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Speaker recognition system using the improved GMM-based clustering algorithm

机译:使用改进的基于GMM的聚类算法的说话人识别系统

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According to the sensitivity of initial value in the traditional GMM-based clustering algorithm, this paper proposes the improved GMM-based clustering algorithm which utilizes subtractive clustering to initialize the cluster centroids and uses an approximating K-L divergence as the distance measure. After clustering the universal background model(UBM) is trained for each clustering. In speaker recognition, the algorithm firstly confirms which clustering the aim speaker belongs to and then it uses the value of maximum likelihood probability and the UBM-based testing approach to recognize. According to the results of simulation using Matlab, the improved GMM-based clustering algorithm has the higher clustering accuracy and recognition rate than the traditional GMM-based clustering algorithm.
机译:针对传统的基于GMM的聚类算法对初始值的敏感性,提出了一种改进的基于GMM的聚类算法,该算法利用减法聚类对聚类质心进行初始化,并采用近似K-L散度作为距离度量。聚类后​​,针对每个聚类训练通用背景模型(UBM)。在说话人识别中,该算法首先确定目标说话人属于哪个聚类,然后使用最大似然概率值和基于UBM的测试方法进行识别。根据Matlab的仿真结果,改进的基于GMM的聚类算法比传统的基于GMM的聚类算法具有更高的聚类精度和识别率。

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