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Densely Connected Convolutional Network for Audio Spoofing Detection

机译:密集连接的卷积网络,用于音频欺骗检测

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Anti-spoofing has attracted increasing attention since the inauguration of the ASVspoof Challenges, due to the fact that automatic speaker verification (ASV) systems are vulnerable to spoofing attacks. The latest ASVspoof 2019 Challenge was dedicated to addressing attacks in three major classes: speech synthesis, voice conversion, and replay audio. In this paper, we propose a novel method that includes feature extraction, a densely connected convolutional network, and fusion strategies to answer the ASVspoof 2019 Challenge and to defend against spoofing attacks. Features are extracted using different algorithms and then fed separately into variants of our model, which differ only in terms of the kernel size of the global average pooling layer. A dense connectivity pattern with better parameter efficiency is introduced to the proposed network to strengthen the propagation of the audio features. The experimental results show that the proposed method improves the tandem decision cost function and equal error rate scores by 75% and 78%, respectively, in the logical access challenge. In the physical access challenge, the proposed method improves the t-DCF and EER scores by 73% and 72%, respectively, compared with state-of-the -art methods.
机译:由于自动扬声器验证(ASV)系统容易受到欺骗攻击,因此抗欺骗引起了越来越多的关注。最新的ASVSpof 2019挑战致力于解决三个主要类别的攻击:语音合成,语音转换和重放音频。在本文中,我们提出了一种新的方法,包括特征提取,密集连接的卷积网络和融合策略,以回答ASVSpoot 2019挑战并防御欺骗攻击。使用不同的算法提取功能,然后分别进料到我们模型的变体,其仅在全局平均池层的内核大小方面不同。引入具有更好参数效率的密集连接模式,以增强音频特征的传播。实验结果表明,该方法分别在逻辑访问挑战中提高了串联决策成本函数和较称误差率分别为75%和78%。在物理访问挑战中,该方法分别将T-DCF和EER分别提高了73%和72%,与 - 售后方法相比。

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