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Multimodal Speaker Verification Using Ear Image Features Extracted by PCA and ICA

机译:使用PCA和ICA提取的耳朵图像特征进行多峰扬声器验证

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摘要

This paper first compares performances of two authentication methods using ear images, in which feature vectors are extracted by either principal component analysis (PCA) or independent component analysis (ICA). Next, the effectiveness of combining PCA- and ICA-based ear authentication methods is investigated. In our previous work, we proposed an audio-visual person authentication using speech and ear images with the aim of increasing noise robustness in mobile environments. In this paper, we apply the best ear authentication method to our audio-visual authentication method and examine its robustness. Experiments were conducted using an audio-visual database collected from 36 male speakers in five sessions over a half year. Speech data were contaminated with white noise at various SNR conditions. Experimental results show that: (1) PCA outperforms ICA in the ear authentication framework using GMMs; (2) the fusion of PCA- and ICA-based ear authentication is effective; and (3) by combining the fusion method for ear images with the speech-based method, person authentication performance can be improved. The audio-visual person authentication method achieves better performance than ear-based as well as speech-based methods in an SNR range between 15 and 30dB.
机译:本文首先比较了两种使用耳朵图像的身份验证方法的性能,其中通过主成分分析(PCA)或独立成分分析(ICA)提取特征向量。接下来,研究了结合基于PCA和ICA的耳认证方法的有效性。在我们以前的工作中,我们提出了使用语音和耳朵图像的视听人员身份验证,目的是提高移动环境中的噪声鲁棒性。在本文中,我们将最佳的耳朵身份验证方法应用于我们的视听身份验证方法,并检验其鲁棒性。实验是使用视听数据库进行的,该数据库是在半年中的五次会议中从36位男性演讲者那里收集的。在各种SNR条件下,语音数据都被白噪声污染。实验结果表明:(1)在使用GMM的耳认证框架中,PCA的性能优于ICA。 (2)基于PCA和ICA的耳认证的融合是有效的; (3)通过将人耳图像的融合方法与基于语音的方法相结合,可以提高人员认证的性能。在15至30dB的SNR范围内,视听人员身份验证方法比基于耳朵的方法和基于语音的方法具有更好的性能。

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