首页> 外文会议>INTERSPEECH 2012 >Automatic estimation of the first two subglottal resonances in children's speech with application to speaker normalization in limited-data conditions
【24h】

Automatic estimation of the first two subglottal resonances in children's speech with application to speaker normalization in limited-data conditions

机译:在有限数据条件下,在儿童语音中自动估计儿童语音中的前两个蓄血液共振

获取原文

摘要

This paper proposes an automatic algorithm for estimating the first two subglottal resonances (SGRs)-Sg1 and Sg2一 from continuous speech of children, and applies it to automatic speaker normalization in mismatched, limited-data conditions. The proposed algorithm is based on the observation that Sg1 and Sg2 form phonological vowel feature boundaries, and is motivated by our recent SGR estimation algorithm for adults. The algorithm is trained and evaluated, respectively, on 25 and 9 children, aged between 7 and 18 years. The average RMS errors incurred in estimating Sg1 and Sg2 are 55 and 144 Hz, respectively. By applying the proposed algorithm to a connected digits speech recognition task, it is shown that: 1) a linear frequency warping using Sg1 or Sg2 is comparable to or better than maximum likelihood-based vocal tract length normalization (ML-VTLN), 2) the performance of SGR-based frequency warping is less content dependent than that of ML-VTLN, and 3) SGR-based frequency warping can be integrated into ML-VTLN to yield a statistically-significant improvement in performance. Index Terms: subglottal resonances, children's speech, automatic estimation, limited data,speaker normalization
机译:本文提出了一种由儿童的连续语音估计前两个声门下共振(的SGR)-Sg1和SG2一自动算法,并将其应用到在失配,有限数据条件扬声器自动归一化。该算法是基于这样的观察SG1和SG2形成元音音位要素边界,并通过我们的成人最近SGR估计算法的动机。该算法分别训练和评估,在25个9个孩子,7岁至18岁之间。在估计SG1和SG2发生的平均RMS误差是55和144赫兹分别。通过应用所提出的算法,以一个连接的数字语音识别任务,它被示出的是:1)的线性频率使用SG1或Sg2的翘曲是相当或比基于最大似然声道长度归一化更好(ML-VTLN),2)基于SGR-频率弯曲的性能含量较少依赖比ML-VTLN的,以及3)基于SGR-频率弯曲可以被集成到ML-VTLN,得到性能上的统计学上显著改善。关键词:声门下共鸣,孩子们的讲话,自动估计,有限的数据,扬声器正常化

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号