Soft decision based Laplacian model factor estimation for noisy speech enhancement

S. Ou, Haidong Sun, Yanqin Zhang, Ying Gao
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Abstract

The Laplacian model factor estimation is a critical link for noisy speech enhancement technique employing Laplacian statistical model priori of clean speech. In this letter, we propose a novel estimation algorithm for this parameter based on soft decision in discrete cosine transform domain. As the speech signal is not always present in the noisy speech signal at all components, we first compute the speech presence probability which is decided in each discrete cosine transform component, and then based on the minimum mean square error estimation theory, the Laplacian model factor is estimated in the speech presence stage. Simulation experiment results demonstrate that the proposed algorithm possesses improved performance than that of the conventional method under different noisy conditions and levels.
基于拉普拉斯模型因子估计的软决策噪声语音增强
拉普拉斯模型因子估计是利用干净语音的拉普拉斯先验统计模型进行噪声语音增强技术的关键环节。在本文中,我们提出了一种新的基于离散余弦变换域软判决的参数估计算法。由于语音信号并不总是存在于噪声语音信号的所有分量中,我们首先计算在每个离散余弦变换分量中确定的语音存在概率,然后基于最小均方误差估计理论,在语音存在阶段估计拉普拉斯模型因子。仿真实验结果表明,在不同的噪声条件和噪声水平下,该算法比传统方法具有更好的性能。
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