Application of UAV remote sensing and machine learning to model and map land use in urban gardens

Q2 Social Sciences Journal of Urban Ecology Pub Date : 2022-01-01 DOI:10.1093/jue/juac008
Benjamin Wagner, Monika H. Egerer
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引用次数: 7

Abstract

Urban gardens are an integral part of urban agricultural systems, contributing to ecosystem services, biodiversity and human wellbeing. These systems occur at fine scales, can be highly complex and therefore offer the opportunity to test mechanisms of ecological patterns and processes. The capacity to confidently characterize urban gardens and their land uses is still lacking, while it could provide the basis for assessing ecosystem service provision. Land classifications from remote sensing platforms are common at the landscape scale, but imagery often lacks the resolution required to map differences in land use of fine-scale systems such as urban gardens. Here, we present a workflow to model and map land use in urban gardens using imagery from an unoccupied aerial vehicle (UAV) and machine learning. Due to high resolutions (<5 cm) from image acquisition at low altitudes, UAV remote sensing is better suited to characterize urban land use. We mapped six common land uses in 10 urban community gardens, exhibiting distinct spatial arrangements. Our models had good predictive performance, reaching 80% overall prediction accuracy in independent validation and up to 95% when assessing model performance per cover class. Extracting spatial metrics from these land use classifications, we found that at the garden and plot scale, plant species richness can be estimated by the total area and patchiness of crops. Land use classifications like these can offer an accessible tool to assess complex urban habitats and justify the importance of urban agriculture as a service-providing system, contributing to the sustainability and livability of cities.
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无人机遥感与机器学习在城市园林土地利用建模与制图中的应用
城市花园是城市农业系统的一个组成部分,有助于生态系统服务、生物多样性和人类福祉。这些系统发生在很小的尺度上,可能非常复杂,因此提供了测试生态模式和过程机制的机会。虽然可以为评估生态系统服务提供提供提供基础,但仍缺乏自信地描述城市花园及其土地利用特征的能力。来自遥感平台的土地分类在景观尺度上很常见,但图像往往缺乏绘制精细尺度系统(如城市花园)土地利用差异所需的分辨率。在这里,我们提出了一个工作流,利用无人飞行器(UAV)和机器学习的图像来建模和绘制城市花园的土地利用。由于低空图像采集的高分辨率(<5厘米),无人机遥感更适合表征城市土地利用。我们在10个城市社区花园中绘制了6种常见的土地用途,展示了不同的空间安排。我们的模型具有良好的预测性能,在独立验证中达到80%的总体预测精度,在评估每个覆盖类别的模型性能时高达95%。从这些土地利用分类中提取空间指标,我们发现在园地和样地尺度上,植物物种丰富度可以通过作物的总面积和斑块度来估计。像这样的土地利用分类可以提供一种方便的工具来评估复杂的城市栖息地,并证明城市农业作为一个服务提供系统的重要性,有助于城市的可持续性和宜居性。
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来源期刊
Journal of Urban Ecology
Journal of Urban Ecology Social Sciences-Urban Studies
CiteScore
4.50
自引率
0.00%
发文量
14
审稿时长
15 weeks
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