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Modeling broad-scale patterns of avian species richness across the Midwestern United States with measures of satellite image texture

机译:利用卫星图像纹理对美国中西部地区鸟类物种丰富度的大规模模式进行建模

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摘要

Avian biodiversity is threatened, and in order to prioritize limited conservation resources and conduct effective conservation planning a better understanding of avian species richness patterns is needed. The use of image texture measures, as a proxy for the spatial structure of land cover and vegetation, has proven useful in explaining patterns of avian abundance and species richness. However, prior studies that modeled habitat with texture measures were conducted over small geographical extents and typically focused on a single habitat type. Our goal was to evaluate the performance of texture measures over broad spatial extents and across multiple habitat types with varying levels of vertical habitat structure. We calculated a suite of texture measures from 114 Landsat images over a study area of 1,498,000km ~2 in the Midwestern United States, which included habitats ranging from grassland to forest. Avian species richness was modeled for several functional guilds as a function of image texture. We subsequently compared the explanatory power of texture-only models with models fitted using landscape composition metrics derived from the National Land Cover Dataset, as well as models fitted using both texture and composition metrics. Measures of image texture were effective in modeling spatial patterns of avian species richness in multiple habitat types, explaining up to 51% of the variability in species richness of permanent resident birds. In comparison, landscape composition metrics explained up to 56% of the variability in permanent resident species richness. In the most heavily forested ecoregion, texture-measures outperformed landscape metrics, and the two types of measurements were complementary in multivariate models. However, in two out of three ecoregions examined, landscape composition metrics consistently performed slightly better than texture measures, and the variance explained by the two types of measures overlapped considerably. These results show that image texture measures derived from satellite imagery can be an important tool for modeling patterns of avian species richness at broad spatial extents, and thus assist in conservation planning. However, texture measures were slightly inferior to landscape composition metrics in about three-fourths of our models. Therefore texture measures are best considered in conjunction with landscape metrics (if available) and are best used when they show explanatory ability that is complementarity to landscape metrics.
机译:鸟类的生物多样性受到威胁,为了优先考虑有限的保护资源并进行有效的保护规划,需要对鸟类物种丰富度模式有更好的了解。事实证明,使用图像纹理量度来代替土地覆盖物和植被的空间结构对解释禽类丰度和物种丰富度的模式很有用。但是,先前的使用纹理度量对栖息地进行建模的研究是在较小的地理范围内进行的,并且通常专注于单一栖息地类型。我们的目标是评估质地测量在广阔的空间范围内以及在具有不同水平垂直生境结构的多种生境类型中的性能。我们在美国中西部1,498,000km〜2的研究区域中从114张Landsat图像中计算出一套纹理量度,其中包括从草地到森林的栖息地。禽类物种丰富度是针对几种功能行会建模的,作为图像纹理的函数。随后,我们将纯纹理模型的解释能力与使用从国家土地覆盖数据集获得的景观成分度量拟合的模型以及使用纹理和成分度量拟合的模型进行了比较。图像纹理的测量有效地模拟了多种生境类型中鸟类物种丰富度的空间格局,解释了高达51%的永久性居留鸟类物种丰富度的变异性。相比之下,景观组成指标可解释高达56%的永久居民物种丰富度的变异性。在森林最茂密的生态区中,纹理量度胜过景观量度,在多变量模型中两种类型的量度是互补的。但是,在检查的三个生态区域中,有两个区域的景观成分指标始终比纹理指标好一些,并且由两种类型的指标解释的方差有很大的重叠。这些结果表明,从卫星图像获得的图像纹理度量可以成为在广泛的空间范围内模拟鸟类物种丰富度模式的重要工具,从而有助于保护规划。但是,在我们模型的约四分之三中,纹理量度略低于景观成分量度。因此,纹理量度最好与景观量度(如果可用)结合使用,并且在显示与景观量度互补的解释能力时最好使用。

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