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基于小波子空间、支持向量机和模糊积分的信号多类分类算法
引用本文:杨欣,费树岷,陈丽娟.基于小波子空间、支持向量机和模糊积分的信号多类分类算法[J].信息与控制,2007,36(2):211-217.
作者姓名:杨欣  费树岷  陈丽娟
作者单位:1. 东南大学自动控制系,江苏,南京,210096
2. 东南大学电气工程学院,江苏,南京,210096
摘    要:为了对音频信号进行有效的分类,提出一种在小波变换子空间中基于支持向量机和模糊积分进行信号特征提取和分类的新算法.首先,对信号进行预加重和窗化处理;其次,用小波变换把信号分解到不同的子空间并提取每个子空间的特征;再次,对每一个子空间信号特征向量进行标准化、降维和分类;最后,用模糊积分将子空间分类结果融合,得出最终类.试验表明本算法速度较快、精确度高.

关 键 词:小波子空间  支持向量机  特征提取  信号分类  模糊积分
文章编号:1002-0411(2007)02-0211-07
修稿时间:2006-05-09

Multi-Class Signal Classification Algorithm Based on Wavelet Subspace, SVM and Fuzzy Integral
YANG Xin,FEI Shu-min,CHEN Li-juan.Multi-Class Signal Classification Algorithm Based on Wavelet Subspace, SVM and Fuzzy Integral[J].Information and Control,2007,36(2):211-217.
Authors:YANG Xin  FEI Shu-min  CHEN Li-juan
Affiliation:1. Department of Autornatie Control, Southeast University, Nanjing 210096, China ; 2.College of Electrical Engineering, Southeast University, Nanjing 210096, China
Abstract:In order to classify audio signals effectively,a new signal feature extraction and classification algorithm is proposed based on SVM(Support Vector Machine) and fuzzy integral in wavelet transform sub-spaces. Firstly,the signal is pre-emphasized and windowed.Then,signals are decomposed into different subspaces using wavelet transform,and features of each subspace are extracted.Thirdly,standardization and dimension reduction are performed to classify signals in each signal subspace.In the end,classification results of each subspace are fused by means of fuzzy integral to get the final class.Experiments show that the proposed algorithm has a faster speed,higher accuracy.
Keywords:wavelet subspace  SVM(Support Vector Machine)  feature extraction  signal classification  fuzzy integral
本文献已被 CNKI 维普 万方数据 等数据库收录!
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