当前位置: 首页 > 文章 > 基于SPOT5影像的杉木胸高断面积估测探讨 中南林业调查规划 2012,31 (1) 44-48+56
Position: Home > Articles > Study on Basal Area Estimation of Chinese Fir Based on SPOT5 Images Central South Forest Inventory and Planning 2012,31 (1) 44-48+56

基于SPOT5影像的杉木胸高断面积估测探讨

作  者:
陈柏海;林辉;孙华
单  位:
中南林业科技大学林业遥感信息工程研究中心
关键词:
胸高断面积;多光谱;SPOT5;多元统计分析
摘  要:
采用角规实地调查黄丰桥林场90个杉木人工纯林样地胸高断面积,利用样地SPOT5遥感信息与地理信息,建立了杉木胸高断面积多元线性回归估测模型。首先对样地采用GIS软件进行缓冲处理,缓冲后每个样地的面积为1 hm2;然后提取样地遥感光谱信息与纹理信息等21个因子和4个GIS因子,采用逐步回归分析法筛选出6个因子作为模型自变量;最后分别采用普通最小二乘法(OLS)和偏最小二乘法(PLS)建立了杉木胸高断面积多元回归模型。研究结果表明:OLS回归模型的预测精度为82.2%,均方根误差(RMSE)为5.12 m2/hm2;PLS回规模型的预测精度为83.9%,均方根误差(RMSE)为4.21 m2/hm2,PLS和OLS回归模型在杉木胸高断面积估测中均取得了较好的效果,用中高分辨率遥感影像在估测森林结构参数上是可行的。
译  名:
Study on Basal Area Estimation of Chinese Fir Based on SPOT5 Images
作  者:
CHEN Baihai,LIN Hui,SUN Hua(Research Center of Forestry Remote Sensing & Information Engineering,Central South University of Forestry & Technology,Changsha 410004,Hunan,China)
关键词:
basal area;multispectral;SPOT5;multivariate statistical analysis
摘  要:
The surveying of Chinese fir basal area by fielding 90 sample plots with angle gauges had been carried out in Huangfengqiao forest farm,the multiple linear regression estimation model of basal area was set up based on remote sensing and geographic information.First,each sample plot was buffered by GIS software to 1 hectare;Then from which 21 RS index factors such as spectral and texture information and 4 GIS index factors were extracted,in which 6 index factors were screened out as independent model variables through stepwise regression analysis;Last the multiple regression model was built by using OLS and PLS respectively.The results showed that: the model predicted accuracy was 82.2% and RMSE was 5.12 m2/hm2 by using OLS;the model predicted accuracy was 83.9% and RMSE was 4.21 m2/hm2 by using PLS;The adoption of OLS and PLS services well in basal area estimation,to estimate forest structural parameters can achieve good effects by using high resolution remote sensing images.

相似文章

计量
文章访问数: 7
HTML全文浏览量: 0
PDF下载量: 0

所属期刊

推荐期刊