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A novel discriminant locality preserving projections for MDM-based speaker classification

机译:基于MDM的扬声器分类的新型判别局部保护预测

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Speaker classification is an important component for audio indexing technology for many applications such as multimedia conferencing. The primary input device of NIST speaker classification evaluation is Multiple Distant Microphones (MDM). MDM is composed of multiple microphones and has the merit of low price and easy-to-use. The spatial time-delay vector of MDM can be extracted as the speaker's discriminant feature. However the feature dimension will be expanded quickly with the increasing number of sensors. Locality Preserving Projections (LPP) and Discriminant locality preserving projection (DLPP) are the principal manifold dimension-reduction algorithms being proposed recently. In this paper, we proposed a novel method to overcome the drawbacks of traditional manifold algorithms such as the lack of class information or spatial identification information. Some basic concepts of spatial time-delay feature and merging feature for MDM speaker classification are first introduced. A review of known DLPP algorithm followed by Fisher criterion is given. Then the Multi-component Discriminant Locality Preserving Projections (MDLPP) method for speaker classification with MDM is described. Comparative experiment results on real meeting data showed the effectiveness of the proposed method.
机译:扬声器分类是用于音频索引技术的重要组成部分,用于多媒体会议等许多应用程序。 NIST扬声器分类评估的主输入设备是多个远程麦克风(MDM)。 MDM由多个麦克风组成,具有低价格和易于使用的优点。可以提取MDM的空间时间延迟向量作为扬声器的判别特征。但是,使用越来越多的传感器,特征尺寸将快速扩展。定位保存突起(LPP)和判别局部保持投影(DLPP)是最近提出的主要歧管尺寸减少算法。在本文中,我们提出了一种克服传统歧管算法的缺点的新方法,例如缺乏类信息或空间识别信息。首先介绍了一些空间时间延迟特征的一些基本概念和MDM扬声器分类的合并功能。给出了对已知DLPP算法的审查,然后是Fisher标准。然后,描述了用MDM的扬声器分类的多组分判别局部保留投影(MDLPP)方法。比较实验结果对真实的会议数据显示了该方法的有效性。

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