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基于样区纯化的BP神经网络多光谱影像分类研究
引用本文:李锦辉,李成辉,吴波.基于样区纯化的BP神经网络多光谱影像分类研究[J].长江科学院院报,2006,23(6):51-54.
作者姓名:李锦辉  李成辉  吴波
作者单位:1. 武汉大学,测绘遥感信息工程国家重点实验室,武汉,430079;义乌工商学院土木系,浙江,义乌,322000
2. 中国酒泉卫星发射中心,甘肃,酒泉,732750
3. 武汉大学,测绘遥感信息工程国家重点实验室,武汉,430079
摘    要: 提出了一种基于局部自动搜索和光谱匹配技术训练样本纯化的BP网络分类方法。利用影像的空间信息在图像局部范围内自动搜索和选择最佳样区位置,再用光谱匹配对寻找到的最佳样区在光谱空间上进一步纯化。从空间和光谱两个角度对样区进行了纯化,使得训练样本更适合遥感图像分类的要求,最后利用BP网络对遥感图像进行分类。实验结果证明,原始遥感图像经过样区纯化算法处理后,目视判读效果和数值分析都表明提高了分类精度。

关 键 词:局部搜索  光谱匹配  训练样本  BP分类  样区纯化  训练样本纯化  神经网络  多光谱影像  分类研究  Networks  Neutral  Purification  Sample  Based  Remote  Sensing  Images  分类精度  数值分析  效果  目视判读  算法处理  结果  实验  遥感图像分类  光谱空间  匹配对
文章编号:1001-5485(2006)06-0051-04
收稿时间:2005-11-24
修稿时间:2005-11-24

Classification of Remote Sensing Images Based on Sample Purification and BP Neutral Networks
LI Jin-hui,LI Cheng-hui,WU Bo.Classification of Remote Sensing Images Based on Sample Purification and BP Neutral Networks[J].Journal of Yangtze River Scientific Research Institute,2006,23(6):51-54.
Authors:LI Jin-hui  LI Cheng-hui  WU Bo
Abstract:This paper proposes a supervised classification method for remote sensing images based on locally automatically searching training samples and spectral matching technique.The best training samples are searched and selected on the whole image by the local space information and spectral matching,and then they are purified on spectral domains.Both spatial and spectral information are purified to enable the training sample to meet the requirement for classification at the best of times.An experiment for TM image classification based on BP neural networks has been conducted to validate the procedure.It can be seen from our experiment that the classifying results are improved from the observation of naked eye and the numerical analysis.So the proposed approach has practical application value to some extend for it's simple and high efficiency.
Keywords:local searching  spectral matching  BP networks  sample purification
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