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Discriminative feature transforms using differenced maximum mutual information

机译:使用差异最大互信息的区分特征变换

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Recently feature compensation techniques that train feature transforms using a discriminative criterion have attracted much interest in the speech recognition community. Typically, the acoustic feature space is modeled by a Gaussian mixture model (GMM), and a feature transform is assigned to each Gaussian of the GMM. Feature compensation is then performed by transforming features using the transformation associated with each Gaussian, then summing up the transformed features weighted by the posterior probability of each Gaussian. Several discriminative criteria have been investigated for estimating the feature transformation parameters including maximum mutual information (MMI) and minimum phone error (MPE). Recently, the differenced MMI (dMMI) criterion that generalizes MMI andMPE, has been shown to provide competitive performance for acoustic model training. In this paper, we investigate the use of the dMMI criterion for discriminative feature transforms and demonstrate in a noisy speech recognition experiment that dMMI achieves recognition performance superior to that of MMI or MPE.
机译:最近,使用判别准则训练特征变换的特征补偿技术引起了语音识别社区的极大兴趣。通常,声学特征空间由高斯混合模型(GMM)建模,并且特征变换分配给GMM的每个高斯模型。然后,通过使用与每个高斯相关的变换对特征进行变换,然后对通过每个高斯的后验概率加权的变换后的特征求和,来执行特征补偿。已经研究了几种判别标准来估计功能转换参数,包括最大互信息(MMI)和最小电话错误(MPE)。最近,已经证明了对MMI和MPE进行概括的差异MMI(dMMI)准则可为声学模型训练提供竞争性能。在本文中,我们调查了使用dMMI标准进行判别性特征转换的过程,并在嘈杂的语音识别实验中证明了dMMI的识别性能优于MMI或MPE。

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