首页> 外文期刊>GIScience & remote sensing >Spatially Explicit Estimation of Leaf Area Index Using EO-1 Hyperion and Landsat ETM+ Data: Implications of Spectral Bandwidth and Shortwave Infrared Data on Prediction Accuracy in a Tropical Montane Environment
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Spatially Explicit Estimation of Leaf Area Index Using EO-1 Hyperion and Landsat ETM+ Data: Implications of Spectral Bandwidth and Shortwave Infrared Data on Prediction Accuracy in a Tropical Montane Environment

机译:使用EO-1 Hyperion和Landsat ETM +数据进行叶面积指数的空间显式估计:光谱带宽和短波红外数据对热带山地环境预测精度的影响

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摘要

This study evaluated the utility of narrowband (EO-1 Hyperion) and broadband (Landsat ETM+) remote sensing data for the estimation of leaf area index (LAI) in a tropical environment in Sulawesi, Indonesia. LAI was inferred from canopy gap fraction measurements taken in natural tropical forest and cocoa plantations. Single and multiple spectral bands and spectral indices were used as predictor variables in reduced major axis (RMA) and ordinary least squares (OLS) regression models. The predictive power of most regression models was notably higher when employing narrowband data instead of broadband data. Highly significant relationships between LAI and spectral reflectance were observed near the red-edge region and in most shortwave infrared (SWIR) bands. In contrast to most near-infrared (NIR) narrow bands, the correlation between SWIR reflectance and LAI was not confounded when including both vegetation types and did not suffer from saturation. The results demonstrate that leaf area index of a challenging tropical environment can be estimated with satisfactory accuracy from hyperspectral remote sensing data.
机译:这项研究评估了印度尼西亚苏拉威西岛热带环境中窄带(EO-1 Hyperion)和宽带(Landsat ETM +)遥感数据在估计叶面积指数(LAI)方面的实用性。 LAI是根据在天然热带森林和可可种植园中测得的冠层间隙分数得出的。在简化的主轴(RMA)和普通最小二乘(OLS)回归模型中,将单个和多个光谱带和光谱指数用作预测变量。当采用窄带数据而不是宽带数据时,大多数回归模型的预测能力明显更高。在红边区域附近和大多数短波红外(SWIR)波段中,观察到LAI与光谱反射率之间的高度显着关系。与大多数近红外(NIR)窄带相反,当同时包括两种植被类型且不遭受饱和时,SWIR反射率与LAI之间的相关性不会混淆。结果表明,可以根据高光谱遥感数据以令人满意的精度估算具有挑战性的热带环境的叶面积指数。

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