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A study of prior sensitivity for Bayesian predictive classification based robust speech recognition

机译:基于鲁棒语音识别的贝叶斯预测分类的先验灵敏度研究

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We previously introduced a new Bayesian predictive classification (BPC) approach to robust speech recognition and showed that the BPC is capable of coping with many types of distortions. We also learned that the efficacy of the BPC algorithm is influenced by the appropriateness of the prior distribution for the mismatch being compensated. If the prior distribution fails to characterize the variability reflected in the model parameters, then the BPC will not help much. We show how the knowledge and/or experience of the interaction between the speech signal and the possible mismatch guide us to obtain a better prior distribution which improves the performance of the BPC approach.
机译:我们以前推出了一种新的贝叶斯预测分类(BPC)方法来稳健的语音识别,并表明BPC能够应对许多类型的扭曲。我们还了解到,BPC算法的功效受到在补偿不匹配的前提分配的适当性的影响。如果先前的分发未能表征模型参数中反映的可变性,则BPC无济于事。我们展示了语音信号与可能的不匹配之间的相互作用的知识和/或经验如何获得更好的先前分布,提高了BPC方法的性能。

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