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Noise Estimation and Suppression Using Nonlinear Function with A Priori Speech Absence Probability in Speech Enhancement

机译:语音增强中使用先验语音缺席概率的非线性函数进行噪声估计和抑制

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摘要

This paper proposes a noise-biased compensation of minimum statistics (MS) method using a nonlinear function and a priori speech absence probability (SAP) for speech enhancement in highly nonstationary noisy environments. The MS method is a well-known technique for noise power estimation in nonstationary noisy environments; however, it tends to bias noise estimation below that of the true noise level. The proposed method is combined with an adaptive parameter based on a sigmoid function and a priori SAP for residual noise reduction. Additionally, our method uses an autoparameter to control the trade-off between speech distortion and residual noise. We evaluate the estimation of noise power in highly nonstationary and varying noise environments. The improvement can be confirmed in terms of signal-to-noise ratio (SNR) and the Itakura-Saito Distortion Measure (ISDM).
机译:本文提出了一种使用非线性函数和先验语音缺失概率(SAP)的最小统计误差补偿(MS)方法,以在高度不稳定的嘈杂环境中增强语音。 MS方法是一种用于非平稳噪声环境中噪声功率估计的众所周知的技术。然而,它倾向于使噪声估计偏向真实噪声水平以下。所提出的方法与基于S形函数和先验SAP的自适应参数相结合以减少残留噪声。此外,我们的方法使用自动参数来控制语音失真和残留噪声之间的折衷。我们评估高度不稳定和变化的噪声环境中的噪声功率估计。可以从信噪比(SNR)和Itakura-Saito失真测量(ISDM)方面确认改进。

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