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Time series classification using local distance-based features in multi-modal fusion networks

机译:使用基于局部距离的特征在多模态融合网络中的时间序列分类

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摘要

We propose the use of a novel feature, called local distance features, for time series classification. The local distance features are extracted using Dynamic Time Warping (DTW) and classified using Convolutional Neural Networks (CNN). DTW is classically as a robust distance measure for distance-based time series recognition methods. However, by using DTW strictly as a global distance measure, information about the matching is discarded. We show that this information can further be used as supplementary input information in temporal CNNs. This is done by using both the raw data and the features extracted from DTW in multi-modal fusion CNNs. Furthermore, we explore the effects of different prototype selection methods, prototype numbers, and data fusion schemes induce on the accuracy. We perform experiments on a wide range of time series datasets including three Unipen handwriting datasets, four UCI Machine Learning Repository datasets, and 85 UCR Time Series Classification Archive datasets. (C) 2019 Elsevier Ltd. All rights reserved.
机译:我们提出了使用一种新颖的特征,称为局部距离特征,用于时间序列分类。使用动态时间翘曲(DTW)提取局部距离特征,并使用卷积神经网络(CNN)进行分类。 DTW经典作为基于距离的时间序列识别方法的鲁棒距离测量。但是,通过严格使用DTW作为全局距离测量,丢弃了有关匹配的信息。我们表明该信息可以进一步用作时间CNN中的补充输入信息。这是通过使用原始数据和从多模态融合CNN中提取的DTW中提取的功能来完成的。此外,我们探讨了不同原型选择方法,原型编号和数据融合方案的效果诱导了精度。我们对各种时间序列数据集进行实验,包括三个UniPen手写数据集,四个UCI机器学习存储库数据集和85 UCR时间序列分类存档数据集。 (c)2019年elestvier有限公司保留所有权利。

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