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基于类别可分性准则的金属磁记忆信号小波能量谱特征提取研究
引用本文:朱红运,王长龙,于卫刚,徐超.基于类别可分性准则的金属磁记忆信号小波能量谱特征提取研究[J].军械工程学院学报,2011(6):25-28.
作者姓名:朱红运  王长龙  于卫刚  徐超
作者单位:军械工程学院电气工程系,河北石家庄050003
摘    要:为了解决金属磁记忆信号小波能量谱特征存在的相关性和冗余性问题,利用类别可分性准则,在提取金属磁记忆信号小波能量谱的基础上,将能量谱特征进行变换提取最优特征向量。将能量谱特征向量、最优特征向量和低频特征向量作为支持向量机的特征输入量分别对不同检测区域的金属磁记忆信号进行识别。实验结果表明:最优特征向量能够减小小波能量谱特征的相关性和冗余性,有效提高支持向量机识别的准确率。

关 键 词:金属磁记忆  类别可分性准则  小波能量谱  特征提取  支持向量机

Research on Feature Extraction of Metal Magnetic Memory Signal Wavelet Power Spectrum Based on Separability Theorem
ZHU Hong-yun,WANG Chang-long,YU Wei-gang,XU Chao.Research on Feature Extraction of Metal Magnetic Memory Signal Wavelet Power Spectrum Based on Separability Theorem[J].Journal of Ordnance Engineering College,2011(6):25-28.
Authors:ZHU Hong-yun  WANG Chang-long  YU Wei-gang  XU Chao
Institution:(Department of Electrical Engineering,Ordnance Engineering College,Shijiazhuang 050003,China)
Abstract:Wavelet power spectrum of metal magnetic memory signal is always correlative and re- dundant. In order to resolve this problem, the optimized eigenvector is proposed by separability theorem based on extracting wavelet power spectrum of metal magnetic memory. Then the sup- port vector machines(SVM)with wavelet power spectrum,optimized eigenvector and power spec- trum of low frequency as its input eigenvectors are introduced to recognize the metal magnetic memory signal of different areas. The result shows that the optimized eigenvector not only can e- liminate the correlation and redundancy of wavelet power spectrum,but also improve the veracity of SVM effectively.
Keywords:metal magnetic memory  separability theorem  wavelet power spectrum  feature extraction  support vector machines
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