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Feature Mapping and Recuperation by Using Elliptical Basis Function Networks for Robust Speaker Verification

机译:使用椭圆基函数网络进行特征映射和复原以进行可靠的说话人验证

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摘要

The performance of speaker verification systems is often compromised under real-world environments. For example, variations in handset characteristics could cause severe performance degradation. This paper presents a novel method to overcome this problem by using a non-linear handset mapper. Under this method, a mapper is constructed by training an elliptical basis function network using distorted speech features as inputs and the corresponding clean features as the desired outputs. During feature recuperation, clean features are recovered by feeding the distorted features to the feature mapper. The recovered features are then presented to a speaker model as if they were derived from clean speech. Experimental evaluations based on 258 speakers of the TIMIT and NTIMIT corpuses suggest that the feature mappers improve the verification performance remarkably.
机译:在真实环境下,说话人验证系统的性能通常会受到影响。例如,手机特性的变化可能会导致严重的性能下降。本文提出了一种通过使用非线性手机映射器来克服此问题的新颖方法。在这种方法下,通过使用失真的语音特征作为输入并使用相应的纯净特征作为所需输出来训练椭圆基函数网络来构造映射器。在要素修复期间,通过将变形的要素馈送到要素映射器来恢复干净的要素。然后,将恢复的特征呈现给说话者模型,就好像它们是从干净的语音中得出的一样。基于TIMIT和NTIMIT语料库的258位发言人的实验评估表明,特征映射器显着提高了验证性能。

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