Monitoring the Population Development of Indicator Plants in High Nature Value Grassland Using Machine Learning and Drone Data

IF 4.4 2区 地球科学 Q1 REMOTE SENSING
Drones Pub Date : 2023-10-23 DOI:10.3390/drones7100644
Kim-Cedric Gröschler, Arnab Muhuri, Swalpa Kumar Roy, Natascha Oppelt
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Abstract

The temporal monitoring of indicator plant species in high nature value grassland is crucial for nature conservation. However, traditional monitoring approaches are resource-intensive, straining limited funds and personnel. In this study, we demonstrate the capabilities of a repeated drone-based plant count for monitoring the population development of an indicator plant species (Dactylorhiza majalis (DM)) to address such challenges. We utilized multispectral very high-spatial-resolution drone data from two consecutive flowering seasons for exploiting a Random Forest- and a Neural Network-based remote sensing plant count (RSPC) approach. In comparison to in situ data, Random Forest-based RSPC achieved a better performance than Neural Network-based RSPC. We observed an R² of 0.8 and 0.63 and a RMSE of 8.5 and 11.4 DM individuals/m², respectively. The accuracies indicate a comparable performance to conventional plant count surveys. In a change detection setup, we assessed the population development of DM and observed an overall decline in DM individuals in the study site. Regions with an increasing DM count were small and the increase relatively low in magnitude. Additionally, we documented the success of a manual seed transfer of DM to a previously uninhabited area within our study site. We conclude that repeated drone surveys are indeed suitable to monitor the population development of indicator plant species with a spectrally prominent flower color. They provide a unique spatio-temporal perspective to aid practical nature conservation and document conservation efforts.
利用机器学习和无人机数据监测高自然价值草地指示植物种群发展
高自然价值草地指示植物物种的时序监测对自然保护具有重要意义。然而,传统的监测方法是资源密集型的,使有限的资金和人员紧张。在这项研究中,我们展示了基于无人机的重复植物计数监测指示植物物种(Dactylorhiza majalis (DM))种群发展的能力,以应对这些挑战。我们利用来自连续两个开花季节的多光谱非常高空间分辨率无人机数据来开发基于随机森林和基于神经网络的遥感植物计数(RSPC)方法。与原位数据相比,基于随机森林的RSPC比基于神经网络的RSPC取得了更好的性能。我们观察到R²分别为0.8和0.63,RMSE分别为8.5和11.4 DM个体/m²。其准确性表明其性能可与传统的植物数量调查相媲美。在变化检测设置中,我们评估了糖尿病的人群发展,并观察到研究地点糖尿病个体的总体下降。DM数增加的区域较小,增加幅度相对较低。此外,我们记录了在我们研究地点的一个以前无人居住的地区人工转移DM种子的成功。我们得出结论,重复无人机调查确实适合监测具有光谱突出花色的指示植物物种的种群发展。它们提供了一个独特的时空视角,以帮助实际的自然保护和文献保护工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Drones
Drones Engineering-Aerospace Engineering
CiteScore
5.60
自引率
18.80%
发文量
331
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