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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >Classifying Time Series Using Local Descriptors with Hybrid Sampling
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Classifying Time Series Using Local Descriptors with Hybrid Sampling

机译:使用带有混合采样的本地描述符对时间序列进行分类

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Time series classification (TSC) arises in many fields and has a wide range of applications. Here, we adopt the bag-of-words (BoW) framework to classify time series. Our algorithm first samples local subsequences from time series at feature-point locations when available. It then builds local descriptors, and models their distribution by Gaussian mixture models (GMM), and at last it computes a Fisher Vector (FV) to encode each time series. The encoded FV representations of time series are readily used by existing classifiers, e.g., SVM, for training and prediction. In our work, we focus on detecting better feature points and crafting better local representations, while using existing techniques to learn codebook and encode time series. Specifically, we develop an efficient and effective peak and valley detection algorithm from real-case time series data. Subsequences are sampled from these peaks and valleys, instead of sampled randomly or uniformly as was done previously. Then, two local descriptors, Histogram of Oriented Gradients (HOG-1D) and Dynamic time warping-Multidimensional scaling (DTW-MDS), are designed to represent sampled subsequences. Both descriptors complement each other, and their fused representation is shown to be more descriptive than individual ones. We test our approach extensively on 43 UCR time series datasets, and obtain significantly improved classification accuracies over existing approaches, including NNDTW and shapelet transform.
机译:时间序列分类(TSC)出现在许多领域,并且具有广泛的应用范围。在这里,我们采用词袋(BoW)框架对时间序列进行分类。我们的算法首先在可用时从特征点位置的时间序列中采样局部子序列。然后,它构建局部描述符,并通过高斯混合模型(GMM)对它们的分布进行建模,最后计算出Fisher向量(FV)以对每个时间序列进行编码。时间序列的编码的FV表示容易被现有的分类器(例如SVM)用于训练和预测。在我们的工作中,我们专注于检测更好的特征点并制作更好的局部表示,同时使用现有技术来学习代码本和对时间序列进行编码。具体来说,我们从实际时间序列数据中开发了一种有效的峰值和谷值检测算法。从这些峰和谷中采样子序列,而不是像以前那样随机或均匀地采样。然后,设计了两个局部描述符,即定向梯度直方图(HOG-1D)和动态时间规整多维标度(DTW-MDS),以表示采样的子序列。两个描述符互为补充,它们的融合表示比单个描述符更具描述性。我们在43个UCR时间序列数据集上对我们的方法进行了广泛的测试,并在包括NNDTW和​​shapelet变换在内的现有方法上获得了明显提高的分类精度。

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