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首页> 外文期刊>Progress in Physical Geography >Estimating habitat extent and carbon loss from an eroded northern blanket bog using UAV derived imagery and topography
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Estimating habitat extent and carbon loss from an eroded northern blanket bog using UAV derived imagery and topography

机译:使用无人机衍生图像和地形估算栖息地和侵蚀北方毯子沼泽的碳损失

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摘要

Peatlands are important reserves of terrestrial carbon and biodiversity, and given that many peatlands across the UK and Europe exist in a degraded state, their conservation is a major area of concern and a focus of considerable research. Aerial surveys are valuable tools for habitat mapping and conservation and provide useful insights into their condition. We investigate how SfM photogrammetry-derived topography and habitat classes may be used to construct an estimate of carbon loss from erosion features in a remote blanket bog habitat. An autonomous, unmanned, aerial, fixed-wing remote sensing platform (Quest UAV 300?) collected imagery over Moor House, in the Upper Teesdale National Nature Reserve, a site with a high degree of peatland erosion. The images were used to generate point clouds into orthomosaics and digital surface models using SfM photogrammetry techniques, georeferenced and subsequently used to classify vegetation and peatland features. A classification of peatbog feature types was developed using a random forest classification model trained on field survey data and applied to UAV-captured products including the orthomosaic, digital surface model and derived surfaces such as topographic index, slope and aspect maps. Using the area classified as eroded peat and the derived digital surface model, we estimated a loss of 438 tonnes of carbon from a single gully. The UAV system was relatively straightforward to deploy in such a remote and unimproved area. SfM photogrammetry, imagery and random forest modelling obtained classification accuracies of between 42% and 100%, and was able to discern between bare peat, saturated bog and sphagnum habitats. This paper shows what can be achieved with low-cost UAVs equipped with consumer grade camera equipment and relatively straightforward ground control, and demonstrates their potential for the carbon and peatland conservation research community.
机译:泥炭地是陆地碳和生物多样性的重要储备,鉴于英国和欧洲的许多泥炭地存在于退化状态,他们的保护是关注的一个主要领域,并重点是相当大的研究。空中调查是栖息地测绘和保护的宝贵工具,并提供有用的见解。我们调查SFM摄影测量衍生的地形和栖息地类别如何用于构建远程毯子沼泽栖息地中的侵蚀特征的碳损失的估计。一种自主,无人驾驶,空中,固定翼遥感平台(Quest UAV 300?)收集了Moor House的图像,位于上部Teesdale国家自然保护区,一个具有高度泥炭侵蚀的网站。这些图像用于使用SFM摄影测量技术,地理参考和随后用于分类植被和泥炭地特征,将点云生成到正交和数字表面模型中。使用在现场调查数据上培训的随机森林分类模型开发了Peatbog特征类型的分类,并应用于包括Orav捕获的产品,包括正交,数字表面模型和衍生表面,例如地形索引,斜率和方面图。使用分类为侵蚀的泥炭和衍生数字表面模型的区域,我们估计从单个沟壑中损失了438吨的碳。 UAV系统相对简单地部署在这样的远程和未修复的区域中。 SFM摄影测量,图像和随机森林建模获得了42%和100%的分类精度,并且能够在裸泥,饱和的沼泽和斯巴格纳姆栖息地之间辨别。本文展示了具有消费级摄像机设备的低成本无人机和相对直接的地面控制,并展示了碳和泥土保护研究界的潜力。

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