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A scale-space theory and bag-of-features based time series classification method

机译:基于尺度空间理论和特征包的时间序列分类方法

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The aim of this study is to develop a time series classification method based on scale-space theory. Our study has been conducted in three steps: In the first step, scale-space extrema of time series found through using SiZer (SIgnificant ZERo crossings of the derivatives) method and local features set constructed around the determined extreme points, based on interval-widths list entered by the user. In the second step, the values of descriptors have been computed around the prescribed scale-space extrema. In this study we have used mean, standard deviation and the slope of fitted regression line as descriptors for each interval and with the aid of these values bag-of-features has been constructed. In the third and the last step, after the obtained bag-of-features set clustered, the classification procedure has been completed by using random forest method. Error rates of the proposed method have been compared with the error rates of some widely-used methods by using UCR time series database and it is concluded that the obtained results are better by a majority. It is planning to take forward our study by amendment of the method for finding scale-space extrema and including other descriptors.
机译:这项研究的目的是开发一种基于比例空间理论的时间序列分类方法。我们的研究分三步进行:第一步,通过使用SiZer(导数的显着ZERo交叉)方法和围绕确定的极点构造的局部特征(基于区间宽度)找到时间序列的尺度空间极值。用户输入的列表。在第二步中,已在规定的比例空间极值附近计算了描述符的值。在这项研究中,我们使用平均值,标准差和拟合回归线的斜率作为每个间隔的描述子,并借助这些值构造了特征袋。在第三步(也是最后一步)中,将获得的特征包集聚类后,使用随机森林方法完成了分类过程。通过使用UCR时间序列数据库,将该方法的错误率与一些广泛使用的方法的错误率进行了比较,得出的结论是,获得的结果大多数都更好。计划通过修正寻找尺度空间极值的方法并包括其他描述符来推进我们的研究。

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