利用无人飞行器图像和深度学习绘制耕地基于结果的支付的植物区系指示物种图

IF 7 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Caterina Barrasso , Robert Krüger , Anette Eltner , Anna F. Cord
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引用次数: 0

摘要

在强化农业实践的推动下,欧洲各地的植物物种减少,对其他类群和生态系统功能造成了影响。向农民支付基于结果的费用为保护这些物种提供了一个有效的解决方案,但生物多样性监测的高成本仍然是一个挑战。在这项研究中,我们利用 RGB 摄像机进行了无人机飞行,并使用深度学习模型 YOLO 在德国不同管理强度下的四块冬大麦田中检测这些物种。对植物性状的实地测量用于评估它们对物种可探测性的影响。此外,我们还研究了空间共现和冠层高度异质性预测无人机难以探测到的物种存在的潜力。我们发现,观察到的物种中有一半可以被远程探测到,准确标注所需的最小地面取样距离(GSD)为 1.22 毫米。根据性状信息,我们还估算了未出现在研究区域的关键指示物种的检测率。植株高度对物种检测至关重要,准确率在 49-100% 之间。YOLO 模型能有效地从 40 米处拍摄的图像中预测物种,从而将每公顷的监测时间缩短至 8 分钟。事实证明,无人机检测到的物种与树冠高度异质性的共同出现有望确定可能出现无法检测到的物种的区域,不过在景观级应用方面还需要进一步研究。我们的研究凸显了在农业景观中对自生植物物种进行大规模、经济高效监测的潜力,并为未来生物多样性监测开发稳健的 "智能指标 "提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping indicator species of segetal flora for result-based payments in arable land using UAV imagery and deep learning
The decline of segetal flora species across Europe, driven by intensified agricultural practices, is impacting other taxa and ecosystem functions. Result-based payments to farmers offer an effective solution to conserve these species, but the high cost of biodiversity monitoring remains a challenge. In this study, we conducted UAV flights with an RGB camera and used the deep learning model YOLO to detect these species in four winter barley fields under different management intensities in Germany. Field measurements of plant traits were used to evaluate their impact on species detectability. Additionally, we investigated the potential of spatial co-occurrence and canopy height heterogeneity to predict the presence of species difficult to detect by UAVs. We found that half of the species observed could be remotely detected, with a minimum ground sampling distance (GSD) of 1.22 mm required for accurate annotation. The same detection ratio was estimated for key indicator species not present in our study area based on trait information. Plant height was crucial for species detection, with accuracy ranging between 49–100 %. YOLO models effectively predicted species from images taken at 40 m, reducing the monitoring time to eight minutes per hectare. Co-occurrence with UAV-detectable species and canopy height heterogeneity proved promising for identifying areas where undetectable species are likely to occur, although further research is needed for landscape-level applications. Our study highlights the potential for large-scale, cost-effective monitoring of segetal flora species in agricultural landscapes, and provides valuable insights for developing robust ‘smart indicators’ for future biodiversity monitoring.
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来源期刊
Ecological Indicators
Ecological Indicators 环境科学-环境科学
CiteScore
11.80
自引率
8.70%
发文量
1163
审稿时长
78 days
期刊介绍: The ultimate aim of Ecological Indicators is to integrate the monitoring and assessment of ecological and environmental indicators with management practices. The journal provides a forum for the discussion of the applied scientific development and review of traditional indicator approaches as well as for theoretical, modelling and quantitative applications such as index development. Research into the following areas will be published. • All aspects of ecological and environmental indicators and indices. • New indicators, and new approaches and methods for indicator development, testing and use. • Development and modelling of indices, e.g. application of indicator suites across multiple scales and resources. • Analysis and research of resource, system- and scale-specific indicators. • Methods for integration of social and other valuation metrics for the production of scientifically rigorous and politically-relevant assessments using indicator-based monitoring and assessment programs. • How research indicators can be transformed into direct application for management purposes. • Broader assessment objectives and methods, e.g. biodiversity, biological integrity, and sustainability, through the use of indicators. • Resource-specific indicators such as landscape, agroecosystems, forests, wetlands, etc.
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