首页> 外文会议>European Conference on Speech Communication and Technology v.2; 20010903-20010907; Aalborg; DK >Scaled Likelihood Linear Regression for Hidden Markov Model Adaptation
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Scaled Likelihood Linear Regression for Hidden Markov Model Adaptation

机译:隐马尔可夫模型自适应的比例线性回归

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In the context of continuous Hidden Markov Model (HMM) based speech-recognition, linear regression approaches have become popular to adapt the acoustic models to the specific speaker's characteristics. The well known Maximum Likelihood Linear Regression (MLLR) and Maximum A Posteriori Linear Regression (M APLR) are just two of them, which differ primarily in the training objective they are maximizing. However, besides the approaches mentioned above there exists another known training objective which is the Maximum Mutual Information (MMI). By combining this MMI-approach with the linear regression of the HMM's mean values, our research group developed a new adaptation technique that we call Scaled Likelihood Linear Regression (SLLR) as introduced in . In this approach, the distance of the correct model sequence against the wrong ones is discriminated framewise. Like all techniques using MMI objectives, this adaptation is computationally very expensive compared to techniques using ordinary ML based objectives. This paper therefore addresses the problem of an appropriate approximation technique to speed up this adaptation approach, by pruning the computation for tiny values in the discrimination objective. To further explore the potential of this adaptation technique and its approximation, the performance is measured on the LVCSR-system DUDeutsch developed by our research group at the Duisburg University and additionally on the 1993 WSJ adaptation tests of native and non-native speakers for the supervised case.
机译:在基于连续隐马尔可夫模型(HMM)的语音识别的背景下,线性回归方法已变得流行,以使声学模型适应特定说话者的特征。众所周知的最大似然线性回归(MLLR)和最大后验线性回归(M APLR)仅是其中两个,它们的主要区别在于最大化的训练目标。但是,除了上述方法外,还有另一个已知的训练目标,即最大相互信息(MMI)。通过将此MMI方法与HMM均值的线性回归相结合,我们的研究小组开发了一种新的自适应技术,我们将其称为Scaled Likelihood Linear Regression(SLLR),如引入。在这种方法中,正确的模型序列与错误的模型序列之间的距离是逐帧区分的。像使用MMI物镜的所有技术一样,与使用基于普通ML物镜的技术相比,这种调整在计算上非常昂贵。因此,本文通过修剪区分目标中微小值的计算,解决了采用适当的近似技术来加快这种自适应方法的问题。为了进一步探索这种自适应技术的潜力及其近似方法,我们在杜伊斯堡大学研究小组开发的LVCSR系统DUDeutsch上测试了性能,并在1993年的WSJ自适应和非母语说话者自适应测试中进行了测量案件。

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