Improved GMM-based language recognition using constrained MLLR transforms

Wade Shen, D. Reynolds
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引用次数: 19

Abstract

In this paper we describe the application of a feature-space transform based on constrained maximum likelihood linear regression for unsupervised compensation of channel and speaker variability to the language recognition problem. We show that use of such transforms can improve baseline GMM-based language recognition performance on the 2005 NIST Language Recognition Evaluation (LRE05) task by 38%. Furthermore, gains from CMLLR are additive with other modeling enhancements such as vocal tract length normalization (VTLN). Further improvement is obtained using discriminative training, and it is shown that a system using only CMLLR adaption produces state-of-the-art accuracy with decreased test-time computational cost than systems using VTLN.
使用约束MLLR变换改进基于gmm的语言识别
在本文中,我们描述了基于约束最大似然线性回归的特征空间变换在语言识别问题中的应用,用于信道和说话人可变性的无监督补偿。我们表明,在2005年NIST语言识别评估(LRE05)任务中,使用这种转换可以将基于gmm的基线语言识别性能提高38%。此外,cmlr的增益与其他建模增强(如声道长度归一化(VTLN))是相加的。使用判别训练得到了进一步的改进,并且表明仅使用cmlr自适应的系统比使用VTLN的系统产生了最先进的精度,并且减少了测试时间计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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