盲说话人聚类

A. N. Iyer, U. Ofoegbu, R. Yantorno, B. Y. Smolenski
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引用次数: 9

摘要

提出了一种在电话会话中进行说话人聚类的新方法。该方法基于一个简单的观察,即从不同说话人提取的特征向量种群之间的距离大于预设阈值。这一观察结果通过约束优化问题的表述被纳入聚类问题。设计了一种改进的c均值算法来解决优化问题。说话人聚类的另一个关键方面是确定聚类的数量,这在传统方法中是假设或期望作为输入的。所建议的方法不需要此类信息;相反,集群的数量是根据数据自动确定的。用Hellinger、Bhattacharyya、Mahalanobis和广义似然比距离度量对该算法的性能进行了评价和比较。该方法采用海灵格距离,从使用总机电话会话语音数据库进行的实验中得出平均聚类纯度值为0.85。结果表明,与性能最好的聚类系统相比,平均聚类纯度相对提高了9%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind Speaker Clustering
A novel approach to performing speaker clustering in telephone conversations is presented in this paper. The method is based on a simple observation that the distance between populations of feature vectors extracted from different speakers is greater than a preset threshold. This observation is incorporated into the clustering problem by the formulation of a constrained optimization problem. A modified c-means algorithm is designed to solve the optimization problem. Another key aspect in speaker clustering is to determine the number of clusters, which is either assumed or expected as an input in traditional methods. The proposed method does not require such information; instead, the number of clusters is automatically determined from the data. The performance of the proposed algorithm with the Hellinger, Bhattacharyya, Mahalanobis and the generalized likelihood ratio distance measures is evaluated and compared. The approach, employing the Hellinger distance, resulted in an average cluster purity value of 0.85 from experiments performed using the switchboard telephone conversation al speech database. The result indicates a 9% relative improvement in the average cluster purity as compared to the best performing agglomerative clustering system
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