Jin Z, Tian Q, Chen J M, Chen M
International Institute for Earth System Science, Nanjing University, Nanjing 210093, China.
J Environ Manage. 2007 Nov;85(3):628-37. doi: 10.1016/j.jenvman.2006.08.016. Epub 2006 Nov 22.
We developed algorithms for spatial scaling of leaf area index (LAI) using sub-pixel information. The study area is located near Liping County, Guizhou Province, in China. Methods for LAI spatial scaling were investigated on LAI images with 960 m resolution derived in two ways. LAI from distributed calculation (LAID) was derived using Landsat ETM+ data (30 m), and LAI from lumped calculation (LAIL) was obtained from the coarse (960 m) resolution data derived through resampling the ETM+ data. We found that lumped calculations can be considerably biased compared to the distributed (ETM+) case, suggesting that global and regional LAI maps can be biased if surface heterogeneity within the mapping resolution is ignored. Based on these results, we developed algorithms for removing the biases in lumped LAI maps using sub-pixel land cover-type information, and applied these to correct one coarse resolution LAI product which greatly improved its accuracy.
我们利用亚像素信息开发了叶面积指数(LAI)空间尺度转换算法。研究区域位于中国贵州省黎平县附近。以两种方式获取的960米分辨率的LAI图像上研究了LAI空间尺度转换方法。分布式计算得到的LAI(LAID)是利用陆地卫星ETM+数据(30米)得出的,集中式计算得到的LAI(LAIL)是通过对ETM+数据重采样得到的粗分辨率(960米)数据获得的。我们发现,与分布式(ETM+)情况相比,集中式计算可能存在相当大的偏差,这表明如果忽略制图分辨率内的地表异质性,全球和区域LAI地图可能会有偏差。基于这些结果,我们开发了利用亚像素土地覆盖类型信息消除集中式LAI地图偏差的算法,并将其应用于校正一个粗分辨率LAI产品,这大大提高了其精度。