基于小波模极大值线和自扩展网格分类器的信号去噪技术

R. M. G. Machado, H. O. Mota
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引用次数: 1

摘要

本文介绍了一种基于小波变换和自扩展网格分类器的信号处理技术。该程序是基于循环旋转方法应用于平移不变小波变换。它利用小波模极大值沿分解层次(尺度)传播的特性作为选择相关系数的准则。选择由受自组织映射启发的数据分类器执行,但增强了自伸缩性和多实例学习功能。该程序用于处理局部放电信号,这是一种高压设备的诊断技术。我们与基于多层感知机和支持向量机的标准形式分类器进行了比较。结果表明,该方法在精度和泛化程度上与上述分类器保持一致,但具有自扩展、维度无关、处理成本低、并行化程度高等优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A signal denoising technique based on wavelets modulus maxima lines and a self-scalable grid classifier
This paper presents the description of a signal processing technique using the Wavelets Transform and a self-scalable grid classifier. The procedure is based on the cycle-spinning approach applied to the Translation-invariant Wavelet Transform. It exploits the characteristics of the Wavelets modulus maxima propagation along decomposition levels (scales) as the criterion to select the relevant coefficients. Selection was performed by a data classifier inspired on a Self-organizing Map but with enhancements to incorporate self-scalability and multiple instance learning capabilities. The procedure was employed for the processing of Partial Discharge signals, which is a technique for the diagnostics of high-voltage equipment. We performed comparisons with standard form classifiers based on the Multilayer Perceptron and Support Vector Machines. The results show that the technique allows the same orders of accuracy and generalization of those classifiers, but with the advantages of self-scalability, dimensional independence, low processing cost and high degree of parallelization.
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