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Combining geostatistical models and remotely sensed data to improve tropical tree richness mapping

机译:结合地统计学模型和遥感数据以改善热带树木的丰富度制图

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摘要

Information on the spatial distribution and composition of biological communities is essential in designing effective strategies for biodiversity conservation and management. Reliable maps of species richness across the landscape can be useful tools for these purposes. Acquiring such information through traditional survey techniques is costly and logistically difficult. The kriging interpolation method has been widely used as an alternative to predict spatial distributions of species richness, as long as the data are spatially dependent. However, even when this requirement is met, researchers often have few sampled sites in relation to the area to be mapped. Remote sensing provides an inexpensive means to derive complete spatial coverage for large areas and can be extremely useful for estimating biodiversity. The aim of this study was to combine remotely sensed data with kriging estimates (hybrid procedures) to evaluate the possibility of improving the accuracy of tree species richness maps. We did this through the comparison of the predictive performance of three hybrid geostatistical procedures, based on tree species density recorded in 141 sampling quadrats: co-kriging (COK), kriging with external drift (KED), and regression kriging (RK). Reflectance values of spectral bands, computed NDVI and texture measurements of Landsat 7 TM imagery were used as ancillary variables in all methods. The R~2 values of the models increased from 0.35 for ordinary kriging to 0.41 for COK, and from 0.39 for simple regression estimates to 0.52 and 0.53 when using simple KED and RK, respectively. The R~2 values of the models also increased from 0.60 for multiple regression estimates to 0.62 and 0.66 when using multiple KED and RK, respectively. Overall, our results demonstrate that these procedures are capable of greatly improving estimation accuracy, with multivariate RK being clearly superior, because it produces the most accurate predictions, and because of its flexibility in modeling multivariate relationships between tree richness and remotely sensed data. We conclude that this is a valuable tool for guiding future efforts aimed at conservation and management of highly diverse tropical forests.
机译:关于生物群落空间分布和组成的信息对于设计有效的生物多样性保护和管理战略至关重要。可靠的跨地域物种丰富度地图可能是实现这些目的的有用工具。通过传统的调查技术获取此类信息既昂贵又后勤困难。克里格插值方法已被广泛用作预测物种丰富度的空间分布的一种替代方法,只要该数据在空间上是相关的即可。但是,即使满足了此要求,研究人员通常也很少与要映射的区域相关的采样点。遥感提供了一种廉价的手段来获得大面积的完整空间覆盖,并且对于估算生物多样性非常有用。这项研究的目的是将遥感数据与克里金估计(混合程序)结合起来,以评估提高树种​​丰富度图的准确性的可能性。我们通过比较三种混合地统计程序的预测性能来实现此目的,这些程序基于141个采样四边形中记录的树种密度:共同克里格(COK),带外部漂移的克里格(KED)和回归克里格(RK)。在所有方法中,将光谱带的反射率值,计算的NDVI和Landsat 7 TM影像的纹理测量值用作辅助变量。当使用简单的KED和RK时,模型的R〜2值从普通kriging的0.35增加到COK的0.41,从简单回归估计的0.39分别增加到0.52和0.53。当使用多个KED和RK时,模型的R〜2值也从多重回归估计的0.60分别增加到0.62和0.66。总体而言,我们的结果表明,这些程序能够极大地提高估计的准确性,其中多元RK显然具有优越性,因为它可以产生最准确的预测,并且因为它可以灵活地建模树木丰富度与遥感数据之间的多元关系。我们得出结论,这是指导未来旨在保护和管理高度多样的热带森林的工作的宝贵工具。

著录项

  • 来源
    《Ecological indicators》 |2011年第5期|p.1046-1056|共11页
  • 作者单位

    Centra de Investigation Cientifica de Yucatan AC, Unidad de Recursos Maturates, Calle 43 # 130, Colonia Chuburnd de Hidalgo, C.P. 97200, Merida, Yucatan, Mexico;

    Departamento de Ecologia y Recursos Naturales, Facultad de Ciencias, Universidad National Autdnoma de Mexico, Mexico 04510, D.F., Mexico;

    Departamento de Ecologia y Recursos Naturales, Facultad de Ciencias, Universidad National Autdnoma de Mexico, Mexico 04510, D.F., Mexico;

    Centra de Investigation Cientifica de Yucatan AC, Unidad de Recursos Maturates, Calle 43 # 130, Colonia Chuburnd de Hidalgo, C.P. 97200, Merida, Yucatan, Mexico;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    co-kriging; image texture; kriging with external drift; regression kriging; tree richness; tropical forest;

    机译:共同克里格图像纹理外部漂移克里格回归克里金法树木丰富;热带雨林;

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