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Dereverberation based on Wavelet Packet Filtering for Robust Automatic Speech Recognition

机译:基于小波包过滤的DERERERATERATION鲁棒自动语音识别

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This paper describes a multiple-resolution signal analysis to suppress late reflection of reverberation for robust automatic speech recognition (ASR). Wavelet packet tree (WPT) decomposition offers a finer resolution to discriminate the late reflection subspace from the speech subspace. By selecting appropriate wavelet basis in the WPT for speech and late reflection, we can effectively estimate the Wiener gain directly from the observed reverberant data. Moreover, the selection procedure is performed in accordance with the likelihood of acoustic model used by the speech recognizer. Dereverberation is realized by filtering the wavelet packet coefficients with the Wiener gain to suppress the effects of the late reflection. Experimental evaluations with large vocabulary continuous speech recognition (LVCSR) in real reverberant conditions show that the proposed method outperforms conventional wavelet-based methods and other dereverberation techniques.
机译:本文介绍了一种多分辨率信号分析,抑制了强大的自动语音识别(ASR)混响的后期反射。小波包树(WPT)分解提供了更精细的分辨率,以区分语音子空间的后期反射子空间。通过在WPT中选择适当的小波依据进行语音和晚期反射,我们可以直接从观察到的混响数据中有效地估计维纳利。此外,根据语音识别器使用的声学模型的可能性来执行选择过程。通过将小波包系数与维纳增益过滤来抑制晚期反射的效果来实现DERERERATERATION。具有大型词汇连续语音识别(LVCSR)的实验评估在真正的混响条件下表明,该方法优于传统的基于小波的方法和其他DEREERBERATION技术。

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