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Integrated Feature Normalization and Enhancement for robust Speaker Recognition using Acoustic Factor Analysis

机译:使用声学因子分析集成的特征标准化和强大的扬声器识别的增强

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State-of-the-art factor analysis based channel compensation methods for speaker recognition are based on the assumption that speaker/utterance dependent Gaussian Mixture Model (GMM) mean super-vectors can be constrained to lie in a lower dimensional subspace, which does not consider the fact that conventional acoustic features may also be constrained in a similar way in the feature space. In this study, motivated by the low-rank covariance structure of cepstral features, we propose a factor analysis model in the acoustic feature space instead of the super-vector domain and derive a mixture dependent feature transformation. We demonstrate that, the proposed Acoustic Factor Analysis (AFA) transformation performs feature dimensionality reduction, de-correlation, variance normalization and enhancement at the same time. The transform applies a square-root Wiener gain on the acoustic feature eigenvector directions, and is similar to the signal sub-space based speech enhancement schemes. We also propose several methods of adaptively selecting the AFA parameter for each mixture. The proposed feature transform is applied using a probabilistic mixture alignment, and is integrated with a conventional i-Vector system. Experimental results on the telephone trials of the NIST SRE 2010 demonstrate the effectiveness of the proposed scheme.
机译:基于最先进的因子分析扬声器识别的信道补偿方法基于扬声器/话语相关的高斯混合模型(GMM)平均值超级向量的假设基于较低的尺寸子空间,这不是考虑传统声学特征也可以在特征空间中以类似的方式限制。在该研究中,通过倒谱特征的低级协方差结构的动机,我们提出了声学特征空间中的因子分析模型而不是超矢量域并导出混合依赖性特征变换。我们证明,所提出的声学因子分析(AFA)转换同时执行特征维度降低,取消相关性,方差标准化和增强功能。该变换在声学特征特征vector方向上应用方形根部维纳增益,并且类似于基于信号子空间的语音增强方案。我们还提出了几种适自适应地选择每种混合物的AFA参数的方法。使用概率混合对准应用所提出的特征变换,并与传统的I形载体系统集成。 NIST SRE 2010的电话试验的实验结果证明了拟议计划的有效性。

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