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首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Estimating Urban Leaf Area Index (LAI) of Individual Trees with Hyperspectral Data
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Estimating Urban Leaf Area Index (LAI) of Individual Trees with Hyperspectral Data

机译:利用高光谱数据估算单棵树的城市叶面积指数(LAI)

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摘要

This study estimated leaf area index (LAI) of individual urban trees as a function of spectral features derived from airborne hyperspectral data Candidate features in spectral indexes, principal components, and calibrated reflectance values. Hyperspectral images were acquired over Provo, Utah area, and LAI of 204 deciduous trees was measured in the field. These tree canopies were identified on the images, and spectral features were extracted using both whole canopy and mean-lit spectra techniques. Multiple regression and artificial neural networks were used to model leaf area and determine which spectral features were most strongly related to it. Results established that simple hyperspectral vegetation indexes explained more variation in urban tree LAI than either principal component scores or simple band reflectance values. The neural network model trained with a subset of those indexes explained more variation in LAI (R-2 = 64.8 percent) than any of the multiple regression models tested.
机译:这项研究根据从航空高光谱数据得出的光谱特征,光谱指数,主成分和校准反射率值中的候选特征,估计了各城市树木的叶面积指数(LAI)。在犹他州普罗沃地区采集了高光谱图像,并在野外测量了204棵落叶树的LAI。在图像上识别出这些树冠,并使用整个树冠和均光光谱技术提取光谱特征。使用多元回归和人工神经网络对叶面积进行建模,并确定哪些光谱特征与其最相关。结果表明,简单的高光谱植被指数比城市主成分得分或简单的波段反射率值更能解释城市树木LAI的变化。用这些指标的子集训练的神经网络模型说明了LAI的变化(R-2 = 64.8%)比所测试的多个回归模型中的任何一个都更大。

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