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BP-ANN在荒漠草地高光谱分类研究中的应用
引用本文:钱育蓉,贾振红,于炯,杨峰,段文亮.BP-ANN在荒漠草地高光谱分类研究中的应用[J].计算机工程与应用,2011,47(12):225-228.
作者姓名:钱育蓉  贾振红  于炯  杨峰  段文亮
作者单位:1.新疆大学 软件学院,乌鲁木齐 830008 2.新疆大学 信息科学与工程学院,乌鲁木齐 830046 3.四川农业大学 农学院,四川 雅安 625014 4.中国联通新疆分公司,乌鲁木齐 830000
基金项目:国家自然科学基金,国际科技合作项目,教育部国家大学生创新性实验计划,新疆大学博士启动基金
摘    要:利用高分辨率光谱仪在实地测得的光谱数据来识别新疆阜康地区的7种典型荒漠草种,对原始高光谱数据作预处理(微分和平滑),选取典型荒漠植被的光谱特征(红边、绿峰、红谷、RVI等)作为输入数据,植被类型作为输出数据,构建基于BP神经网络模型的典型荒漠草地分类器,进行了三组基于高光谱特征的草地类型分类实验,结果表明:(1)红边特征较其余吸收特征更能获得精确的分类结果;(2)波段550~790 nm间的窄波段光谱分类间隔中,20 nm优于10 nm的间隔;(3)草地分类器中BP网络模型的输入层、隐藏层神经元个数与BP网络训练时间、精度具有复杂的耦合关系,不可一概而论。

关 键 词:高光谱特征提取  反向反馈(BP)人工神经网络  红边特征  窄波段光谱  
修稿时间: 

Application of BP-ANN to classification of hyperspectral grassland in desert
QIAN Yurong,JIA Zhenhong,YU jiong,YANG Feng,DUAN Wenliang.Application of BP-ANN to classification of hyperspectral grassland in desert[J].Computer Engineering and Applications,2011,47(12):225-228.
Authors:QIAN Yurong  JIA Zhenhong  YU jiong  YANG Feng  DUAN Wenliang
Affiliation:1.School of Software,Xinjiang University,Urumqi 830008,China 2.School of Information Science and Engineering,Xinjiang University,Urumqi 830046,China 3.College of Agronomy,Sichuan Agricultural University,Ya’an,Sichuan 625014,China 4.Xinjiang Branch of China Unicom,Urumqi 830000,China
Abstract:In order to identify the seven typical desert grasses of Xinjiang Fukang area,high-resolution spectroscopy is used to obtain the hyper-spectral data.After the preprocessing of the original hyper-spectral data,such as differentiation and smoothing,the typical desert grass classifier based on BP neural network is constructed, with the input data of typical desert grasses' spectral characters(red-edge, green peak, red valley, RVI, etc.) and the output data of vegetation types.Three groups of grass classification experiments based on hyper-spectral features demonstrate that: (1)Red-edge characteristics perform better than the other absorption features to obtain accurate classification results.(2)Between the narrow-band spectral classification interval 550~790 nm, interval 20 nm performs better than interval 10nm.(3)There are complex relationships between the input,output layers of BP neural network and the training time,precision of BP network.
Keywords:hyper-spectral feature extraction  Back Propagafion(BP) artificial neural network  red edge feature  narrow-band spectrum
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