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  • 软件名称:基于光学与SAR因子的森林生物量多元回归估算
  • 软件大小: 0.00 B
  • 软件评级: ★★★
  • 开 发 商: 苏华,张明慧,李静,陈修治,汪小钦
  • 软件来源: 《遥感技术与应用》
  • 解压密码:www.gissky.net

资源简介

摘要: 基于福建省Landsat-8 OLI影像,利用混合像元分解模型从实测样地数据中筛选出“纯净”的植被像元,并将筛选出的样地分为针叶林、阔叶林和混交林3种植被类型,依次提取3种不同植被类型“纯净”植被像元的树高、林龄、坡度属性信息以及对应的光学NDVI、RVI植被因子和合成孔径雷达(SAR)HH、HV极化后向散射因子,分别构成不同植被类型的“含光学特征多元因子”(NDVI、RVI、树高、林龄、坡度)和“含SAR特征多元因子”(HH、HV、树高、林龄、坡度),开展对比研究。采用含光学特征的多元因子回归模型先估测不同植被类型的森林叶生物量,然后根据叶生物量与地上生物量的关系间接估测森林地上生物量。同时,采用含SAR特征的多元因子回归模型直接估测森林的地上生物量。最后,对比分析这两组多元回归模型的估测精度。结果表明:不同植被类型的含光学特征多元回归模型的验证精度(针叶林:R2为0.483,RMSE为29.522 t/hm2;阔叶林:R2为0.470,RMSE为21.632 t/hm2;混交林:R2为0.351,RSME为25.253 t/hm2)比含SAR特征多元回归模型的验证精度(针叶林:R2为0.319,RMSE为28.352 t/hm2;阔叶林:R2为0.353,RMSE为18.991t/hm2;混交林:R2为0.281,RMSE为26.637 t/hm2)略高,说明在福建省森林生物量估算中采用含光学特征的多元回归模型(先估测叶生物量进而间接估测地上生物量)比利用含SAR特征的多元回归模型(直接估测地上生物量)更具优势。 关键词: 地上生物量;  叶生物量;  光学特征;  SAR特征;  多元因子     Abstract: Using Landsat-8 OLI images and 296 survey samples in Fujian province, we extracted pure vegetation pixels biased on pixel unmixing models, and divided the samples into coniferous forest, broad-leaved forest and mixed forest, then employed tree height, plantation age and slope as attribute information from pure vegetation samples, and also extracted NDVI, RVI form Landsat8 OLI, and HV, HH backscatter coefficient form SAR image, so as to compose multiple factors with optical features (NDVI, RVI, tree height, plantation age, slope) and SAR features (HH, HV, tree height, plantation age, slope) for comparison study. Since optical remote sensing can only observe vegetation canopy information rather than the whole vegetation information, we firstly estimated the leaf biomass by using multiple regression with optical features, then estimated the above-ground biomass indirectly in line with the relationship between above-ground biomass and leaf biomass. Since SAR L-band with long wavelength can penetrate the canopy and directly observe the whole vegetation information above the ground, we used multiple regression with SAR features to directly estimate the above-ground biomass. Finally, we analyzed and compared the estimation accuracy from the two regression methods. The result shows that the estimation accuracy from multiple regression with optical features (coniferous forest: R2=0.483, RMSE=29.522 t/hm2; broad-leaved forest: R2=0.470, RMSE=21.632 t/hm2; mixed forest: R2=0.351, RSME=25.253 t/hm2) is higher than that from multiple regression with SAR features (coniferous forest: R2=0.319, RMSE=28.352 t/hm2; broad-leaved forest: R2=0.353, RMSE=18.991 t/hm2; mixed forest: R2=0.281, RMSE=26.637 t/hm2), suggesting the indirect above-ground biomass estimation from multivariate regression with optical information is more suitable than direct above-ground estimation from multivariate regression with SAR information in Fujian Province.

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