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Sound Source Separation by Spectral Subtraction Based on Instantaneous Estimation of Noise Spectrum

机译:基于噪声谱瞬时估计的谱减法声源分离

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In our previous paper, we proposed a sound source separation method using the two-dimensional fast Fourier transform (2D FFT) of a spatio-temporal sound pressure distribution (STSPD) image that is composed from the outputs of a microphone array. In an STSPD image, vertical stripes are created for a target sound arriving from the perpendicular direction to the array; therefore, its spectral components are concentrated on the spatial direct current (DC) components in the 2D amplitude spectrum. In that study, we estimated the noise DC amplitudes using a deep neural network (DNN), then subtracted them from the observed spectrum to suppress the noise. However, the performance of noise suppression can be improved further. In this study, we estimate the noise DC components theoretically instead of empirically using a DNN. We improved the performance successfully.
机译:在我们之前的论文中,我们提出了一种使用时空声压分布(STSPD)图像的二维快速傅里叶变换(2D FFT)进行声源分离的方法,该图像由麦克风阵列的输出组成。在STSPD图像中,为从垂直方向到达阵列的目标声音创建了垂直条纹;因此,其频谱分量集中在2D振幅频谱中的空间直流(DC)分量上。在该研究中,我们使用深度神经网络(DNN)估算了噪声DC幅度,然后从观察到的频谱中减去它们以抑制噪声。但是,可以进一步提高噪声抑制的性能。在这项研究中,我们从理论上而不是根据经验使用DNN估算噪声DC分量。我们成功改善了性能。

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