减少说话人识别中的说话人模型搜索空间

P. D. Leon, V. Apsingekar
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引用次数: 9

摘要

对于大群体说话人识别(SID)系统,未知说话人的测试特征集和说话人模型之间的似然计算可能非常耗时,并且不利于需要快速SID的应用程序。在本文中,我们提出了一种在训练阶段对说话人模型进行聚类的方法。然后在测试阶段,只搜索那些可能包含高似然说话人模型的聚类。该方法减小了说话人模型空间,直接提高了语音识别速度。尽管根据搜索的集群数量,识别准确性可能会有轻微的损失,但这种损失可以通过权衡速度和准确性来控制。
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Reducing Speaker Model Search Space in Speaker Identification
For large population speaker identification (SID) systems, likelihood computations between an unknown speaker's test feature set and speaker models can be very time-consuming and detrimental to applications where fast SID is required. In this paper, we propose a method whereby speaker models are clustered during the training stage. Then during the testing stage, only those clusters which are likely to contain high-likelihood speaker models are searched. The proposed method reduces the speaker model space which directly results in faster SID. Although there maybe a slight loss in identification accuracy depending on the number of clusters searched, this loss can be controlled by trading off speed and accuracy.
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