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Feature Mapping and Recuperation by Using Elliptical Basis Function Networks for Robust Speaker Verification
作者姓名:李昕  郑宇
作者单位:[1]SchoolofElectromechanicalEngineeringandAutomation,ShanghaiUniversity,Shanghai200072,China [2]SchoolofComputerEngineeringandScience,ShanghaiUniversity,Shanghai200072,China
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 evaluation based on 258 speakers of the TIMIT and NTIMIT corpuses suggest that the feature mappers improve the verification performance remarkably.

关 键 词:椭圆基函数网络  特征映射  特征恢复  鲁棒话者识别  语音识别
收稿时间:20 May 2002

Feature mapping and recuperation by using elliptical basis function networks for robust speaker verification
Xin Li Ph. D. Candidate,Yu Zheng,Fang-Ze Jiang.Feature Mapping and Recuperation by Using Elliptical Basis Function Networks for Robust Speaker Verification[J].Journal of Shanghai University(English Edition),2002,6(4):331-336.
Authors:Xin Li Ph D Candidate  Yu Zheng  Fang-Ze Jiang
Institution:(1) School of Electromechanical Engineering and Automation, Shanghai University, 200072 Shanghai, China;(2) School of Computer Engineering and Science, Shanghai University, 200072 Shanghai, China
Abstract: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.
Keywords:feature mapping and recurpuration  elliptical basis function (EBF) networks  speaker verification  
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