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首页> 外文期刊>Ecological Complexity >Interactions between landcover pattern and geospatial processing methods: Effects on landscape metrics and classification accuracy
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Interactions between landcover pattern and geospatial processing methods: Effects on landscape metrics and classification accuracy

机译:土地覆盖格局与地理空间处理方法之间的相互作用:对景观指标和分类准确性的影响

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摘要

Remote sensing data is routinely used in ecology to investigate the relationship between landscape pattern as characterised by land use and land cover maps, and ecological processes. Multiple factors related to the representation of geographic phenomenon have been shown to affect characterisation of landscape pattern resulting in spatial uncertainty. This study investigated the effect of the interaction between landscape spatial pattern and geospatial processing methods statistically; unlike most papers which consider the effect of each factor in isolation only. This is important since data used to calculate landscape metrics typically undergo a series of data abstraction processing tasks and are rarely performed in isolation. The geospatial processing methods tested were the aggregation method and the choice of pixel size used to aggregate data. These were compared to two components of landscape pattern, spatial heterogeneity and the proportion of landcover class area. The interactions and their effect on the final landcover map were described using landscape metrics to measure landscape pattern and classification accuracy (response variables). All landscape metrics and classification accuracy were shown to be affected by both landscape pattern and by processing methods. Large variability in the response of those variables and interactions between the explanatory variables were observed. However, even though interactions occurred, this only affected the magnitude of the difference in landscape metric values. Thus, provided that the same processing methods are used, landscapes should retain their ranking when their landscape metrics are compared. For example, highly fragmented landscapes will always have larger values for the landscape metric "number of patches" than less fragmented landscapes. But the magnitude of difference between the landscapes may change and therefore absolute values of landscape metrics may need to be interpreted with caution. The explanatory variables which had the largest effects were spatial heterogeneity and pixel size. These explanatory variables tended to result in large main effects and large interactions. The high variability in the response variables and the interaction of the explanatory variables indicate it would be difficult to make generalisations about the impact of processing on landscape pattern as only two processing methods were tested and it is likely that untested processing methods will potentially result in even greater spatial uncertainty.
机译:遥感数据通常用于生态学,以调查以土地利用和土地覆盖图为特征的景观格局与生态过程之间的关系。与地理现象表示有关的多种因素已显示出影响景观格局的特征,从而导致空间不确定性。本研究以统计学方式调查了景观空间格局与地理空间处理方法之间相互作用的影响。与大多数只考虑每个因素的影响的论文不同。这很重要,因为用于计算景观指标的数据通常会经历一系列数据抽象处理任务,并且很少单独执行。测试的地理空间处理方法是聚合方法和用于聚合数据的像素大小的选择。将这些与景观格局的两个组成部分,空间异质性和土地覆盖类别面积的比例进行了比较。使用景观度量来描述景观之间的相互作用及其对最终土地覆盖图的影响,以测量景观格局和分类准确性(响应变量)。研究表明,所有景观指标和分类准确性均受景观模式和处理方法的影响。观察到这些变量的响应和解释变量之间的相互作用存在很大的差异。但是,即使发生交互,也仅影响景观度量值差异的大小。因此,如果使用相同的处理方法,则在比较景观指标时,景观应保留其排名。例如,高度零散的景观将比零碎的景观具有更大的景观度量“地块数量”值。但是,景观之间差异的大小可能会发生变化,因此景观指标的绝对值可能需要谨慎解释。影响最大的解释变量是空间异质性和像素大小。这些解释性变量往往会导致较大的主要影响和较大的相互作用。响应变量的高变异性和解释变量的相互作用表明,由于仅对两种处理方法进行了测试,因此很难对处理对景观格局的影响进行概括,并且未经测试的处理方法可能甚至导致更大的空间不确定性。

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