Noise spectrum estimation in adverse environments: improved minima controlled recursive averaging

I. Cohen
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引用次数: 949

Abstract

Noise spectrum estimation is a fundamental component of speech enhancement and speech recognition systems. We present an improved minima controlled recursive averaging (IMCRA) approach, for noise estimation in adverse environments involving nonstationary noise, weak speech components, and low input signal-to-noise ratio (SNR). The noise estimate is obtained by averaging past spectral power values, using a time-varying frequency-dependent smoothing parameter that is adjusted by the signal presence probability. The speech presence probability is controlled by the minima values of a smoothed periodogram. The proposed procedure comprises two iterations of smoothing and minimum tracking. The first iteration provides a rough voice activity detection in each frequency band. Then, smoothing in the second iteration excludes relatively strong speech components, which makes the minimum tracking during speech activity robust. We show that in nonstationary noise environments and under low SNR conditions, the IMCRA approach is very effective. In particular, compared to a competitive method, it obtains a lower estimation error, and when integrated into a speech enhancement system achieves improved speech quality and lower residual noise.
不利环境下的噪声谱估计:改进的最小控制递归平均
噪声谱估计是语音增强和语音识别系统的基本组成部分。我们提出了一种改进的最小控制递归平均(IMCRA)方法,用于在非平稳噪声、弱语音成分和低输入信噪比(SNR)的不利环境中进行噪声估计。噪声估计是通过平均过去的频谱功率值获得的,使用时变频率相关的平滑参数,该参数由信号存在概率调整。语音存在概率由平滑周期图的最小值控制。该方法包括平滑迭代和最小跟踪迭代。第一次迭代在每个频带中提供粗略的语音活动检测。然后,在第二次迭代中进行平滑,排除相对较强的语音成分,使得语音活动期间的最小跟踪具有鲁棒性。研究表明,在非平稳噪声环境和低信噪比条件下,IMCRA方法是非常有效的。特别是,与竞争方法相比,该方法的估计误差更小,当集成到语音增强系统中时,语音质量得到改善,残余噪声更低。
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