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Majorization-minimization algorithm for smooth Itakura-Saito nonnegative matrix factorization

机译:平稳Itakura-Saito非负矩阵分解的极大化最小化算法

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Nonnegative matrix factorization (NMF) with the Itakura-Saito divergence has proven efficient for audio source separation and music transcription, where the signal power spectrogram is factored into a “dictionary” matrix times an “activation” matrix. Given the nature of audio signals it is expected that the activation coefficients exhibit smoothness along time frames. This may be enforced by penalizing the NMF objective function with an extra term reflecting smoothness of the activation coefficients. We propose a novel regularization term that solves some deficiencies of our previous work and leads to an efficient implementation using a majorization-minimization procedure.
机译:带有Itakura-Saito散度的非负矩阵分解(NMF)已被证明有效地用于音频源分离和音乐转录,其中信号功率频谱图被分解成“字典”矩阵乘以“激活”矩阵。考虑到音频信号的性质,可以预期激活系数沿时间范围表现出平滑度。这可以通过用反映激活系数平滑度的额外项对NMF目标函数进行惩罚来强制执行。我们提出了一个新颖的正则化术语,可以解决我们先前工作中的一些不足,并通过使用最小化和最大化程序来实现高效的实现。

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