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空-谱二维蚁群组合优化SVM的高光谱图像分类
引用本文:陈善静,胡以华,石亮,王磊,孙杜娟,徐世龙.空-谱二维蚁群组合优化SVM的高光谱图像分类[J].光谱学与光谱分析,2013,33(8):2192-2197.
作者姓名:陈善静  胡以华  石亮  王磊  孙杜娟  徐世龙
作者单位:1. 电子工程学院脉冲功率激光技术国家重点实验室,安徽 合肥 230037
2. 电子制约技术安徽省重点实验室,安徽 合肥 230037
3. 电子工程学院航天系,安徽 合肥 230037
基金项目:国家自然科学基金项目,安徽省自然科学基金项目
摘    要:提出了一种空-谱二维特征蚁群组合优化支持向量机的高光谱图像分类算法。利用两类蚁群分别在光谱维空间和样本分布空间交替搜索最大类间距波段组合和异质样本,提取最优特征波段,降低了高光谱的波段信息冗余,去除训练样本中的异质样本,优化了训练样本特征空间分布。将蚁群组合优化后的高光谱图像和训练样本应用到支持向量机(SVM)分类器中,扩大了特征空间类间距,提高了SVM算法的分类精度。实验表明该算法总分类精度达95.45%,Kappa系数0.925 2,是一种分类精度较高的高光谱图像分类方法。

关 键 词:高光谱图像  蚁群算法  支持向量机  组合优化    
收稿时间:2012-12-13

Classification of Hyperspectral Imagery Based on Ant Colony Compositely Optimizing SVM in Spatial and Spectral Features
CHEN Shan-jing , HU Yi-hua , SHI Liang , WANG Lei , SUN Du-juan , XU Shi-long.Classification of Hyperspectral Imagery Based on Ant Colony Compositely Optimizing SVM in Spatial and Spectral Features[J].Spectroscopy and Spectral Analysis,2013,33(8):2192-2197.
Authors:CHEN Shan-jing  HU Yi-hua  SHI Liang  WANG Lei  SUN Du-juan  XU Shi-long
Institution:1. Electronic Engineering Institute,State Key Laboratory of Pulsed Power Laser Technology , Hefei 230037, China2. Anhui Province Key Laboratory of Electronic Restriction, Hefei 230037, China3. Department of Astronautics, Electronic Engineering Institute, Hefei 230037, China
Abstract:A novel classification algorithm of hyperspectral imagery based on ant colony compositely optimizing support vector machine in spatial and spectral features was proposed. Two types of virtual ants searched for the bands combination with the maximum class separation distance and heterogeneous samples in spatial and spectral features alternately. The optimal characteristic bands were extracted, and bands redundancy of hyperspectral imagery decreased. The heterogeneous samples were eliminated form the training samples, and the distribution of samples was optimized in feature space. The hyperspectral imagery and training samples which had been optimized were used in classification algorithm of support vector machine, so that the class separation distance was extended and the accuracy of classification was improved. Experimental results demonstrate that the proposed algorithm, which acquires an overall accuracy 95.45% and Kappa coefficient 0.925 2, can obtain greater accuracy than traditional hyperspectral image classification algorithms.
Keywords:Hyperspectral imagery  Ant colony optimization algorithm  Support vector machine  Composite optimization
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