Low-Cost Tree Crown Dieback Estimation Using Deep Learning-Based Segmentation

M. J. Allen, D. Moreno-Fernández, P. Ruiz-Benito, S. W. D. Grieve, E. R. Lines
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Abstract

The global increase in observed forest dieback, characterised by the death of tree foliage, heralds widespread decline in forest ecosystems. This degradation causes significant changes to ecosystem services and functions, including habitat provision and carbon sequestration, which can be difficult to detect using traditional monitoring techniques, highlighting the need for large-scale and high-frequency monitoring. Contemporary developments in the instruments and methods to gather and process data at large-scales mean this monitoring is now possible. In particular, the advancement of low-cost drone technology and deep learning on consumer-level hardware provide new opportunities. Here, we use an approach based on deep learning and vegetation indices to assess crown dieback from RGB aerial data without the need for expensive instrumentation such as LiDAR. We use an iterative approach to match crown footprints predicted by deep learning with field-based inventory data from a Mediterranean ecosystem exhibiting drought-induced dieback, and compare expert field-based crown dieback estimation with vegetation index-based estimates. We obtain high overall segmentation accuracy (mAP: 0.519) without the need for additional technical development of the underlying Mask R-CNN model, underscoring the potential of these approaches for non-expert use and proving their applicability to real-world conservation. We also find colour-coordinate based estimates of dieback correlate well with expert field-based estimation. Substituting ground truth for Mask R-CNN model predictions showed negligible impact on dieback estimates, indicating robustness. Our findings demonstrate the potential of automated data collection and processing, including the application of deep learning, to improve the coverage, speed and cost of forest dieback monitoring.
利用基于深度学习的分割技术进行低成本树冠枯萎估算
在全球范围内观察到的以树叶枯死为特征的森林枯死现象有所增加,这预示着森林生态系统的普遍衰退。这种退化会导致生态系统服务和功能(包括提供栖息地和碳封存)发生重大变化,而传统的监测技术很难检测到这些变化,因此需要进行大规模和高频率的监测。当代大规模收集和处理数据的仪器和方法的发展意味着现在可以进行这种监测。特别是低成本无人机技术和消费级硬件深度学习技术的发展提供了新的机遇。在这里,我们使用一种基于深度学习和植被指数的方法,从 RGB 航空数据中评估树冠枯死情况,而无需使用诸如激光雷达之类的昂贵仪器。我们使用一种迭代方法,将深度学习预测的树冠足迹与基于干旱引起的枯死的地中海生态系统的实地清单数据相匹配,并将专家的实地树冠枯死估算与基于植被指数的估算进行比较。我们获得了较高的整体分割准确率(mAP:0.519),而无需对底层 Mask R-CNN 模型进行额外的技术开发,这凸显了这些方法在非专家使用方面的潜力,并证明了其在现实世界保护中的适用性。我们还发现,基于颜色坐标的枯萎病估测结果与专家的实地估测结果有很好的相关性。用地面实况替代 Mask R-CNN 模型的预测结果对枯萎病估测结果的影响可以忽略不计,这表明该方法具有鲁棒性。我们的研究结果证明了自动数据收集和处理(包括深度学习的应用)在提高林梢枯死监测的覆盖率、速度和成本方面的潜力。
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