基于示例的音频事件检测NMF方法

J. Gemmeke, L. Vuegen, P. Karsmakers, B. Vanrumste, H. V. hamme
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引用次数: 7

摘要

我们提出了一种基于非负矩阵分解的基于样本的音频事件检测方法。基于最近在噪声鲁棒自动语音识别方面的工作,我们将事件建模为字典原子的线性组合,将混合建模为重叠事件的线性组合。观测中活化原子的重量直接作为基础事件类别的证据。字典中的原子跨越多个帧,并通过从训练数据中提取所有可能的固定长度示例来创建。为了解决小型训练数据集的数据稀缺性问题,我们提出通过在特征域中以多种速率进行线性时间扭曲来人为地增加训练数据的数量。在AASP声学场景和事件检测与分类挑战发布的Office Live和Office Synthetic数据集上对该方法进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An exemplar-based NMF approach to audio event detection
We present a novel, exemplar-based method for audio event detection based on non-negative matrix factorisation. Building on recent work in noise robust automatic speech recognition, we model events as a linear combination of dictionary atoms, and mixtures as a linear combination of overlapping events. The weights of activated atoms in an observation serve directly as evidence for the underlying event classes. The atoms in the dictionary span multiple frames and are created by extracting all possible fixed-length exemplars from the training data. To combat data scarcity of small training datasets, we propose to artificially augment the amount of training data by linear time warping in the feature domain at multiple rates. The method is evaluated on the Office Live and Office Synthetic datasets released by the AASP Challenge on Detection and Classification of Acoustic Scenes and Events.
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