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Improving hybrid speaker verification in noisy environments using least mean-square adaptive filters

机译:使用最小均方自适应滤波器改善嘈杂环境中的混合扬声器验证

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In this paper, we present a hybrid speaker verification system based on the Hidden Markov Models (HMMs) and Vector Quantization(VQ) and Least Mean-Square (LMS) adaptive filtering. The aim of using hybrid speaker verification is to improve the HMMs performance, while LMS adaptive filtering is to improve the hybrid speaker verification performance in noisy environments. A Malay spoken digit database is used for the training and testing. It is shown that, in a clean environment a Total Success Rate (TSR) of 99.97% is achieved using hybrid VQ and HMMs. For speaker verification, the true speaker rejection rate is 0.06% while the impostor acceptance rate is 0.03% and the equal error rate (EER) is 11.72%. In noisy environments without LMS adaptive filtering TSRs of between 62.57%-76.80% are achieved for Signal to Noise Ratio (SNR) of 0-30 dBs. Meanwhile, after LMS filtering, TSRs of between 77.31%-76.87% are achieved for SNRs of 0-30 dB.
机译:在本文中,我们提出了一种基于隐马尔可夫模型(HMM),矢量量化(VQ)和最小均方(LMS)自适应滤波的混合说话者验证系统。使用混合扬声器验证的目的是为了提高HMM的性能,而LMS自适应滤波则是为了在嘈杂的环境中提高混合扬声器的验证性能。马来语口语数据库用于培训和测试。结果表明,在干净的环境中,使用混合VQ和HMM可以实现99.97%的总成功率(TSR)。对于说话人验证,真实的说话人拒绝率为0.06%,冒名顶替者的接受率为0.03%,等错误率(EER)为11.72%。在没有LMS的嘈杂环境中,对于0-30 dBs的信噪比(SNR),可实现62.57%-76.80%的TSR。同时,经过LMS滤波后,对于0-30 dB的SNR,TSR达到77.31%-76.87%。

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