Improving noise estimation with RAPT pitch voice activity detection under low SNR condition

Supasit Chuwatthananurux, Dittaya Wanvarie
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引用次数: 1

Abstract

Noise spectrum estimation is a fundamental component of speech enhancement and speech recognition systems. In this paper, we present pitch voice activity detection for noise estimation in the input with the low signal-to-noise ratio (SNR). The noise power spectrum is approximated by the minimum level of power over the period of the mixed signal. Since the noise level may not be stationary, the algorithm should regularly update the estimation. However, when a period contains a speech signal, the spectral power is rather high, and the noise level tends to be overestimated. To avoid this problem, we firstly use voice activity detector to detect the speech presence in the signal period. We propose that the pitch information is efficient in identifying speech activity in the mixed signal even under a low SNR condition. We adopt the Robust Algorithm for Pitch Tracking (RAPT) together with the ratio between the frame power and minimum spectral power to classify voice activity in the input frame. Under low SNR condition, the experimental result showed that the proposed algorithm is effective. The proposed algorithm achieves lower estimation errors when compared to Continuous spectrum minima tracking, Minima Control Recursive Averaging (MCRA) and the estimation based solely on the spectral power ratio.
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低信噪比条件下RAPT基音活动检测改进噪声估计
噪声谱估计是语音增强和语音识别系统的基本组成部分。在本文中,我们提出了一种用于低信噪比(SNR)输入噪声估计的音调语音活动检测方法。噪声功率谱由混合信号周期内的最小功率水平近似表示。由于噪声水平可能不是平稳的,算法需要定期更新估计。然而,当一个周期包含语音信号时,频谱功率较大,噪声水平容易被高估。为了避免这个问题,我们首先使用语音活动检测器来检测信号周期内的语音存在。我们提出,即使在低信噪比条件下,基音信息也能有效地识别混合信号中的语音活动。我们采用稳健的基音跟踪算法(RAPT),结合帧功率与最小谱功率之比对输入帧中的语音活动进行分类。在低信噪比条件下,实验结果表明该算法是有效的。与连续频谱最小跟踪、最小控制递推平均(MCRA)和仅基于频谱功率比的估计相比,该算法的估计误差更小。
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