Orthogonality-Regularized Masked NMF for Learning on Weakly Labeled Audio Data

I. Sobieraj, Lucas Rencker, Mark D. Plumbley
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引用次数: 4

Abstract

Non-negative Matrix Factorization (NMF) is a well established tool for audio analysis. However, it is not well suited for learning on weakly labeled data, i.e. data where the exact timestamp of the sound of interest is not known. In this paper we propose a novel extension to NMF, that allows it to extract meaningful representations from weakly labeled audio data. Recently, a constraint on the activation matrix was proposed to adapt for learning on weak labels. To further improve the method we propose to add an orthogonality regularizer of the dictionary in the cost function of NMF. In that way we obtain appropriate dictionaries for the sounds of interest and background sounds from weakly labeled data. We demonstrate that the proposed Orthogonality-Regularized Masked NMF (ORM-NMF) can be used for Audio Event Detection of rare events and evaluate the method on the development data from Task2 of DCASE2017 Challenge.
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用于弱标记音频数据学习的正交正则化掩膜NMF
非负矩阵分解(NMF)是一种成熟的音频分析工具。然而,它不太适合弱标记数据的学习,即不知道感兴趣声音的确切时间戳的数据。在本文中,我们提出了一种新的NMF扩展,允许它从弱标记音频数据中提取有意义的表示。最近,人们提出了一种对激活矩阵的约束来适应弱标签的学习。为了进一步改进该方法,我们提出在NMF的代价函数中加入字典的正交正则化器。通过这种方式,我们从弱标记数据中获得感兴趣的声音和背景声音的适当字典。我们证明了所提出的正交正则化掩膜NMF (ORM-NMF)可用于罕见事件的音频事件检测,并在DCASE2017挑战赛任务2的开发数据上对该方法进行了评估。
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