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Dynamic speaker clustering algorithm based on minimal GMM distance tracing

机译:基于最小GMM距离跟踪的动态说话人聚类算法

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In the field of speaker clustering, most of the clustering algorithms rely heavily on the pre-given thresholds, which is hard work to get the optimal values. This paper proposed a speaker clustering algorithm based on tracing the minimal Bhattacharyya distance between two Gaussian Mixture Models (GMMs), without any pre-given thresholds. In the procedure of clustering, if utterance set A and B has the minimal distance, utterance B is regarded as suspicious set whose utterance may come from the speaker of A. And then, two stage-verification is used. First, a comparative likelihood is used to verify whether the suspicious set B is generated from the speaker or not. Second, a comparative likelihood for each utterance in set B is used to judge whether it is produced by the speaker of set A or not. If the utterance is from the speaker of set A, we move the utterance of set B to set A. And then the models of utterance set A and B are updated. Repeat the above two stages until each speech set is not changed. Experiments, evaluated on Chinese 863 speech database, give 68.97% average cluster purity (ACP), and classification error ratio (CER) is 39%. On the other hand, CER of the K-means and the Iterative Self-Organizing Data Analysis (ISODATA) with the optimal thresholds give 35% and 38% respectively.
机译:在说话者聚类领域,大多数聚类算法严重依赖于预先给定的阈值,这很难获得最佳值。本文提出了一种基于跟踪两个高斯混合模型(GMM)之间的最小Bhattacharyya距离而没有任何给定阈值的说话人聚类算法。在聚类过程中,如果发声集A和B的距离最小,则将发声B视为可疑集,其发声可能来自A的说话人。然后,使用两阶段验证。首先,使用比较似然性来验证可疑集合B是否由说话者生成。其次,针对集合B中每个发声的比较似然性来判断它是否由集合A的说话者产生。如果话语来自集合A的说话者,则将集合B的话语移至集合A。然后更新话语集合A和B的模型。重复以上两个阶段,直到每个语音设置都没有改变。在中文863语音数据库上进行的实验得出的平均簇纯度(ACP)为68.97%,分类错误率(CER)为39%。另一方面,K均值的CER和具有最佳阈值的迭代自组织数据分析(ISODATA)分别给出35%和38%。

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