TE-ResNet) for improving the performance of fake speech detection. Firstly, considering inter-frame correlation of the speech signal, we utilize transformer encoder to extract contextual representations of the acoustic features. Then, a residual network is used to process deep features and calculate score that the speech is fake. Besides, to increase the quantity of training data, we apply five speech data augmentation techniques on the training dataset. Finally, we fuse the different fake speech detection models on score-level by logistic regression for compensating the shortcomings of each single model. The proposed scheme is evaluated on two public speech datasets. Our experiments demonstrate that the proposed TE-ResNet outperforms the existing state-of-the-art methods both on development and evaluation datasets. In addition, the proposed fused model achieves improved performance for detection of unseen fake speech technology, which can obtain equal error rates (EERs) of 3.99% and 5.89% on evaluation set of FoR-normal dataset and ASVspoof 2019 LA dataset respectively.
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基于变压器编码器的残差网络假语音检测
假语音检测的目的是将假语音与自然语音区分开来。本文提出了一种有效的基于变压器编码器残差网络(TE-ResNet)的伪语音检测方案,以提高伪语音检测的性能。首先,考虑到语音信号帧间的相关性,利用互感器编码器提取声音特征的上下文表示。然后,利用残差网络对深度特征进行处理,并计算语音的假分。此外,为了增加训练数据的数量,我们在训练数据集上应用了五种语音数据增强技术。最后,通过逻辑回归在分数水平上融合不同的假语音检测模型,以弥补单个模型的不足。在两个公共演讲数据集上对所提出的方案进行了评估。我们的实验表明,所提出的TE-ResNet在开发和评估数据集上都优于现有的最先进的方法。此外,所提出的融合模型在检测未见过的虚假语音技术方面取得了较好的性能,在for -normal数据集和ASVspoof 2019 LA数据集的评估集上分别获得了3.99%和5.89%的错误率(EERs)。
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