利用掩模R - CNN从航空RGB图像中准确描绘热带森林中的单个树冠

IF 3.9 2区 环境科学与生态学 Q1 ECOLOGY Remote Sensing in Ecology and Conservation Pub Date : 2023-05-13 DOI:10.1002/rse2.332
James G. C. Ball, Sebastian H. M. Hickman, Tobias D. Jackson, Xian Jing Koay, James Hirst, William Jay, Matthew Archer, Mélaine Aubry‐Kientz, Grégoire Vincent, David A. Coomes
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引用次数: 8

摘要

热带森林是全球碳循环的主要组成部分,也是三分之二陆生物种的家园。上冠层树木储存了大部分的森林碳,可能容易受到干旱事件和风暴的影响。监测它们的生长和死亡对于了解森林对气候变化的适应能力至关重要,但在森林碳储量的背景下,传统的实地调查中大树的代表性不足,因此估算结果的约束很差。航空照片提供了光谱和纹理信息,可以区分不同、复杂的热带树冠中的树冠,这可能为大型树木的景观监测打开了大门。在这里,我们描述了一种新的深度卷积神经网络方法Detectree2,它建立在Mask R - CNN计算机视觉框架的基础上,从机载RGB图像中识别单个树冠的不规则边缘。我们在马来西亚婆罗洲的三个地点和法属圭亚那的一个地点对3797个人工绘制的树冠进行了训练和评估。作为一个应用实例,我们结合了四个地点的重复激光雷达调查(间隔3到6年)来估计上冠层树木的生长和死亡率。Detectree2在14公里的航空图像中描绘了65000棵上冠层树木。自动方法对未见测试树的圈定能力较好(f1得分= 0.64),对最高类别树的圈定能力较好(f1得分= 0.74)。正如以前的野外研究预测的那样,我们发现生长速率随树高而下降,高大树木的死亡率高于中等大小的树木。我们的方法表明,深度学习方法可以在广泛访问的RGB图像中自动分割树。这个工具(作为一个开源的Python包提供)在森林生态和保护中有许多潜在的应用,从估算碳储量到监测森林物候和恢复。Python包可在https://github.com/PatBall1/Detectree2上安装。
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Accurate delineation of individual tree crowns in tropical forests from aerial RGB imagery using Mask R‐CNN
Abstract Tropical forests are a major component of the global carbon cycle and home to two‐thirds of terrestrial species. Upper‐canopy trees store the majority of forest carbon and can be vulnerable to drought events and storms. Monitoring their growth and mortality is essential to understanding forest resilience to climate change, but in the context of forest carbon storage, large trees are underrepresented in traditional field surveys, so estimates are poorly constrained. Aerial photographs provide spectral and textural information to discriminate between tree crowns in diverse, complex tropical canopies, potentially opening the door to landscape monitoring of large trees. Here we describe a new deep convolutional neural network method, Detectree2 , which builds on the Mask R‐CNN computer vision framework to recognize the irregular edges of individual tree crowns from airborne RGB imagery. We trained and evaluated this model with 3797 manually delineated tree crowns at three sites in Malaysian Borneo and one site in French Guiana. As an example application, we combined the delineations with repeat lidar surveys (taken between 3 and 6 years apart) of the four sites to estimate the growth and mortality of upper‐canopy trees. Detectree2 delineated 65 000 upper‐canopy trees across 14 km 2 of aerial images. The skill of the automatic method in delineating unseen test trees was good ( F 1 score = 0.64) and for the tallest category of trees was excellent ( F 1 score = 0.74). As predicted from previous field studies, we found that growth rate declined with tree height and tall trees had higher mortality rates than intermediate‐size trees. Our approach demonstrates that deep learning methods can automatically segment trees in widely accessible RGB imagery. This tool (provided as an open‐source Python package) has many potential applications in forest ecology and conservation, from estimating carbon stocks to monitoring forest phenology and restoration. Python package available to install at https://github.com/PatBall1/Detectree2 .
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来源期刊
Remote Sensing in Ecology and Conservation
Remote Sensing in Ecology and Conservation Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
9.80
自引率
5.50%
发文量
69
审稿时长
18 weeks
期刊介绍: emote Sensing in Ecology and Conservation provides a forum for rapid, peer-reviewed publication of novel, multidisciplinary research at the interface between remote sensing science and ecology and conservation. The journal prioritizes findings that advance the scientific basis of ecology and conservation, promoting the development of remote-sensing based methods relevant to the management of land use and biological systems at all levels, from populations and species to ecosystems and biomes. The journal defines remote sensing in its broadest sense, including data acquisition by hand-held and fixed ground-based sensors, such as camera traps and acoustic recorders, and sensors on airplanes and satellites. The intended journal’s audience includes ecologists, conservation scientists, policy makers, managers of terrestrial and aquatic systems, remote sensing scientists, and students. Remote Sensing in Ecology and Conservation is a fully open access journal from Wiley and the Zoological Society of London. Remote sensing has enormous potential as to provide information on the state of, and pressures on, biological diversity and ecosystem services, at multiple spatial and temporal scales. This new publication provides a forum for multidisciplinary research in remote sensing science, ecological research and conservation science.
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