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Dynamic Bayesian Networks incorporating a discrete noise variable for speech recognition

机译:动态贝叶斯网络结合了用于语音识别的离散噪声变量

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摘要

The model trained on speech at one SNR level is inappropriate for testing under various noise conditions. To improve the robustness of the recognizer, it is necessary to increase the types of speech to adapt to various test conditions. In order to enhance the performance of the baseline Dynamic Bayesian Network (DBN) which is subjected to training set under different noise conditions, this paper provides DBN incorporating a discrete noise variable for speech recognition. The experimental results show this model can deal with the mixed training set and get a fair performance in comparison with that trained on training set containing only one SNR level.
机译:以一种SNR级别的语音训练的模型不适合在各种噪声条件下进行测试。为了提高识别器的鲁棒性,有必要增加语音类型以适应各种测试条件。为了提高基线动态贝叶斯网络(DBN)的性能,在不同的噪声条件下对它进行训练,本文提供了结合离散噪声变量的DBN用于语音识别。实验结果表明,与仅包含一个SNR级别的训练集相比,该模型能够处理混合训练集,并且具有较好的性能。

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