Wang Li-Juan, Niu Zheng, Hou Xue-Hui, Gao Shuai
The State Key Laboratory of Remote Sensing Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing 100101, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2013 Apr;33(4):1082-6.
Leaf area index (LAI) is an important structural parameter of vegetation canopy, the correct estimation of which has been the focus in the remote sensing community. As a kind of hyperspectral and multi-angle remote sensing data with higher resolution (17 m), PROBA/CHRIS has significant application value in LAI inversion. In the present paper, the analytical two-layer canopy reflectance model (ACRM) was used to simulate a series of reflectances with different LAI values. Based on this, a new vegetation index was built and successfully applied to LAI inversion of PROBA/CHRIS image data. Our results indicated that: compared with the spectral index NDVI and multi-angle index HDS, the new index could make better use of spectrum and multi-angle messages and have a better correlation with LAI of the study area; moreover, the correlation coefficient R2 reached up to 0.734 7. And in order to obtain the figure of LAI distribution of the study area, we used the optimal fit equation between LAI and HDVI to estimate LAI, and the accuracy of the RMSE was 0.619 8.
叶面积指数(LAI)是植被冠层的一个重要结构参数,对其进行准确估算一直是遥感领域的研究重点。作为一种具有较高分辨率(17米)的高光谱多角度遥感数据,PROBA/CHRIS在LAI反演方面具有重要应用价值。本文利用解析两层冠层反射率模型(ACRM)模拟了一系列不同LAI值的反射率。在此基础上,构建了一种新的植被指数,并成功应用于PROBA/CHRIS影像数据的LAI反演。结果表明:与光谱指数NDVI和多角度指数HDS相比,新指数能更好地利用光谱和多角度信息,与研究区域的LAI具有更好的相关性;此外,相关系数R2高达0.734 7。为获取研究区域的LAI分布图,利用LAI与HDVI之间的最优拟合方程估算LAI,均方根误差(RMSE)精度为0.619 8。