首页> 外文期刊>Remote Sensing >Retrieval of Leaf Area Index (LAI) and Soil Water Content (WC) Using Hyperspectral Remote Sensing under Controlled Glass House Conditions for Spring Barley and Sugar Beet
【24h】

Retrieval of Leaf Area Index (LAI) and Soil Water Content (WC) Using Hyperspectral Remote Sensing under Controlled Glass House Conditions for Spring Barley and Sugar Beet

机译:春季大麦和甜菜在受控玻璃房条件下利用高光谱遥感反演叶面积指数(LAI)和土壤水分(WC)

获取原文
           

摘要

Leaf area index (LAI) and water content (WC) in the root zone are two major hydro-meteorological parameters that exhibit a dominant control on water, energy and carbon fluxes, and are therefore important for any regional eco-hydrological or climatological study. To investigate the potential for retrieving these parameter from hyperspectral remote sensing, we have investigated plant spectral reflectance (400–2,500 nm, ASD FieldSpec3) for two major agricultural crops (sugar beet and spring barley) in the mid-latitudes, treated under different water and nitrogen (N) conditions in a greenhouse experiment over the growing period of 2008. Along with the spectral response, we have measured soil water content and LAI for 15 intensive measurement campaigns spread over the growing season and could demonstrate a significant response of plant reflectance characteristics to variations in water content and nutrient conditions. Linear and non-linear dimensionality analysis suggests that the full band reflectance information is well represented by the set of 28 vegetation spectral indices (SI) and most of the variance is explained by three to a maximum of eight variables. Investigation of linear dependencies between LAI and soil WC and pre-selected SI’s indicate that: (1) linear regression using single SI is not sufficient to describe plant/soil variables over the range of experimental conditions, however, some improvement can be seen knowing crop species beforehand; (2) the improvement is superior when applying multiple linear regression using three explanatory SI’s approach. In addition to linear investigations, we applied the non-linear CART (Classification and Regression Trees) technique, which finally did not show the potential for any improvement in the retrieval process.
机译:根区的叶面积指数(LAI)和含水量(WC)是两个主要的水文气象参数,对水,能量和碳通量表现出控制作用,因此对任何区域生态水文或气候学研究都至关重要。为了研究从高光谱遥感中检索这些参数的潜力,我们研究了中纬度下两种主要农作物(甜菜和大麦)在不同水处理下的植物光谱反射率(400–2,500 nm,ASD FieldSpec3)。和氮(N)条件在2008年整个生育期的温室试验中。除光谱响应外,我们还测量了整个生长期分布的15个密集测量活动的土壤含水量和LAI,可以证明植物反射率具有显着响应水分和养分状况变化的特征。线性和非线性维数分析表明,全波段反射率信息可以通过28个植被光谱指数(SI)的集合很好地表示,并且大多数方差可以由3个变量解释为最多8个变量。对LAI与土壤WC和预先选择的SI之间的线性相关性的研究表明:(1)使用单个SI的线性回归不足以描述实验条件范围内的植物/土壤变量,但是,了解作物可以看到一些改进事先种; (2)使用三种解释性SI方法应用多元线性回归时,改进效果更好。除了线性研究之外,我们还应用了非线性CART(分类树和回归树)技术,该技术最终并未显示出在检索过程中进行任何改进的潜力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号