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Reconstruction of missing features based on a low-rank assumption for robust speaker identification

机译:基于低秩假设的缺失特征重构,可进行可靠的说话人识别

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Reconstruction of missing features promotes robustness in speaker recognition applications under noisy conditions. In this paper, we aim at enhancing the reliability of speech features for noise robust speaker identification under short training and testing sessions restrictions. Towards this direction, we apply a low-rank matrix recovery approach to reconstruct the unreliable spectrographic data due to noise corruption. This is performed by leveraging prior knowledge that the speech log-magnitude spectrotemporal representation is low-rank. Experiments on real speech data show that the proposed method improves the speaker identification accuracy especially for low signal-to-noise ratio (SNR) scenarios when compared with a sparse imputation approach.
机译:缺失特征的重建可提高嘈杂条件下说话人识别应用程序的鲁棒性。在本文中,我们旨在提高语音功能的可靠性,从而在短时间的培训和测试时间限制下,增强对噪声强的说话人的识别能力。朝着这个方向,我们应用低秩矩阵恢复方法来重建由于噪声破坏而导致的不可靠的光谱数据。这是通过利用语音对数幅度时态表示为低等级的先验知识来执行的。对真实语音数据的实验表明,与稀疏插补方法相比,该方法提高了说话人识别的准确性,尤其是在低信噪比情况下。

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