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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Aerial image texture information in the estimation of northern deciduous and mixed wood forest leaf area index (LAI)
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Aerial image texture information in the estimation of northern deciduous and mixed wood forest leaf area index (LAI)

机译:北方落叶和混交林叶面积指数(LAI)估算中的航空影像纹理信息

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Leaf area index (LAI) currently may be derived from remotely sensed data with limited accuracy. This research addresses the need for increased accuracy in the estimation of LAI through integration of texture to the relationship between LAI and vegetation indices. The inclusion of texture, which acts as a surrogate for forest structure, to the relationship between LAI and the normalized difference vegetation index (NDVI) increased the accuracy of modeled LAI estimates. First-order, second-order, and a newly developed semivariance moment texture are assessed in the relationship with LAI. The ability to increase the accuracy of LAI estimates was demonstrated over a range of forest species, densities, closures, tolerances, and successional regimes. Initial assessment of LAI from spectral response over the full range of stand types demonstrated the need for stratification by stand type prior to analysis. Stratification of the stands based upon species types yields an improvement in the regression relationships. For example, deciduous hardwood stands, spanning an LAI range from approximate to 1.5 to 7, have a moderate initial bivariate relationship between LAI and NDVI at an r(2) of 0.42. Inclusion of additional texture statistics to the multivariate relationship between LAI and NDVI further increases the amount of variation accounted for, to an R-2 of 0.61, which represents an increase in ability to estimate hardwood forest LAI from remotely sensed imagery by approximately 20% with the inclusion of texture. Mixed forest stands, which are spectrally diverse, had an insignificant initial r(2) of 0.01 between LAI and NDVI, which improved to a significant R-2 of 0.44 with the inclusion of semivariance moment texture. (C) Elsevier Science Inc., 1998. [References: 73]
机译:当前,叶面积指数(LAI)可能以有限的精度从遥感数据中得出。这项研究解决了通过将纹理整合到LAI与植被指数之间的关系来提高LAI估算准确性的需求。 LAI与归一化差异植被指数(NDVI)之间的关系包括作为森林结构替代物的纹理,从而提高了模型LAI估算的准确性。一阶,二阶和新开发的半方差矩纹理在与LAI的关系中进行了评估。在一系列森林物种,密度,封闭性,容忍度和演替制度下,证明了提高LAI估算准确性的能力。根据整个林分类型范围的光谱响应对LAI进行的初步评估表明,在分析之前需要对林分类型进行分层。根据物种类型对林分进行分层可以改善回归关系。例如,落叶阔叶林站在LAI范围从大约1.5到7,在LAI和NDVI之间具有中等的初始二元关系,r(2)为0.42。在LAI和NDVI之间的多变量关系中包括其他纹理统计信息,进一步增加了所占的变化量,R-2为0.61,这表示从遥感图像估计硬木林LAI的能力提高了约20%。包含纹理。谱系多样的混合林林分,在LAI和NDVI之间的初始r(2)无关紧要为0.01,在包含半方差矩纹理的情况下,其显着R-2为0.44。 (C)Elsevier Science Inc.,1998年。[参考:73]

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