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Non-negative matrix factorization of signals with overlapping events for event detection applications

机译:事件检测应用中具有重叠事件的信号的非负矩阵分解

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In many event detection applications, training data may contain tags with multiple, simultaneous events. This is particularly likely when the definition of “event” is broad and includes events that can persist for an extended period of time. Decomposing a mixed signal into signals corresponding to individual events is non-trivial. In this paper, we propose a non-negative matrix factorization (NMF) method that generates independent dictionaries for different events from training data with overlapping events. The proposed method adds a mask matrix into the regularization term in conventional NMF approaches. This mask matrix captures known event labels in the training data, so that only related dictionary terms are updated during iteration. The effectiveness of the proposed approach is evaluated using both synthetic and real data.
机译:在许多事件检测应用程序中,训练数据可能包含带有多个同时发生的事件的标签。当“事件”的定义很宽泛并且包括可以持续较长时间的事件时,这尤其可能发生。将混合信号分解为与各个事件相对应的信号并非易事。在本文中,我们提出了一种非负矩阵分解(NMF)方法,该方法从具有重叠事件的训练数据中为不同事件生成独立的字典。所提出的方法在常规NMF方法中将掩码矩阵添加到正则项中。此掩码矩阵捕获训练数据中的已知事件标签,以便在迭代过程中仅更新相关的词典术语。拟议方法的有效性通过综合数据和真实数据进行评估。

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