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Analyzing Domain Knowledge for Big Data Analysis: A Case Study with Urban Tree Type Classification

机译:分析领域知识进行大数据分析:以城市树类型分类为例

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The goals of this research were to create a labeled dataset of tree shadows and to test the feasibility of shadow-based tree type identification using aerial imagery. Urban tree big data that provides information about individual trees can help city planners optimize positive benefits of urban trees (e.g., increasing wellbeing of city residents) while managing potential negative impacts (e.g., risk to power lines). The continual rise of tree type specific threats, such as emerald ash borer, due to climate change has made this problem more pressing in recent years. However, urban tree big data are time consuming to create. This paper evaluates the potential of a new tree type identification method that utilizes shadows in aerial imagery to survey larger regions of land in a shorter amount of time. This work is challenging because there are structural variations across a given tree type and few verified tree type identification datasets exist. Related work has not explored how tree structure characteristics translate into a profile view of a tree's shadow or quantified the feasibility of shadow-only based tree type identification. We created a consistent and accurate dataset of 4,613 tree shadows using ground truthing procedures and novel methods for ensuring consistent collection of spatial shadow data that take binary and spatial agreement between raters into account. Our results show that identifying trees from shadows in aerial imagery is feasible and merits further exploration in the future.
机译:这项研究的目的是创建一个标记的树木阴影数据集,并测试使用航空影像进行基于阴影的树木类型识别的可行性。提供有关个别树木信息的城市树木大数据可以帮助城市规划人员优化城市树木的正面收益(例如,增加城市居民的福祉),同时管理潜在的负面影响(例如,电力线的风险)。由于气候变化,树木类型的特定威胁(如翡翠灰bore)的持续出现,使这一问题在最近几年变得更加紧迫。但是,城市树木大数据的创建非常耗时。本文评估了一种新的树型识别方法的潜力,该方法利用航空影像中的阴影在较短的时间内调查较大的土地区域。这项工作具有挑战性,因为在给定的树类型上存在结构差异,并且几乎没有经过验证的树类型标识数据集。相关工作尚未探索树结构特征如何转换为树的阴影的轮廓视图,或如何量化仅基于阴影的树类型识别的可行性。我们使用地面实测程序和新颖的方法创建了一个一致,准确的4,613个树影数据集,以确保考虑到评估者之间的二进制和空间一致性,确保空间影象数据的一致性。我们的结果表明,从航空影像中的阴影中识别树木是可行的,并值得在未来进行进一步的探索。

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