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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Support vector machines to map rare and endangered native plants in Pacific islands forests
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Support vector machines to map rare and endangered native plants in Pacific islands forests

机译:支持向量机绘制太平洋岛屿森林中稀有和濒临灭绝的本地植物的地图

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摘要

It is critical to know accurately the ecological and geographic range of rare and endangered species for biodiversity conservation andmanagement. In this study,we used support vectormachines (SVM) formodeling rare species distribution andwe compared it to another emerging machine learning classifier called randomforests (RF). The comparison was performed using three native and endemic plants found at low- tomid-elevation in the island of Moorea (French Polynesia, South Pacific) and considered rare because of scarce occurrence records: Lepinia taitensis (28 observed occurrences), Pouteria tahitensis (20 occurrences) and Santalum insulare var. raiateense (81 occurrences). We selected a set of biophysical variables to describe plant habitats in tropical high volcanic islands, including topographic descriptors and an overstory vegetation map. The former were extracted from a digital elevation model (DEM) and the latter is a result of a SVM classification of spectral and textural bands from very high resolution Quickbird satellite imagery. Our results show that SVM slightly but constantly outperforms RF in predicting the distribution of rare species based on the kappa coefficient and the area under the curve (AUC) achieved by both classifiers. The predicted potential habitats of the three rare species are considerablywider than their currently observed distribution ranges.We hypothesize that the causes of this discrepancy are strong anthropogenic disturbances that have impacted low- to midelevation forests in the past and present. There is an urgent need to set up conservation strategies for the endangered plants found in these shrinking habitats on the Pacific islands.
机译:准确了解稀有和濒危物种的生态和地理范围对于生物多样性的保护和管理至关重要。在这项研究中,我们使用支持向量机(SVM)对稀有物种分布进行建模,并将其与另一个新兴的机器学习分类器即randomforests(RF)进行了比较。比较是使用三种在Moorea岛(法属波利尼西亚,南太平洋)高低海拔发现的本地和地方植物进行的,由于稀有的发生记录而被认为是稀有植物:Lepinia taitensis(观察到的出现28次),Pouteria tahitensis(20发生次数)和Santalum insulare var。葡萄干(出现81次)。我们选择了一组生物物理变量来描述热带高火山岛上的植物栖息地,其中包括地形描述符和高楼层植被图。前者是从数字高程模型(DEM)中提取的,而后者是对来自非常高分辨率的Quickbird卫星影像的光谱和纹理带进行SVM分类的结果。我们的结果表明,在基于两个分类器的kappa系数和曲线下面积(AUC)来预测稀有物种的分布方面,SVM略胜于RF,但始终优于RF。这三种稀有物种的潜在潜在栖息地比目前观察到的分布范围要广得多。我们假设造成这种差异的原因是强烈的人为干扰,过去和现在都影响了中低海拔森林。迫切需要为在太平洋岛屿上这些不断缩小的栖息地中发现的濒危植物制定保护战略。

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