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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Determining forest species composition using high spectral resolution remote sensing data
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Determining forest species composition using high spectral resolution remote sensing data

机译:使用高光谱分辨率遥感数据确定森林物种组成

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Airborne hyperspectral data were analyzed for the classification of 11 forest cover types, including pure and mixed stands of deciduous and conifer species. Selected bands from first difference reflectance spectra were used to determine cover type at the Harvard Forest using a maximum likelihood algorithm assigning all pixels in the image into one of the 11 categories. This approach combines species specific chemical characteristics and previously derived relationships between hyperspectral data and foliar chemistry. Field data utilized for validation of the classification included both a stand-level survey of stem diameter, and field measurements of plot level foliar biomass. A random selection of validation pixels yielded an overall classification accuracy of 75%. (C)Elsevier Science Inc., 1998 [References: 28]
机译:分析了航空高光谱数据,对11种森林覆盖类型进行了分类,包括落叶和针叶树种的纯林和混交林。使用最大似然算法,将从第一差异反射光谱中选择的波段用于确定哈佛森林的覆盖类型,该算法将图像中的所有像素分配为11个类别之一。这种方法结合了物种特定的化学特性以及先前在高光谱数据和叶化学之间得出的关系。用于验证分类的田间数据包括对茎径的标准调查和对田间叶生物量的田间测量。验证像素的随机选择产生了75%的总体分类精度。 (C)Elsevier Science Inc.,1998年[参考文献:28]

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