Beyond presence mapping: predicting fractional cover of non‐native vegetation in Sentinel‐2 imagery using an ensemble of MaxEnt models

IF 3.9 2区 环境科学与生态学 Q1 ECOLOGY Remote Sensing in Ecology and Conservation Pub Date : 2023-01-17 DOI:10.1002/rse2.325
T. Preston, Aaron N. Johnston, Kyle G. Ebenhoch, Robert H. Diehl
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Abstract

Non‐native species maps are important tools for understanding and managing biological invasions. We demonstrate a novel approach to extend presence modeling to map fractional cover (FC) of non‐native yellow sweet clover Melilotus officinalis in the Northern Great Plains, USA. We used ensembles of MaxEnt models to map FC across landscapes from satellite imagery trained from regional aerial imagery that was trained by local unmanned aerial vehicle (UAV) imagery. Clover cover from field surveys and classified UAV imagery were nearly identical (n = 22, R2 = 0.99). Two classified UAV images provided training data to map clover presence with MaxEnt and National Agricultural Imagery Program (NAIP) aerial imagery. We binned cover predictions from NAIP imagery within each Sentinel‐2 pixel into eight cover classes to create pure (100%) and FC (20%–95%) training data and modeled each class separately using MaxEnt and Sentinel‐2 imagery. We mapped pure clover with one classification threshold and compared its performance to 15 candidate maps that included FC predictions outside pure predictions. Each FC map represented alternative combinations of five MaxEnt thresholds and three approaches to assign cover to pixels with multiple predictions from the FC ensemble. Evaluations of performance with independent datasets revealed maps including FC corresponded to field (n = 32, R2 range: 0.39–0.68) and UAV (n = 20, R2 range: 0.61–0.84) data better than pure clover maps (R2 = 0.15 and 0.31, respectively). Overall, the pure clover map predicted 3.2% cover, whereas the three best performing FC maps predicted 6.6%–8.0% cover. Including FC predictions increased accuracy and cover predictions which can improve ecological understanding of invasions. Our method allows efficient FC mapping for vegetative species discernible in UAV imagery and may be especially useful for mapping rare, irruptive or patchily distributed species with poor representation in field data, which challenges landscape‐level mapping.
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超越存在映射:使用MaxEnt模型集合预测Sentinel‐2图像中非原生植被的部分覆盖
非本地物种地图是理解和管理生物入侵的重要工具。我们展示了一种新的方法,将存在建模扩展到绘制美国北部大平原非本地黄色甜三叶草Melilotus officinalis的部分覆盖率(FC)。我们使用MaxEnt模型的集合,从由当地无人机(UAV)图像训练的区域航空图像训练的卫星图像中绘制景观FC。实地调查和无人机分类图像中的三叶草覆盖率几乎相同(n=22,R2=0.99)。两张无人机分类图提供了训练数据,可以利用MaxEnt和国家农业图像计划(NAIP)的航空图像绘制三叶草的分布图。我们将每个Sentinel‐2像素内NAIP图像的覆盖预测分为八个覆盖类别,以创建纯(100%)和FC(20%–95%)训练数据,并使用MaxEnt和Sentinel‑2图像分别对每个类别进行建模。我们用一个分类阈值映射了纯三叶草,并将其性能与包括纯预测之外的FC预测的15个候选映射进行了比较。每个FC映射表示五个MaxEnt阈值和三种方法的替代组合,以将覆盖分配给具有来自FC集合的多个预测的像素。使用独立数据集进行的性能评估显示,包括FC在内的地图比纯三叶草地图(分别为R2=0.15和0.31)更符合野外(n=32,R2范围:0.39–0.68)和无人机(n=20,R2范围,0.61–0.84)数据。总体而言,纯三叶草地图预测覆盖率为3.2%,而表现最好的三个FC地图预测覆盖度为6.6%-8.0%。包括FC预测提高了准确性和覆盖预测,这可以提高对入侵的生态学理解。我们的方法可以有效地绘制无人机图像中可识别的营养物种的FC地图,并且可能特别适用于绘制野外数据中代表性较差的稀有、入侵或零星分布物种的地图,这对景观层面的地图绘制提出了挑战。
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来源期刊
Remote Sensing in Ecology and Conservation
Remote Sensing in Ecology and Conservation Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
9.80
自引率
5.50%
发文量
69
审稿时长
18 weeks
期刊介绍: emote Sensing in Ecology and Conservation provides a forum for rapid, peer-reviewed publication of novel, multidisciplinary research at the interface between remote sensing science and ecology and conservation. The journal prioritizes findings that advance the scientific basis of ecology and conservation, promoting the development of remote-sensing based methods relevant to the management of land use and biological systems at all levels, from populations and species to ecosystems and biomes. The journal defines remote sensing in its broadest sense, including data acquisition by hand-held and fixed ground-based sensors, such as camera traps and acoustic recorders, and sensors on airplanes and satellites. The intended journal’s audience includes ecologists, conservation scientists, policy makers, managers of terrestrial and aquatic systems, remote sensing scientists, and students. Remote Sensing in Ecology and Conservation is a fully open access journal from Wiley and the Zoological Society of London. Remote sensing has enormous potential as to provide information on the state of, and pressures on, biological diversity and ecosystem services, at multiple spatial and temporal scales. This new publication provides a forum for multidisciplinary research in remote sensing science, ecological research and conservation science.
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