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A robust DBN-vector based speaker verification system under channel mismatch conditions

机译:基于强大的基于DBN-向量的扬声器验证系统,包括频道不匹配条件

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摘要

Channel variability is one of the largest challenges for speaker verification (SV) techniques. Techniques in the feature, model and score domains have been applied to mitigate the channel impact. In this paper, we strive to study on robust deep feature learning with the deep belief network (DBN) by using traditional spectral features such as MFCC or PLP. In detail, during the training phase, a DBN is trained to map spectral features to the corresponding speaker identity, then deep features extracted at kth hidden layers are selected where k is determined by maximizing the ratio between within-class distance and between-class distance. In the enrollment phase, the well-trained DBN is used to extract deep features at kth hidden layers, then kth-DBN-vector is formed by averaging these features. In the test phase, kth-DBN-vector is extracted for test utterance and compared to the enrolled kth-DBN-vector to make a verification decision. To validate the effectiveness of the learned DBN-vectors for speaker verification, extensive experiments have been purposely conducted on Mandarin corpuses. It is encouraged to see that our proposed DBN-vector based SV system is superior to the state-of-the-art i-vector based SV system under channel mismatch conditions in terms of equal error rate (EER) and minimum detection cost function (minDCF).
机译:频道可变性是扬声器验证(SV)技术的最大挑战之一。已经应用了特征,模型和分数域中的技术来缓解频道影响。在本文中,我们努力通过使用MFCC或PLP等传统光谱特征与深度信仰网络(DBN)进行强大的深度特征学习。详细地,在训练阶段期间,DBN训练以映射到相应的扬声器标识的频谱特征,然后选择在kth隐藏层中提取的深度特征,其中k是通过在类内距离之间的比率和类距离之间的比率来确定k。 。在注册阶段,训练有素的DBN用于在kth隐藏层中提取深度特征,然后通过平均这些特征来形成Kth-DBN-向量。在测试阶段,提取Kth-DBN-载体以进行测试话语,并与注册的Kth-DBN-向量进行比较,以进行验证决定。为了验证学习DBN - 载体的有效性对于发言者核查,大量实验已经在普通话核心上进行了故意进行。鼓励我们认为我们所提出的基于DBN-向量的SV系统优于基于最先进的I - 载体基于频道不匹配条件的SV系统,在相同的错误率(eer)和最小检测成本函数方面( mindcf)。

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