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Exploiting long-term temporal dependencies in NMF using recurrent neural networks with application to source separation

机译:使用递归神经网络在NMF中利用长期时间依赖性,并将其应用于源分离

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This paper seeks to exploit high-level temporal information during feature extraction from audio signals via non-negative matrix factorization. Contrary to existing approaches that impose local temporal constraints, we train powerful recurrent neural network models to capture long-term temporal dependencies and event co-occurrence in the data. This gives our method the ability to “fill in the blanks” in a smart way during feature extraction from complex audio mixtures, an ability very useful for a number of audio applications. We apply these ideas to source separation problems.
机译:本文试图在通过非负矩阵分解从音频信号中提取特征的过程中利用高级时间信息。与施加局部时间限制的现有方法相反,我们训练了功能强大的递归神经网络模型,以捕获数据中的长期时间依赖性和事件共现。这使我们的方法能够在从复杂的音频混合中提取特征时以智能的方式“填补空白”,这一功能对许多音频应用程序非常有用。我们将这些想法应用于源头分离问题。

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