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Information Retrieval and Classification with Wavelets and Support Vector Machines

机译:小波与支持向量机的信息检索与分类

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摘要

Since fusion plasma experiment generates hundreds of signals. In analyzing these signals it is important to have automatic mechanisms for searching similarities and retrieving of specific data in the waveform database. Wavelet transform (WT) is a transformation that allows to map signals to spaces of lower dimensionality, that is, a smoothed and compressed version of the original signal. Support vector machine (SVM) is a very effective method for general purpose pattern recognition. Given a set of input vectors which belong to two different classes, the SVM maps the inputs into a high-dimensional feature space through some non-linear mapping, where an optimal separating hyperplane is constructed. This hyperplane minimizes the risk of misclassification and it is determined by a subset of points of the two classes, named support vectors (SV). In this work, the combined use of WT and SVM is proposed for searching and retrieving similar waveforms in the TJ-II database. In a first stage, plasma signals will be preprocessed by WT in order to reduce the dimensionality of the problem and to extract their main features. In the next stage, and using the new smoothed signals produced by the WT, SVM will be applied to show up the efficency of the proposed method to deal with the problem of sorting out thousands of fusion plasma signals.
机译:由于融合等离子体实验会产生数百个信号。在分析这些信号时,重要的是要具有自动机制,以在波形数据库中搜索相似性并检索特定数据。小波变换(WT)是一种允许将信号映射到较低维空间的变换,即原始信号的平滑和压缩版本。支持向量机(SVM)是用于通用模式识别的非常有效的方法。给定一组属于两个不同类的输入向量,SVM通过一些非线性映射将输入映射到高维特征空间,在该空间中构造最佳分离超平面。该超平面最大程度地减少了错误分类的风险,它由两个类别的点的子集(称为支持向量(SV))确定。在这项工作中,建议结合使用WT和SVM来搜索和检索TJ-II数据库中的相似波形。在第一阶段,WT将对等离子体信号进行预处理,以减小问题的维数并提取其主要特征。在下一阶段,并使用WT产生的新的平滑信号,将使用SVM来显示所提出方法的效率,以解决选出数千个融合等离子体信号的问题。

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