论文标题
将统计不确定性整合到基于神经网络的语音增强中
Integrating Statistical Uncertainty into Neural Network-Based Speech Enhancement
论文作者
论文摘要
通常通过估算乘法掩码来提取清洁语音来执行时频域中的语音增强。但是,大多数基于神经网络的方法执行点估计,即它们的输出由一个掩码组成。在本文中,我们研究了基于神经网络的语音增强建模不确定性的好处。为此,我们的神经网络经过训练,可以根据频谱系数的最大后验(MAP)推断,将噪声光谱图绘制为Wiener滤波器及其相关方差,该方差量化了不确定性。通过估计分布而不是点估计,可以对与每个估计相关的不确定性进行建模。我们进一步建议使用估计的维也纳滤波器及其不确定性来构建光谱幅度的近似图(A-MAP)估计量,而光谱幅度的估计量又与光谱系数的地图推理结合在一起,形成了混合损耗功能,以共同加强估计值。不同数据集的实验结果表明,所提出的方法不仅可以捕获与估计过滤器相关的不确定性,而且还可以比不考虑不确定性的可比较模型产生更高的增强性能。
Speech enhancement in the time-frequency domain is often performed by estimating a multiplicative mask to extract clean speech. However, most neural network-based methods perform point estimation, i.e., their output consists of a single mask. In this paper, we study the benefits of modeling uncertainty in neural network-based speech enhancement. For this, our neural network is trained to map a noisy spectrogram to the Wiener filter and its associated variance, which quantifies uncertainty, based on the maximum a posteriori (MAP) inference of spectral coefficients. By estimating the distribution instead of the point estimate, one can model the uncertainty associated with each estimate. We further propose to use the estimated Wiener filter and its uncertainty to build an approximate MAP (A-MAP) estimator of spectral magnitudes, which in turn is combined with the MAP inference of spectral coefficients to form a hybrid loss function to jointly reinforce the estimation. Experimental results on different datasets show that the proposed method can not only capture the uncertainty associated with the estimated filters, but also yield a higher enhancement performance over comparable models that do not take uncertainty into account.