2018
DOI: 10.1111/1365-2745.13067
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Imaging spectroscopy predicts variable distance decay across contrasting Amazonian tree communities

Abstract: The forests of Amazonia are among the most biodiverse on Earth, yet accurately quantifying how species composition varies through space (i.e., beta‐diversity) remains a significant challenge. Here, we use high‐fidelity airborne imaging spectroscopy from the Carnegie Airborne Observatory to quantify a key component of beta‐diversity, the distance decay in species similarity through space, across three landscapes in Northern Peru. We then compared our derived distance decay relationships to theoretical expectati… Show more

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Cited by 29 publications
(42 citation statements)
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References 80 publications
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“…In addition, the different size of the leaves was reflected in the compactness of the segments, and the fact that the leaves have a different arrangement leads to different values of entropy for the two species. However, differentiating other groups of similar species may be challenging [58]. For example, Cecropia latiloba (a tree with somewhat similar leaf characteristics as M. armata in a UAV image) in some plots tends to be predicted as M. armata.…”
Section: Palm Tree Identification and Classification Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…In addition, the different size of the leaves was reflected in the compactness of the segments, and the fact that the leaves have a different arrangement leads to different values of entropy for the two species. However, differentiating other groups of similar species may be challenging [58]. For example, Cecropia latiloba (a tree with somewhat similar leaf characteristics as M. armata in a UAV image) in some plots tends to be predicted as M. armata.…”
Section: Palm Tree Identification and Classification Resultsmentioning
confidence: 99%
“…A similar case could occur if the palms Socratea exorrhiza and Iriartea deltoidea are found in the same image, as from above, the crown shapes look similar [40]. To overcome this challenge, other types of technologies like hyperspectral imagery or Lidar techniques could be used in the future [58,59].…”
Section: Palm Tree Identification and Classification Resultsmentioning
confidence: 99%
“…Vegetation mapping has taken advantage of radar images and aerial photographs to identify forest types that differ in structural and terrain characteristics (Duivenvoorden & Lips, 1993;Huber & Alarcón, 1988;Huber, Gharbarran, & Funk, 1995;IBGE, 2004). Several studies have used Landsat data to predict edaphic properties or different aspects of plant communities (species composition, turnover or richness) over landscape extents (Draper et al, 2019;Higgins et al, 2012Higgins et al, , 2011Salovaara, Thessler, Malik, & Tuomisto, 2005;Sirén, Tuomisto, & Navarrete, 2013;Thessler, Ruokolainen, Tuomisto, & Tomppo, 2005;Tuomisto, Poulsen, et al, 2003;Tuomisto, Ruokolainen, Aguilar, et al, 2003). The highest local resolution has been obtained by airborne hyperspectral sensors and LiDAR, which have been used to map forest properties such as canopy height, above-ground carbon stocks and canopy chemistry at the regional extent (Asner et al, 2015(Asner et al, , 2013(Asner et al, , 2014.…”
Section: Introductionmentioning
confidence: 99%
“…Second, we employed a spectral clustering approach previously utilised by others (Baldeck & Asner, 2013;F eret & Asner 2014;Draper et al, 2018) to reduce the dimensionality of the data and make it suitable for analysis with intuitive and well established techniques. Image pixels were grouped by the similarity of their spectral reflectance into 250 clusters using the minibatch k-means algorithm (Sculley, 2010).…”
Section: Landscape Environmentmentioning
confidence: 99%