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HMM-based cue parameters estimation for speech enhancement

机译:基于HMM的语音参数估计用于语音增强

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In this paper, a hidden Markov model (HMM)-based cue parameters estimation method for single-channel speech enhancement is proposed, in which the cue parameters of binaural cue coding (BCC) are applied to single-channel speech enhancement system successfully. First, the clean speech and noise signals are considered as the left and right channels of stereo signal, respectively; and the noisy speech is treated as the down-mixed mono signal of BCC method. According to the clean speech and noise data set and the corresponding noisy speech data set, the clean cue parameters and pre-enhanced cue parameters are extracted, respectively. Then the cue HMM is trained offline, which exploits the a priori information about the clean cue parameters and the pre-enhanced cue parameters for speech enhancement. Next, using the trained cue HMM, the clean cue parameters are estimated from noisy speech online. Finally, following the synthesis principle of BCC cue parameters, the speech estimator is constructed for enhancing noisy speech. The test results demonstrate that, for the segmental signal-noise-ratio (SNR), the log spectral distortion and PESQ measures, the proposed method performs better than the reference methods.
机译:提出了一种基于隐马尔可夫模型(HMM)的单通道语音增强提示参数估计方法,该方法将双耳提示编码(BCC)的提示参数成功应用于单通道语音增强系统。首先,干净的语音和噪声信号分别被视为立体声信号的左声道和右声道;噪声语音被视为BCC方法的缩混单声道信号。根据干净语音和噪声数据集以及相应的嘈杂语音数据集,分别提取干净提示参数和预增强提示参数。然后,对提示HMM进行脱机训练,从而利用有关干净提示参数和预先增强的提示参数的先验信息进行语音增强。接下来,使用经过训练的提示HMM,从嘈杂的语音在线估计干净的提示参数。最后,遵循BCC提示参数的综合原理,构造语音估计器以增强嘈杂的语音。测试结果表明,对于分段信噪比(SNR),对数频谱失真和PESQ措施,该方法的性能优于参考方法。

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