The effect of flowering stage on distribution modelling performance: A case study of Acacia dealbata using maximum entropy modelling and RPA images

IF 0.8 4区 农林科学 Q3 FORESTRY
Antonio Vázquez de la Cueva, Fernando Montes Pita, I. Aulló-Maestro
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引用次数: 0

Abstract

Aim of study: To classify and validate the coverage of Acacia dealbata by stratifying its area into three different flowering stages using remotely piloted aircraft (RPA)-derived image orthomosaics. Area of study: We selected three sites in the west of Ourense province (Galicia, Spain). This area is the eastern cluster of A. dealbata populations in Galicia. Material and methods: We used a multirotor RPA equipped with an RGB and a multispectral camera. The flights were carried out on 10th and 11th March 2020. We performed a visual interpretation of the RGB orthomosaics to identify the patches of A. dealbata in three different flowering stages. We then used a maximum entropy (MaxEnt) programme to estimate the probability of A. dealbata presence in each study site at each of the three flowering stages. Main results: The performance of the MaxEnt models for the three flowering stages in each of the three study sites were acceptable in terms of ROC area under the curve (AUC) analyses the values of which ranged from 0.74 to 0.91, although in most cases was greater than 0.80, this being an improvement on the classification without stratification (AUC from 0.73 to 0.86). Research highlights: Our approach has proven to be a valid procedure to identify patterns of species distributions at local scale. In general, the performance of the models improves when stratification into flowering stages is considered. Overall accuracy of the presence prediction maps ranged from 0.76 to 0.91, highlighting the suitability of this approach for monitoring the expansion of A. dealbata.
花期对分布建模性能的影响:基于最大熵建模和RPA图像的金合欢案例研究
研究目的:利用RPA影像正拟技术,将金合欢(Acacia dealbata)区域划分为三个不同的花期,对其覆盖范围进行分类和验证。研究区域:我们在欧伦塞省西部(加利西亚,西班牙)选择了三个地点。这一地区是加利西亚东部的dealbata种群群。材料和方法:我们使用了配备RGB和多光谱相机的多旋翼RPA。这些飞行于2020年3月10日和11日进行。利用RGB正形图对三种不同花期的龙葵斑块进行了视觉判读。然后,我们使用最大熵(MaxEnt)程序来估计每个研究地点在三个开花阶段中的每个阶段存在的概率。主要结果:三个研究地点的三个花期的MaxEnt模型在ROC曲线下面积(AUC)分析方面的表现是可以接受的,其值范围为0.74至0.91,尽管在大多数情况下大于0.80,这是对无分层分类(AUC为0.73至0.86)的改进。研究重点:我们的方法已被证明是一个有效的程序,以确定物种分布模式在局部尺度。一般来说,当考虑分层进入开花阶段时,模型的性能得到改善。存在度预测图的总体精度在0.76 ~ 0.91之间,表明该方法在监测柽柳种群扩张方面具有较好的适用性。
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来源期刊
Forest Systems
Forest Systems FORESTRY-
CiteScore
1.40
自引率
14.30%
发文量
30
审稿时长
6-12 weeks
期刊介绍: Forest Systems is an international peer-reviewed journal. The main aim of Forest Systems is to integrate multidisciplinary research with forest management in complex systems with different social and ecological background
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