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Cross-site learning in deep learning RGB tree crown detection

机译:深度学习RGB树冠检测的跨网站学习

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摘要

Tree crown detection is a fundamental task in remote sensing for forestry and ecosystem ecology. While many individual tree segmentation algorithms have been proposed, the development and testing of these algorithms is typically site specific, with few methods evaluated against data from multiple forest types simultaneously. This makes it difficult to determine the generalization of proposed approaches, and limits tree detection at broad scales. Using data from the National Ecological Observatory Network, we extend a recently developed deep learning approach to include data from a range of forest types to determine whether information from one forest can be used for tree detection in other forests, and explore the potential for building a universal tree detection algorithm. We find that the deep learning approach works well for overstory tree detection across forest conditions. Performance was best in open oak woodlands and worst in alpine forests. When models were fit to one forest type and used to predict another, performance generally decreased, with better performance when forests were more similar in structure. However, when models were pretrained on data from other sites and then finetuned using a relatively small amount of hand-labeled data from the evaluation site, they performed similarly to local site models. Most importantly, a model fit to data from all sites performed as well or better than individual models trained for each local site.
机译:树冠检测是林业和生态系统生态学遥感的基本任务。虽然已经提出了许多单独的树分段算法,但是对这些算法的开发和测试通常是特定于现场的,并且很少几种方法同时针对来自多种林类型的数据进行评估。这使得难以确定所提出的方法的概括,并限制了广泛的尺度的树木检测。使用来自国家生态天文台网络的数据,我们扩展了最近开发的深度学习方法,以包括一系列森林类型的数据来确定来自一个森林的信息是否可用于其他森林中的树检测,并探索建立一个森林的树检测通用树检测算法。我们发现深度学习方法适用于森林条件的过度树木检测。性能最适合开放的橡木林地和高山森林中最糟糕的。当模型适合一个森林类型并用于预测另一种森林类型时,性能通常降低,当森林在结构中更相似时,具有更好的性能。但是,当模型在来自其他网站的数据上预先预留,然后使用来自评估站点的相对少量的手写数据的闪烁,它们与本地站点模型类似。最重要的是,模型适合来自所有站点的所有网站的数据,或者比每个本地站点培训的个别模型更好。

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