Influence of land cover data on regional forest leaf area index inversion[J]. Journal of Remote Sensing, 2010,14(5):974-989. DOI: 10.11834/jrs.20100511.
six different land cover datasets were employed in conjunction with MODIS 1km reflectance data to inverse LAI of forests using an algorithm based on the 4-scale geometrical optical model in Jian City
Jiangxi Province
China. Land cover datasets used in this study include five global land cover datasets (Three were produced by the United States Geo-logical Survey (USGS)
University of Maryland (UMD)
and Boston University (BU)
respectively. Two were constructed in Europe.) and a regional land cover map produced using Landsat TM images. For assessing the impact of land cover on the in-version of LAI
LAI images inversely produced with different land cover datasets were compared with LAI data sampled from a 30 m LAI map at 1 km and 4 km scales
respectively. The 30 m LAI map was produced with TM reflectance images and ground measurements of LAI. The results show that the land cover datasets of TM and GLOBCOVER which was created by European Space Agency are the best for the inversion of LAI in this study area. At 1 km scale
the R2 values of LAI inversed using TM and GLOBCOVER land cover datasets with TM LAI estimated using an statistical model are 0.44 and 0.40
respectively. At 4 km scale
these R2 values increase to 0.57 and 0.54. The MODIS land cover data of BU is the third best data for the inversion of LAI
the R2 values between LAI inversed using this land cover dataset and TM LAI are 0.38 and 0.51 at 1 km and 4 km scales
respectively. The land cover datasets of UMD and European GLC2000 resulted in large discrepancies between inversed LAI and TM LAI. The averages of LAI inversed using these two land cover datasets are about 20% lower than TM LAI at 1 km and 4 km scales. Sensitivity analysis shows that inversed LAI is sensitive to clumping index. This study proved that reliable land cover data is required for improving the accuracy of inversed LAI at regional/global scales.
关键词
叶面积指数地表覆盖四尺模型反演精度
Keywords
leaf area indexland cover data4-scale modelaccuracy of inversion