Mapping an invasive bryophyte species using hyperspectral remote sensing data

被引:1
|
作者
Sandra Skowronek
Michael Ewald
Maike Isermann
Ruben Van De Kerchove
Jonathan Lenoir
Raf Aerts
Jens Warrie
Tarek Hattab
Olivier Honnay
Sebastian Schmidtlein
Duccio Rocchini
Ben Somers
Hannes Feilhauer
机构
[1] University of Erlangen-Nuremberg,Institute of Geography
[2] Karlsruhe Institute of Technology,Institute of Geography and Geoecology
[3] University of Bremen,Working Group Vegetation Ecology and Conservation Biology
[4] VITO (Flemish Institute for Technological Research),UR “Ecologie et dynamique des systèmes anthropisées” (EDYSAN, FRE3498 CNRS
[5] Université de Picardie Jules Verne,UPJV)
[6] KU Leuven,Ecology, Evolution and Biodiversity Conservation Section
[7] Fondazione Edmund Mach,Department of Biodiversity and Molecular Ecology
[8] KU Leuven,Department of Earth and Environmental Sciences, Division of Forest, Nature and Landscape
来源
Biological Invasions | 2017年 / 19卷
关键词
Dunes; Heathland; Imaging spectroscopy; Maxent; Moss;
D O I
暂无
中图分类号
学科分类号
摘要
Reliable distribution maps are crucial for the management of invasive plant species. An alternative to traditional field surveys is the use of remote sensing data, which allows coverage of large areas. However, most remote sensing studies on invasive plant species focus on mapping large stands of easily detectable study species. In this study, we used hyperspectral remote sensing data in combination with field data to derive a distribution map of an invasive bryophyte species, Campylopus introflexus, on the island of Sylt in Northern Germany. We collected plant cover data on 57 plots to calibrate the model and presence/absence data of C. introflexus on another 150 plots for independent validation. We simultaneously acquired airborne hyperspectral (APEX) images during summer 2014, providing 285 spectral bands. We used a Maxent modelling approach to map the distribution of C. introflexus. Although C. introflexus is a small and inconspicuous species, we were able to map its distribution with an overall accuracy of 75 %. Reducing the sampling effort from 57 to 7 plots, our models performed fairly well until sampling effort dropped below 12 plots. The model predicts that C. introflexus is present in about one quarter of the pixels in our study area. The highest percentage of C. introflexus is predicted in the dune grassland. Our findings suggest that hyperspectral remote sensing data have the potential to provide reliable information about the degree of bryophyte invasion, and thus provide an alternative to traditional field mapping approaches over large areas.
引用
收藏
页码:239 / 254
页数:15
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