Abstract
For conventional single-channel speech enhancement based on noise power spectrum, the speech gain function, which suppresses background noise at each time-frequency bin, is calculated by prior signal-to-noise-ratio (SNR). Hence, accurate prior SNR estimation is paramount for successful noise suppression. Accordingly, we have proposed a single-channel approach to combine conventional and deep learning techniques for speech enhancement and automatic speech recognition (ASR) recently. However, the combination process is at the testing stage, which is time-consuming with a complicated procedure. In this study, the gain function of classic speech enhancement will be utilized to optimize the ideal ratio mask based deep neural network (DNN-IRM) at the training stage, denoted as GF-DNN-IRM. And at the testing stage, the estimated IRM by GF-DNN-IRM model is directly used to generate enhanced speech without involving the conventional speech enhancement process. In addition, DNNs with less parameters in the causal processing mode are also discussed. Experiments of the CHiME-4 challenge task show that our proposed algorithm can achieve a relative word error rate reduction of 6.57% on RealData test set comparing to unprocessed speech without acoustic model retraining in causal mode, while the traditional DNN-IRM method fails to improve ASR performance in this case.
Published Version
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