Segmentation of speech using speaker identification

L. Wilcox, Francine R. Chen, Don Kimber, V. Balasubramanian
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引用次数: 96

Abstract

This paper describes techniques for segmentation of conversational speech based on speaker identity. Speaker segmentation is performed using Viterbi decoding on a hidden Markov model network consisting of interconnected speaker sub-networks. Speaker sub-networks are initialized using Baum-Welch training on data labeled by speaker, and are iteratively retrained based on the previous segmentation. If data labeled by speaker is not available, agglomerative clustering is used to approximately segment the conversational speech according to speaker prior to Baum-Welch training. The distance measure for the clustering is a likelihood ratio in which speakers are modeled by Gaussian distributions. The distance between merged segments is recomputed at each stage of the clustering, and a duration model is used to bias the likelihood ratio. Segmentation accuracy using agglomerative clustering initialization matches accuracy using initialization with speaker labeled data.<>
使用说话人识别的语音分割
本文介绍了基于说话人身份的会话语音分割技术。在由相互连接的说话人子网络组成的隐马尔可夫模型网络上,使用维特比解码对说话人进行分割。对说话人标记的数据使用Baum-Welch训练初始化说话人子网络,并在之前分割的基础上迭代地重新训练。如果没有说话人标记的数据,在鲍姆-韦尔奇训练之前,使用聚类方法根据说话人对会话语音进行近似分割。聚类的距离度量是一个似然比,其中说话人由高斯分布建模。在聚类的每个阶段重新计算合并段之间的距离,并使用持续时间模型对似然比进行偏置。使用聚类初始化的分割精度与使用说话人标记数据初始化的精度相匹配。
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