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基于分形脊波神经网络的遥感图像分类研究
引用本文:闫河,潘英俊,吴刚,黎蕾蕾,董世都.基于分形脊波神经网络的遥感图像分类研究[J].光子学报,2007,36(B06):342-345.
作者姓名:闫河  潘英俊  吴刚  黎蕾蕾  董世都
作者单位:[1]重庆大学光电技术及系统教育部重点实验室,重庆400044 [2]重庆工学院计算机系,重庆400050
基金项目:重庆市科委自然科学基金(CSTC,2006BB2393)资助
摘    要:在分形理论和脊波神经网络的基础上,综合利用彩色遥感图像的光谱、纹理和形状特征,提出了一种彩色遥感图像的分类新方法.该方法把彩色图像的蓝、绿、红波段作为3个光谱特征,由分形理论计算的DBC维和多重分形维数作为2个纹理特征,平均不变矩作为1个形状特征,并利用对曲线具有极强方向识别能力的脊波神经网络作为分类器.实验结果表明,提出的彩色遥感图像分类方法具有较高的分类准确率和较强的抗噪音能力.

关 键 词:遥感图像分类  DBC分形维  多重分形维  不变矩  脊波神经网络
修稿时间:2007-04-30

Study on Remote Sensing Image Classification Based on Fractal Theory and Ridgelet Neural Network
YAN He,PAN Ying-jun ,WU Gang ,LI Lei-lei ,DONG Shi-dou.Study on Remote Sensing Image Classification Based on Fractal Theory and Ridgelet Neural Network[J].Acta Photonica Sinica,2007,36(B06):342-345.
Authors:YAN He  PAN Ying-jun  WU Gang  LI Lei-lei  DONG Shi-dou
Abstract:Through comprehensively utilizing color spectrum, texture and shape feature of the remote sensing images,a novel method of image classification is presented based on the fraetal theory and ridgelet neural network. The bule,green and red band spectrums is used as three-band-spectral characteristics, the DBC dimension and muhi-fraetal dimension calculated by fractal theory as two texture characteristics, the average unchanged moment as one shape feature, and the ridgelet neural network with a strong ability to identify the direction of curve is used as classifier in the proposed method. The experimental results indicated that the method used in color image classification has a high accurate rate and a strong antinoise ability.
Keywords:Image classification  DBC dimension  Muhi-fractal dimension  Unchanged moment  Ridgelet neural network  
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