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Improved Convolutive and Under-Determined Blind Audio Source Separation with MRF Smoothing

机译:具有MRF平滑功能的改进的卷积和不确定性盲音频源分离

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摘要

Convolutive and under-determined blind audio source separation from noisy recordings is a challenging problem. Several computational strategies have been proposed to address this problem. This study is concerned with several modifications to the expectation-minimization-based algorithm, which iteratively estimates the mixing and source parameters. This strategy assumes that any entry in each source spectrogram is modeled using superimposed Gaussian components, which are mutually and individually independent across frequency and time bins. In our approach, we resolve this issue by considering a locally smooth temporal and frequency structure in the power source spectrograms. Local smoothness is enforced by incorporating a Gibbs prior in the complete data likelihood function, which models the interactions between neighboring spectrogram bins using a Markov random field. Simulations using audio files derived from stereo audio source separation evaluation campaign 2008 demonstrate high efficiency with the proposed improvement.
机译:从嘈杂的录音中卷积且不确定的盲音频源分离是一个具有挑战性的问题。已经提出了几种计算策略来解决这个问题。这项研究涉及对基于期望最小化的算法的一些修改,该迭代迭代地估计了混合和源参数。该策略假定每个源频谱图中的任何条目都是使用叠加的高斯分量建模的,这些分量在频率和时间段上相互独立。在我们的方法中,我们通过考虑电源频谱图中的局部平滑时间和频率结构来解决此问题。通过在完整的数据似然函数中合并Gibbs先验来增强局部平滑度,该函数使用Markov随机场对相邻光谱图元之间的交互进行建模。使用从立体声音频源分离评估活动2008派生的音频文件进行的仿真展示了所提出的改进的高效率。

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