基于预测的滤波和平滑利用NMF中的时间依赖性

N. Mohammadiha, P. Smaragdis, A. Leijon
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引用次数: 28

摘要

非负矩阵分解对于许多音频应用来说是一种很有吸引力的技术。然而,它的基本形式没有使用时间结构,而时间结构是语音处理中重要的信息来源。在本文中,我们提出了与卡尔曼滤波和平滑相关的基于nmf的滤波和平滑算法。虽然我们的预测步骤类似于卡尔曼滤波,但我们开发了一个乘法更新步骤,更方便于非负数据分析,并符合现有的NMF文献。所提出的平滑方法引入了不可避免的处理延迟,但滤波算法没有,可以很容易地用于在线应用。我们使用所提出算法的实验表明,与基线NMF方法相比,我们有了显著的改进。在输入信噪比为0 dB的工厂噪声语音去噪情况下,平滑算法在SDR中优于NMF,在PESQ中优于3.2 dB,在PESQ中优于0.5 MOS左右,同样,由于利用了语音的时间规律,源分离实验也提高了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction based filtering and smoothing to exploit temporal dependencies in NMF
Nonnegative matrix factorization is an appealing technique for many audio applications. However, in it's basic form it does not use temporal structure, which is an important source of information in speech processing. In this paper, we propose NMF-based filtering and smoothing algorithms that are related to Kalman filtering and smoothing. While our prediction step is similar to that of Kalman filtering, we develop a multiplicative update step which is more convenient for nonnegative data analysis and in line with existing NMF literature. The proposed smoothing approach introduces an unavoidable processing delay, but the filtering algorithm does not and can be readily used for on-line applications. Our experiments using the proposed algorithms show a significant improvement over the baseline NMF approaches. In the case of speech denoising with factory noise at 0 dB input SNR, the smoothing algorithm outperforms NMF with 3.2 dB in SDR and around 0.5 MOS in PESQ, likewise source separation experiments result in improved performance due to taking advantage of the temporal regularities in speech.
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