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Forest beta-diversity analysis by remote sensing: How scale and sensors affect the Rao's Q index

机译:遥感森林β-多样性分析:尺度和传感器如何影响饶氏Q指数

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Space-borne remote sensing missions provide robust, timely and continuous data to assess biodiversity in remote or protected areas, where direct field observations can be prohibited by difficult accessibility. The objective of this study was to extend the concept of remote sensing based assessment of beta-diversity to multi-scale domain by multi-resolution optical satellite data. This study was conducted in a reserved forest of western Himalaya, India; a region affected by the invasive Lantana camara L (lantana). We calculated and compared Rao's Q and Shannon indices at different spatial resolutions (0.5, 5, and 30 m) and scales (window sizes) by using imageries from Pleiades 1A, RapidEye, and Landsat-8 acquired in April 2013, the pre-monsoon season. Rao's Q index explained diversity more accurately than Shannon index for the three analyzed stand densities. Diversity was better approximated by Rao's Q index calculated by Pleiades 1A at a resolution of 0.5 m at low stand density. We observed higher correlations of the average coefficient of variation (CV) with Rao's Q and Shannon indices for areas associated with mixed spectral reflectance caused by overstory and understory vegetation. Furthermore, CV was lower in open areas dominated by lantana. These results indicated a strong scale and spatial resolution dependence of Rao's Q index on remote sensing-derived spectral heterogeneity information. When applied in heterogeneous forest environments, Rao's Q index could represent a better remote sensing proxy to estimate beta-diversity than the conventional Shannon index.
机译:星载遥感任务提供了可靠,及时和连续的数据,以评估偏远地区或受保护地区的生物多样性,在这些地区由于难以进入而无法进行直接实地观察。这项研究的目的是通过多分辨率光学卫星数据将基于遥感的β多样性评估概念扩展到多尺度域。这项研究是在印度喜马拉雅山西部的一片保留森林中进行的;受入侵马Lan丹camara L(马lan丹)影响的地区。我们使用2013年4月(季风前)采集的Pleiades 1A,RapidEye和Landsat-8的图像,计算并比较了不同空间分辨率(0.5、5和30 m)和尺度(窗口大小)下的Rao Q和Shannon指数季节。对于三种分析的林分密度,Rao的Q指数比Shannon指数更准确地解释了多样性。在低林分密度下,由P宿星1A计算的Rao Q指数可以更好地近似多样性,分辨率为0.5 m。我们观察到与植被过度和林下植被引起的混合光谱反射相关的区域,平均变异系数(CV)与Rao's Q和Shannon指数的相关性更高。此外,在以马tana丹为主的开阔地带,CV较低。这些结果表明,Rao Q指数对遥感衍生的光谱异质性信息具有很强的尺度和空间分辨率依赖性。当在异类森林环境中使用时,与传统的Shannon指数相比,Rao的Q指数可以代表一个更好的遥感代理来估计β多样性。

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