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Unsupervised Speaker Clustering in a Linear Discriminant Subspace

机译:线性判别子空间中的无监督说话人聚类

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We present an approach for grouping single-speaker speech segments into speaker-specific clusters. Our approach is based on applying the K-means clustering algorithm to a suitable discriminant subspace, where the euclidean distance reflect speaker differences. A core feature of our approach is approximating speaker-conditional statistics, that are not available, with single-speaker segments statistics, which can be evaluated, thus making possible to apply the LDA algorithm for finding the optimal discriminative subspace, using unlabeled data. To illustrate our method, we present examples of clusters generated by our approach when applied to the ICMLA 2010 Speaker Clustering Challenge datasets.
机译:我们提出了一种将单个扬声器的语音片段分组为特定于扬声器的群集的方法。我们的方法基于将K均值聚类算法应用于合适的判别子空间,其中欧几里得距离反映了说话人的差异。我们方法的核心特征是使用可以评估的单扬声器段统计量来近似不可用的扬声器条件统计量,从而可以使用LDA算法使用未标记的数据来找到最佳的判别子空间。为了说明我们的方法,我们提供了当我们的方法应用于ICMLA 2010演讲者聚类挑战数据集时所生成的聚类的示例。

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