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Underdetermined Blind Audio Source Separation Using Modal Decomposition

机译:使用模态分解的欠定盲音频源分离

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This paper introduces new algorithms for the blind separation of audio sources using modal decomposition. Indeed, audio signals and, in particular, musical signals can be well approximated by a sum of damped sinusoidal (modal) components. Based on this representation, we propose a two-step approach consisting of a signal analysis (extraction of the modal components) followed by a signal synthesis (grouping of the components belonging to the same source) using vector clustering. For the signal analysis, two existing algorithms are considered and compared: namely the EMD (empirical mode decomposition) algorithm and a parametric estimation algorithm using ESPRIT technique. A major advantage of the proposed method resides in its validity for both instantaneous and convolutive mixtures and its ability to separate more sources than sensors. Simulation results are given to compare and assess the performance of the proposed algorithms.
机译:本文介绍了使用模态分解的音频源盲分离新算法。实际上,可以通过阻尼正弦(模态)分量之和很好地近似音频信号,尤其是音乐信号。基于此表示,我们提出了一种两步方法,包括信号分析(模态分量的提取),然后是使用矢量聚类的信号合成(属于同一源的分量的分组)。对于信号分析,考虑并比较了两种现有算法:即EMD(经验模式分解)算法和使用ESPRIT技术的参数估计算法。所提出的方法的主要优点在于其对于瞬时和卷积混合物的有效性以及其比传感器分离更多源的能力。仿真结果可以用来比较和评估所提出算法的性能。

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