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首页> 外文期刊>Forest Ecology and Management >A nearest-neighbor imputation approach to mapping tree species over large areas using forest inventory plots and moderate resolution raster data.
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A nearest-neighbor imputation approach to mapping tree species over large areas using forest inventory plots and moderate resolution raster data.

机译:最近邻插补方法,使用森林清单图和中等分辨率栅格数据在大面积上绘制树种。

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摘要

The paper describes an efficient approach for mapping multiple individual tree species over large spatial domains. The method integrates vegetation phenology derived from MODIS imagery and raster data describing relevant environmental parameters with extensive field plot data of tree species basal area to create maps of tree species abundance and distribution at a 250-m pixel size for the entire eastern contiguous United States. The approach uses the modeling techniques of k-nearest neighbors and canonical correspondence analysis, where model predictions are calculated using a weighting of nearest neighbors based on proximity in a feature space derived from the model. The approach also utilizes a stratification derived from the 2001 National Land-Cover Database tree canopy cover layer. Data pre-processing is also described, which includes the use of Fourier series transformation for data reduction and characterizing seasonal vegetation phenology patterns that are apparent in the MODIS imagery. A suite of assessment procedures is applied to each of the modeled dataset presented. These indicate high accuracies, at the scales of assessments used, for total live-tree basal area per hectare and for many of the most common tree species found in the study area. The end result is an approach that enables the mapping of individual tree species distributions, while retaining much of the species covariance found on the forest inventory plots, at a level of spatial detail approaching that required for many regional management and planning applications. The proposed approach has the potential for operational application for simultaneously mapping the distribution and abundance of numerous common tree species across large spatial domains.
机译:本文介绍了一种在大型空间域上映射多个树种的有效方法。该方法将源自描述相关环境参数的MODIS影像和栅格数据的植被物候与树种基础区域的广泛野外绘图数据相结合,以创建整个美国东部连续体的树种丰度和分布图(250像素大小)。该方法使用k最近邻的建模技术和规范对应分析,其中使用基于从模型得出的特征空间中的邻近度,使用最近邻的加权来计算模型预测。该方法还利用了从2001年国家土地覆盖数据库的树冠覆盖层得出的分层。还描述了数据预处理,包括使用傅里叶级数变换进行数据缩减和表征在MODIS影像中显而易见的季节性植被物候模式。一套评估程序适用于所显示的每个建模数据集。这些表明在所使用的评估范围内,每公顷活树总基础面积以及研究区域内发现的许多最常见树种的准确度很高。最终结果是一种方法,该方法能够绘制单个树种的分布图,同时保留在森林清单上发现的许多树种协方差,并且其空间细节层次接近许多区域管理和规划应用程序所要求的水平。所提出的方法具有用于在大型空间域中同时映射许多常见树种的分布和丰度的操作应用的潜力。

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