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首页> 外文期刊>Forests >An End to End Process Development for UAV-SfM Based Forest Monitoring: Individual Tree Detection, Species Classification and Carbon Dynamics Simulation
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An End to End Process Development for UAV-SfM Based Forest Monitoring: Individual Tree Detection, Species Classification and Carbon Dynamics Simulation

机译:基于UAV-SfM的森林监测的端到端过程开发:单个树的检测,物种分类和碳动力学模拟

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To promote Bio-Energy with Carbon dioxide Capture and Storage (BECCS), which aims to replace fossil fuels with bio energy and store carbon underground, and Reducing Emissions from Deforestation and forest Degradation (REDD+), which aims to reduce the carbon emissions produced by forest degradation, it is important to build forest management plans based on the scientific prediction of forest dynamics. For Measurement, Reporting and Verification (MRV) at an individual tree level, it is expected that techniques will be developed to support forest management via the effective monitoring of changes to individual trees. In this study, an end-to-end process was developed: (1) detecting individual trees from Unmanned Aerial Vehicle (UAV) derived digital images; (2) estimating the stand structure from crown images; (3) visualizing future carbon dynamics using a forest ecosystem process model. This process could detect 93.4% of individual trees, successfully classified two species using Convolutional Neural Network (CNN) with 83.6% accuracy and evaluated future ecosystem carbon dynamics and the source-sink balance using individual based model FORMIND. Further ideas for improving the sub-process of the end to end process were discussed. This process is expected to contribute to activities concerned with carbon management such as designing smart utilization for biomass resources and projecting scenarios for the sustainable use of ecosystem services.
机译:推广以二氧化碳捕集与封存(BECCS)的生物能源,其目的是用生物能替代化石燃料并将碳存储在地下,并减少森林砍伐和森林退化所产生的排放量(REDD +),其目的是减少由二氧化碳造成的碳排放。森林退化,基于森林动力学的科学预测建立森林管理计划很重要。对于单棵树级别的度量,报告和验证(MRV),预计将开发有效支持对单棵树变化的监视以支持森林管理的技术。在这项研究中,开发了一个端到端的过程:(1)从无人飞行器(UAV)导出的数字图像中检测单个树; (2)从树冠图像估计展台结构; (3)使用森林生态系统过程模型可视化未来的碳动态。该过程可以检测93.4%的树木,使用卷积神经网络(CNN)成功分类了两种树,准确度为83.6%,并使用基于个体的模型FORMIND评估了未来的生态系统碳动态和源库平衡。讨论了改进端到端过程的子过程的其他想法。预计该过程将有助于与碳管理有关的活动,例如设计生物质资源的智能利用以及预测可持续利用生态系统服务的方案。

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