使用MFSR分析技术的有限数据说话人验证

T. R. Jayanthi Kumari, H. S. Jayanna
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引用次数: 0

摘要

本文解决了利用有限的训练和测试数据验证说话人的问题。在有限数据下的说话人验证可能无法产生足够的特征向量进行训练和测试。这在训练和测试期间造成了糟糕的说话者模型。为了解决这个问题,增加了用于训练和测试的特征向量。为了增加特征向量,研究了多帧大小(MFS)、多帧速率(MFR)和多帧大小和速率(MFSR)分析技术。与单帧大小和速率(SFSR)分析相比,这些技术在训练和测试中相对增加了更多的特征向量。在这些特征向量的帮助下,可以在有限的数据下进行改进的建模和测试。为了证明这一点,我们使用mel频率倒谱系数(MFCC)作为特征提取技术。采用高斯混合建模-通用背景模型(GMM-UBM)对扬声器进行建模。实验使用NIST-2003作为数据库。实验结果表明,采用MFS技术对说话人进行验证,MFR和MFSR是代替SFSR的分析技术。此外,实验结果表明,与其他分析技术相比,MFSR具有更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Limited data speaker verification using MFSR analysis technique
In this paper, the task of verifying the speaker using limited training and testing data is addressed. Speaker verification under limited data may not be able to produce sufficient feature vector for training and testing. This creates poor speaker modelling during training and testing. To defeat this problem, feature vectors for training and testing are increased. To increase the feature vectors, multiple frame size (MFS), multiple frame rate (MFR) and multiple frame size and rate (MFSR) analysis techniques are explored. These techniques comparatively increase more feature vectors during training and testing compared to single frame size and rate (SFSR) analysis. With the help of these feature vectors improved modeling and testing can be done under limited data. To demonstrate this we have used Mel-frequency cepstral coefficients (MFCC) as feature extraction technique. Gaussian mixture modelling-Universal background model (GMM-UBM) is used for modelling the speaker. The NIST-2003 is used as database for conducting the experiments. The experimental results show that there is an improvement in the performance of speaker verification if we use MFS, MFR and MFSR are analysis techniques instead of SFSR. Further, the experimental results show that MFSR gives improved performance over other analysis techniques.
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