Automatic speaker verification (ASV) has been widely used in the real life for identity authentication. However, with the rapid development of speech conversion, speech synthesis algorithms and the improvement of the quality of recording devices, ASV systems are vulnerable for spoof attacks. In recent years, there have many works about synthetic and replay speech detection, researchers had proposed a number of anti-spoofing methods based on hand-crafted features to improve the accuracy and robustness of synthetic and replay speech detection system. However, using hand-crafted features rather than raw waveform would lose certain information for anti-spoofing, which will reduce the detection performance of the system. Inspired by the promising performance of ConvNext in image classification tasks, we extend the ConvNext network architecture accordingly for spoof attacks detection task and propose an end-to-end anti-spoofing model. By integrating the extended architecture with the channel attention block, the proposed model can focus on the most informative sub-bands of speech representations to improve the anti-spoofing performance. Experiments show that our proposed best single system could achieve an equal error rate of 1.88% and 2.79% for the ASVSpoof 2019 LA evaluation dataset and PA evaluation dataset respectively, which demonstrate the model's capacity for anti-spoofing.
翻译:自动扬声器验证(ASV)在真实生活中被广泛用于身份认证;然而,随着语音转换、语音合成算法的迅速发展和记录装置质量的提高,ASV系统很容易受到攻击。近年来,在合成和重放语音检测方面,有许多关于合成和重播语音检测的作品,研究人员根据手工制作的特征提出了若干反排波方法,以提高合成和重播语音检测系统的准确性和稳健性。然而,使用手工制作的功能而不是原始波形,将失去某些关于反吹嘘的信息,这将降低系统的探测性能。由于ConvNext在图像分类任务中的有希望的性能,因此我们相应扩展了ConvNext网络结构,以完成攻击探测任务,并提出一个端到端的反播音模型。通过将扩展的架构与频道关注区结合起来,拟议的模型可以侧重于最具有信息性的子波段表达式子带,以改进反吹波性能,这将降低系统的检测性能。实验显示,我们拟议的最佳单一系统可以达到AS-88%和AS-79号数据比例相等的20的A-SA-SA-819和A-A-SA-SA-SA-SA-8000的数据评价。