Speaker Identification in the Presence of Room Reverberation

P. de Leon, A.L. Trevizo
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引用次数: 6

Abstract

Speaker identification (SI) systems based on Gaussian Mixture Models (GMMs) have demonstrated high levels of accuracy when both training and testing signals are acquired in near ideal conditions. These same systems when trained and tested with signals acquired under non-ideal channels such as telephone have been shown to have markedly lower accuracy levels. In this paper, we consider a reverberant test environment and its impact on SI. We measure the degradation in SI accuracy when the system is trained with clean signals but tested with reverberant signals. Next, we propose a method whereby training signals are first filtered with a family of reverberation filters prior to construction of speaker models; the reverberation filters are designed to approximate expected test room reverberation. Reverberant test signals are then scored against the family of speaker models and identification is made. Our research demonstrates that by approximating test room reverberation in the training signals, the channel mismatch problem can be reduced and SI accuracy increased.
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存在室内混响的扬声器识别
基于高斯混合模型(gmm)的说话人识别(SI)系统在接近理想的条件下获得训练和测试信号时显示出高水平的准确性。当用非理想信道(如电话)获取的信号进行训练和测试时,这些系统的精度水平明显较低。在本文中,我们考虑了混响测试环境及其对SI的影响。当系统用干净信号训练而用混响信号测试时,我们测量了SI精度的下降。接下来,我们提出了一种方法,即在构建扬声器模型之前,首先用一系列混响滤波器对训练信号进行滤波;混响滤波器的设计近似于预期的试验室混响。然后根据扬声器型号族对混响测试信号进行评分并进行识别。我们的研究表明,通过在训练信号中近似测试室混响,可以减少信道失配问题,提高SI精度。
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