具有过零特性的散度语音分割算法

M. Salam, D. Mohamad, S. Salleh
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引用次数: 4

摘要

散度算法是一种统计分割方法,它在没有任何声信号先验信息的情况下,通过检测突变来找到分割点。该方法可以获得较高的分割匹配度,但也会产生大量的假分割点。本文介绍了一种基于零交叉率(Zero Crossing Rate, ZCR)的散度分割增强算法。首先通过参数调优优化发散算法的分割性能。然后将提出的基于ZCR的特性应用到散度算法中,以减少插入点。与参考点相比,调整发散参数的结果在0.09秒的时间公差下达到99.4%的匹配率,插入率为69%。将引入的ZCR特性应用于散度算法的结果表明,调整一些ZCR特性参数可以减少4% ~ 45%的插入量。然而,这也会降低匹配率。该方法在保持99.4%的匹配率的同时,可将插入率降低5.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speech segmentation using divergence algorithm with Zero Crossing property
Divergence algorithm is a statistical segmentation approach which finds segmentation point via detection of abrupt changes without any previous information of the acoustic signal. The approach could get high match of segmentation but also gives a lot of false segmentation points. This work introduced a property based on the usage of Zero Crossing Rate (ZCR) in enhancing segmentation by divergence algorithm. The work starts via optimizing divergence algorithm segmentation performance via parameters tuning. Then the proposed property based on ZCR is applied to divergence algorithm to reduce insertion points. The results of tuning divergence parameters achieved match rate of 99.4% at time tolerance of 0.09 seconds with 69% insertion rate occurrences in comparisons to reference points. The result in applying the introduced ZCR property to divergence algorithm shows that tuning of some ZCR property parameters could reduce insertion between 4% to 45%. However, it would also reduce the match rate. Nevertheless, the method could reduced insertion rate by 5.5% while maintaining match rate of 99.4%.
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