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Comparison of the utility of regression analysis and k-nearest neighbor technique to estimate above-ground biomass in pine forests using Landsat ETM+ imagery.

机译:使用Landsat ETM +图像进行回归分析和k最近邻技术估算松树林地上生物量的效用进行比较。

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摘要

There is a lack of precise and universally accepted approach in the quantification of carbon sequestered in aboveground woody biomass using remotely sensed data. Drafting of the Kyoto Protocol has made the subject of carbon sequestration more important, making the development of accurate and cost-effective remote sensing models a necessity. There has been much work done in estimating aboveground woody biomass from spectral data using the traditional multiple linear regression analysis approach and the Finnish k-nearest neighbor approach, but the accuracy of these methods to estimate biomass has not been compared. The purpose of this study is to compare the ability of these two methods in estimating above ground biomass (AGB) using spectral data derived from Landsat ETM+ imagery.
机译:在利用遥感数据定量分析地上木质生物量中固存的碳时,缺乏精确的和普遍接受的方法。 《京都议定书》的起草使碳固存这一主题变得更加重要,因此有必要开发精确且具成本效益的遥感模型。在使用传统的多元线性回归分析方法和芬兰k近邻方法从光谱数据估算地上木质生物量方面,已经进行了很多工作,但是尚未比较这些方法估算生物量的准确性。这项研究的目的是使用从Landsat ETM +影像获得的光谱数据,比较这两种方法估算地上生物量(AGB)的能力。

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