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Predicting Tropical Dry Forest Successional Attributes from Space: Is the Key Hidden in Image Texture?

机译:从空间预测热带干旱森林演替的属性:是关键隐藏在图像纹理?

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摘要

Biodiversity conservation and ecosystem-service provision will increasingly depend on the existence of secondary vegetation. Our success in achieving these goals will be determined by our ability to accurately estimate the structure and diversity of such communities at broad geographic scales. We examined whether the texture (the spatial variation of the image elements) of very high-resolution satellite imagery can be used for this purpose. In 14 fallows of different ages and one mature forest stand in a seasonally dry tropical forest landscape, we estimated basal area, canopy cover, stem density, species richness, Shannon index, Simpson index, and canopy height. The first six attributes were also estimated for a subset comprising the tallest plants. We calculated 40 texture variables based on the red and the near infrared bands, and EVI and NDVI, and selected the best-fit linear models describing each vegetation attribute based on them. Basal area (R 2 = 0.93), vegetation height and cover (0.89), species richness (0.87), and stand age (0.85) were the best-described attributes by two-variable models. Cross validation showed that these models had a high predictive power, and most estimated vegetation attributes were highly accurate. The success of this simple method (a single image was used and the models were linear and included very few variables) rests on the principle that image texture reflects the internal heterogeneity of successional vegetation at the proper scale. The vegetation attributes best predicted by texture are relevant in the face of two of the gravest threats to biosphere integrity: climate change and biodiversity loss. By providing reliable basal area and fallow-age estimates, image-texture analysis allows for the assessment of carbon sequestration and diversity loss rates. New and exciting research avenues open by simplifying the analysis of the extent and complexity of successional vegetation through the spatial variation of its spectral information.
机译:生物多样性保护和生态系统 - 服务条款越来越多地取决于次要植被的存在。我们在实现这些目标方面取得的成功将通过我们准确估计广泛地理尺度这些社区的结构和多样性的能力来确定。我们检查了非常高分辨率卫星图像的纹理(图像元素的空间变化)是否可用于此目的。在14岁的不同年龄和一个成熟的森林中,在季节性干燥的热带森林景观中,我们估计基底面积,冠层,茎密度,物种丰富,香农指数,辛普森指数和冠层高度。还估计了包含最高植物的子集的前六个属性。我们基于红色和近红外频带和EVI和NDVI计算了40个纹理变量,并选择了基于它们的每个植被属性的最佳拟合线性模型。基底面积(R 2 = 0.93),植被高度和盖子(0.89),物种丰富度(0.87),并且代价(0.85)是由两个变量模型的最佳描述的属性。交叉验证表明,这些模型具有高预测力,大多数估计的植被属性都是高度准确的。这种简单方法的成功(使用单个图像,模型是线性的,包括很少的变量)基于图像纹理在适当的规模处反映了连续植被的内部异质性的原理上。植被属性最佳纹理预测在面对对生物圈完整性的两种最严重威胁中:气候变化和生物多样性损失。通过提供可靠的基础区域和休耕期估计,图像纹理分析允许评估碳封存和多样性损失率。通过简化通过其光谱信息的空间变化来简化连续植被的程度和复杂性的新的和令人兴奋的研究途径。

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