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Novel Demodulation-Based Features using Classifier-level Fusion of GMM and CNN for Replay Detection

机译:基于GMM和CNN的分类器级融合的基于新型解调的特征,用于重播检测

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In this study, we explore the use of Convolutional Neural Networks (CNN) for replay spoof detection in Automatic Speaker Verification (ASV) system. The Amplitude and Frequency Modulation (AM-FM) feature sets obtained from the Hilbert transform (HT) and Energy Separation Algorithm (ESA) are used as the front end. We have observed the effect of max-pooling and fully connected (FC) layers, when replaced with the convolutional layers in CNN. The results are compared with Gaussian Mixture Model (GMM) classifier, furthermore to obtain the possible complementary information of both the GMM and CNN classifiers, we have explored classifier-level fusion. In addition, we compared our results with Constant-Q Cepstral Coefficients (CQCC) and Mel Frequency Cepstral Coefficients (MFCC) feature sets. The architecture with max-pooling when replaced with convolutional layer along with FC layers had performed relatively better on most of the AM-FM feature sets compared to other CNNs. The ESA-based AM features (i.e., Instantaneous Amplitude Cosine Coefficients (ESA-IACC)) performed better as AM do not have more fluctuation as FM have during models training. The lower EER is obtained with classifier-level fusion of ESA-IACC feature set resulting in 2.54 % EER on development set and 6.04 % on evaluation set of ASVspoof 2017 Challenge database.
机译:在这项研究中,我们探讨了卷积神经网络(CNN)在自动扬声器验证(ASV)系统中重播欺骗检测。从Hilbert变换(HT)和能量分离算法(ESA)获得的幅度和频率调制(AM-FM)特征集用作前端。当用CNN中的卷积层替换时,我们观察到最大池和完全连接(FC)层的影响。结果与高斯混合模型(GMM)分类器进行了比较,此外,为了获得GMM和CNN分类器的可能互补信息,我们已经探索了分类器级融合。此外,我们将结果与恒定-Q谱系统系数(CQCC)和MEL频率谱系数(MFCC)特征集进行了比较。在与其他CNN相比,在大多数AM-FM特征集中,使用卷积层替换时,具有最大池的架构在大多数AM-FM特征集上进行了相对较好。基于ESA的AM特征(即,瞬时振幅余弦系数(ESA-IACC))更好地执行,因为在模型训练期间FM具有更多波动。使用ESA-IACC功能集的分类器级别融合获得下eer,从而导致2.54%的开发集EER和ASVSPOOF 2017挑战数据库的评估集6.04%。

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