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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >The k-MSN method for the prediction of species-specific stand attributes using airborne laser scanning and aerial photographs
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The k-MSN method for the prediction of species-specific stand attributes using airborne laser scanning and aerial photographs

机译:用机载激光扫描和航拍照片预测物种特有林分属性的k-MSN方法

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Various studies have been presented within the last 10 years on the possibilities for predicting forest variables such as stand volume and mean height by means of airborne laser scanning (ALS) data. These have usually considered tree stock as a whole, even though it is tree species-specific forest information that is of primary interest in Finland, for example. We will therefore concentrate here on prediction of the species-specific forest variables volume, stem number, basal area, basal area median diameter and tree height, applying the non-parametric k-MSN method to a combination of ALS data and aerial photographs in order to predict these stand attributes simultaneously for Scots pine, Norway spruce and deciduous trees as well as total characteristics as sums of the species-specific estimates. The predictor variables derived from the ALS data were based on the height distribution of vegetation hits, whereas spectral values and texture features were employed in the case of the aerial photographs. The data covered 463 sample plots in 67 stands in eastern Finland, and the results showed that this approach can be used to predict species-specific forest variables at least as accurately as from the current stand-level field inventory for Finland. The characteristics of Scots pine and Norway spruce were predicted more accurately than those of deciduous trees.
机译:在过去的十年中,已经进行了各种研究,以通过机载激光扫描(ALS)数据预测森林变量,例如林分体积和平均高度。尽管例如,特定树种的森林信息是芬兰的头等大事,但这些通常都从整体上考虑了树木种群。因此,我们将集中于预测特定物种的森林变量量,茎数,基础面积,基础面积中值直径和树高,并将非参数k-MSN方法按顺序应用于ALS数据和航拍照片为了同时预测苏格兰松,挪威云杉和落叶乔木的这些林分属性,以及作为特定物种估计值总和的总体特征。从ALS数据中得出的预测变量基于植被命中的高度分布,而航空照片则采用光谱值和纹理特征。数据涵盖了芬兰东部67个林分的463个样地,结果表明,这种方法至少可以像从芬兰目前的林地实地调查中一样准确地预测特定物种的森林变量。苏格兰松和挪威云杉的特征比落叶乔木的特征更准确。

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