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基于MISR数据大兴安岭地区叶面积指数反演及尺度转换验证研究

温一博 常颖 范文义

北京林业大学学报2016,Vol.38Issue(5):1-10,10.
北京林业大学学报2016,Vol.38Issue(5):1-10,10.DOI:10.13332/j.1000--1522.20150204

基于MISR数据大兴安岭地区叶面积指数反演及尺度转换验证研究

Algorithm for leaf area index inversion in the Great Xing' an Mountains using MISR data and spatial scaling for the validation

温一博 1常颖 1范文义1

作者信息

  • 1. 东北林业大学林学院
  • 折叠

摘要

Abstract

Leaf Area Index ( LAI) is an important parameter of vegetation canopy structure in the research of climate and ecology. Remote sensing technology provides an effective method for rapid acquisition of large-area leaf area index. The Great Xing' an Mountains are an important ecological function area of China, where the present study was conducted. According to the different forest characteristics, we used 4-scale geometrical optics model based on physical process. Simultaneously, we used the multi-perspectives MISR remote sensing data to inverse the leaf area index of this region. Geometrical optics model characterized by parameters have physical significance which considers the hot-spot effect of the ground reflection, and modelling inversion process is independent on sample data, suitable for inversion in a large area. The MISR remote sensing data provide multiple perspectives in the same region, which effectively address the question that LAI can only be observed at a single angle and the question of low level saturation point in the LAI function relationship. Because the scale of ground validation data cannot meet the spatial resolution requirement of the MISR data, TM data were used to scale transformation for plot-measured leaf area index data. We analyzed the heterogeneity of LAI in different slopes and discussed the validation data rationality at different spatial resolutions. Our study shows that the validation data at a 600 m spatial resolution can obtain optimal inversion result of MISR data, and at such a resolution , the change of LAI with spatial scale tends to stabilize and successfully avoids the error caused by the geometric registration of the two remote sensing data. The results of our study showed that:4-scale geometry model is suitable for LAI inversion in the Great Xing ' an Mountains, MISR-inversed mean absolute error of LAI is 25. 6% and RMSE ( the root-mean-square error ) is 0. 622 . This research provides foundation for rapid, quantitative inversion of LAI in the Great Xing' an Mountains.

关键词

叶面积指数/多角度遥感/几何光学模型/查找表法/尺度转换

Key words

leaf area index/multi-angle remote sensing/geometrical optical model/look-up table/scale transformation

分类

农业科技

引用本文复制引用

温一博,常颖,范文义..基于MISR数据大兴安岭地区叶面积指数反演及尺度转换验证研究[J].北京林业大学学报,2016,38(5):1-10,10.

基金项目

“十二五”国家科技支撑计划项目(2011BAD08B01)、中央高校基本科研业务费专项(2572014AA37)。 (2011BAD08B01)

北京林业大学学报

OA北大核心CSCDCSTPCD

1000-1522

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