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A two-step nearest neighbors algorithm using satellite imagery for predicting forest structure within species composition classes

机译:利用卫星图像的两步最近邻算法在物种组成类别内预测森林结构

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Nearest neighbors techniques have been shown to be useful for predicting multiple forest attributes from forest inventory and Landsat satellite image data. However, in regions lacking good digital land cover information. nearest neighbors selected to predict continuous variables such as tree volume must be selected without regard to relevant categorical variables such as foreston-forest. The result is that non-zero volume predictions may be obtained for pixels predicted to be non-forest, and volume predictions for pixels predicted to be forest may be erroneously small due to non-forest nearest neighbors. For users who wish to circumvent this discrepancy, a two-step algorithm is proposed in which the class of a relevant categorical variable such as land cover is predicted in the first step. and continuous variables such as volume are predicted in the second step subject to the constraint that all nearest neighbors must come from the predicted class of the categorical variable. Nearest neighbors, multinomial logistic regression, and discriminant analysis techniques were investigated for use in the first step. The results were generally similar for the three techniques, although the multinomial logistic regression technique was slightly superior. The k-Nearest Neighbors technique was used in the second step because many continuous forest inventory variables do not satisfy the distributional assumptions necessary for parametric multivariate techniques. The results for six 15-km x 15-km areas of interest in northern Minnesota, USA, indicate that areal estimates of tree volume, basal area, and density obtained from pixel predictions are comparable to plot-based estimates and estimates by conifer and deciduous classes are also comparable to plot-based estimates. When a mixed conifer/deciduous class was included, predictions for the mixed and deciduous class were confused.
机译:最近的邻居技术已被证明可用于从森林资源和Landsat卫星图像数据中预测多个森林属性。但是,在缺乏良好的数字土地覆盖信息的地区。必须选择被选择来预测连续变量(例如树木数量)的最近邻居,而不考虑相关的分类变量(例如森林/非森林)。结果是对于预测为非森林的像素可以获得非零的体积预测,并且由于非森林最近的邻居,对于预测为森林的像素的体积预测可能错误地小。对于希望避免这种差异的用户,提出了一种两步算法,其中在第一步中预测了相关分类变量(如土地覆盖)的类别。并在第二步中对连续变量(例如体积)进行了预测,但要遵循以下约束:所有最近的邻居都必须来自分类变量的预测类。在第一步中研究了最近的邻居,多项式逻辑回归和判别分析技术。尽管多项式逻辑回归技术略胜一筹,但三种技术的结果通常相似。第二步中使用了k最近邻技术,因为许多连续的森林清查变量不满足参数多元技术所必需的分布假设。在美国明尼苏达州北部的六个15 km x 15 km感兴趣的区域的结果表明,从像素预测获得的树木体积,基础面积和密度的面积估计值与基于图的估计值以及针叶树和落叶估计值的估计值相当类别也可与基于情节的估计进行比较。当包括针叶树/落叶树类的混合类时,对于混合和落叶树类的预测是混乱的。

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