SNR estimation based on amplitude modulation analysis with applications to noise suppression

J. Tchorz, B. Kollmeier
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引用次数: 94

Abstract

A single-microphone noise suppression algorithm is described that is based on a novel approach for the estimation of the signal-to-noise ratio (SNR) in different frequency channels: The input signal is transformed into neurophysiologically-motivated spectro-temporal input features. These patterns are called amplitude modulation spectrograms (AMS), as they contain information of both center frequencies and modulation frequencies within each 32 ms-analysis frame. The different representations of speech and noise in AMS patterns are detected by a neural network, which estimates the present SNR in each frequency channel. Quantitative experiments show a reliable estimation of the SNR for most types of nonspeech background noise. For noise suppression, the frequency bands are attenuated according to the estimated present SNR using a Wiener filter approach. Objective speech quality measures, informal listening tests, and the results of automatic speech recognition experiments indicate a substantial benefit from AMS-based noise suppression, in comparison to unprocessed noisy speech.
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基于调幅分析的信噪比估计及其在噪声抑制中的应用
提出了一种单麦克风噪声抑制算法,该算法基于一种估计不同频率信道信噪比(SNR)的新方法:将输入信号转换为神经生理驱动的光谱-时间输入特征。这些模式被称为调幅谱图(AMS),因为它们包含每个32毫秒分析帧内的中心频率和调制频率的信息。在AMS模式中,语音和噪声的不同表示由神经网络检测,该网络估计每个频率通道中的当前信噪比。定量实验表明,对于大多数类型的非语音背景噪声,该方法都能可靠地估计出信噪比。为了抑制噪声,使用维纳滤波方法根据估计的当前信噪比对频带进行衰减。客观的语音质量测量、非正式的听力测试和自动语音识别实验结果表明,与未经处理的噪声语音相比,基于ams的噪声抑制具有实质性的好处。
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