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An algebraic gain estimation method to improve the performance of HMM-based speech enhancement systems

机译:一种提高基于HMM的语音增强系统性能的代数增益估计方法

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摘要

An extension to conventional Hidden Markov Model (HMM)-based speech enhancement method is developed. An algebraic method is proposed to estimate gain of speech and noise in order to improve the quality of the estimated speech. Different pronunciations and intonations may affect speech gain. Besides, gain of noise may vary remarkably from one environment to the other one. This may lead in a mismatch between energy contour of trained models and energy contour of noisy speech signal. In this work, speech gain and noise gain are estimated based on an algebraic method simultaneously in order to match gain of noisy speech and noisy model. To carry out this procedure an extension of least square method which is called non-negative least square method has been applied. Performance of the proposed enhancement method is evaluated using SNR and PESQ. Experimental results confirm advantages of this method in presence of non-stationary noise especially in lower SNR levels.
机译:开发了对基于传统隐马尔可夫模型(HMM)的语音增强方法的扩展。为了提高估计语音的质量,提出了一种代数方法来估计语音和噪声的增益。不同的发音和语调可能会影响语音增益。此外,从一种环境到另一种环境,噪声增益可能会显着变化。这可能导致训练模型的能量轮廓与嘈杂的语音信号的能量轮廓之间不匹配。在这项工作中,语音增益和噪声增益同时基于代数方法进行估计,以使噪声语音和噪声模型的增益匹配。为了执行该过程,已经应用了称为非负最小二乘法的最小二乘法的扩展。使用SNR和PESQ评估了所提出的增强方法的性能。实验结果证实了该方法在存在非平稳噪声的情况下的优势,尤其是在较低的SNR级别中。

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