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A model distance maximizing framework for speech recognizer-based speech enhancement

机译:基于语音识别器的语音增强的模型距离最大化框架

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摘要

This paper has presented a novel discriminative parameter calibration approach based on the model distance maximizing (MDM) framework to improve the performance of our previously-proposed method based on spectral subtraction (SS) in a likelihood-maximizing framework. In the previous work, spectral over-subtraction factors were adjusted based on the conventional maximum-likelihood (ML) approach that utilized only the true model and did not consider other confused models, thus likely reached suboptimal solutions. While in the proposed MDM framework, improved speech recognition performance is obtained by maximizing the dissimilarities among models. Experimental results based on FARSDAT, TIMIT and real distant-talking databases have demonstrated that the MDM framework outperformed ML in terms of recognition accuracy.
机译:本文提出了一种新颖的基于模型距离最大化(MDM)框架的判别性参数校准方法,以改善我们先前提出的基于似然最大化框架中的频谱减法(SS)的方法的性能。在先前的工作中,基于常规最大似然法(ML)的方法调整了光谱的超减因数,该方法仅利用真实模型,而未考虑其他混淆模型,因此很可能达到了次优解。在建议的MDM框架中,通过最大程度地提高模型之间的差异,可以提高语音识别性能。基于FARSDAT,TIMIT和真实的远程对话数据库的实验结果表明,在识别准确性方面,MDM框架优于ML。

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