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Research on speaker feature dimension reduction. based on CCA and PCA

机译:扬声器特征尺寸减少的研究。基于CCA和PCA

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A method to reduce feature dimension based on CCA and PCA is proposed. First, using the CCA to fuse the LPC features based do channel model and the MFCC feature based on 'auditory model to improve the relevance of the two different features; second, utilizing the PCA to further remove redundant features, and reduce the dimension of effective features. To verify the validity of this method, experimental model is based on GMM speaker recognition system, and 16-dimensional LPC and13- dimensional MFCC are selected as speaker features. Compared with the traditional dimension reduction method, such as CCA, PCA and manual methods, experiments show that CCA+PCA method can further enhance the effect of dimension reduction.
机译:提出了一种基于CCA和PCA来减少特征维度的方法。首先,使用CCA熔断基于LPC特征的DO信道模型和MFCC功能,基于“听觉模型来提高两个不同特征的相关性;其次,利用PCA进一步删除冗余功能,减少有效特征的尺寸。为了验证该方法的有效性,实验模型基于GMM扬声器识别系统,并选择16维LPC和13维MFCC作为扬声器功能。与传统的尺寸减少方法相比,如CCA,PCA和手动方法,实验表明,CCA + PCA方法可以进一步提高尺寸减少的效果。

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