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Robust speaker identification based on hybrid model of VQ and GMM-UBM

机译:基于VQ和GMM-UBM混合模型的健壮说话人识别

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In practical speaker identification applications, the performance of systems is generally degraded because of the presence of background noise. In this paper, an advanced hybrid model VQ/GMM-UBM in speaker identification which is a combination of Vector Quantization (VQ) and Gaussian Mixture Model-Universal Background Model (GMM-UBM) is presented. Even though this algorithm takes advantages of both VQ and GMM based identification algorithms, its identification efficiency, however, is also decreased in noisy environments. The impact of different types of noise on robustness of VQ/GMM-UBM based speaker identification is also evaluated in this paper. The experimental results indicated which types of noise speaker identification using VQ/GMM-UBM is robust against. According to the result, we can propose further that in practical applications affected by specific types of noise, whether or not noise reduction algorithms should be used to enhance VQ/GMM-UBM based speaker identification.
机译:在实际的说话人识别应用中,由于背景噪声的存在,通常会降低系统的性能。本文提出了一种基于矢量量化(VQ)和高斯混合模型-通用背景模型(GMM-UBM)的说话人识别高级混合模型VQ / GMM-UBM。即使此算法同时利用了基于VQ和GMM的识别算法,但是在嘈杂的环境中其识别效率也会降低。本文还评估了不同类型的噪声对基于VQ / GMM-UBM的说话人识别的鲁棒性的影响。实验结果表明,使用VQ / GMM-UBM识别哪种类型的噪声说话者是可靠的。根据结果​​,我们可以进一步建议,在受特定类型噪声影响的实际应用中,是否应使用降噪算法来增强基于VQ / GMM-UBM的说话人识别。

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