从遥感发展森林描述:来自新西兰的见解

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Grant D. Pearse , Sadeepa Jayathunga , Nicolò Camarretta , Melanie E. Palmer , Benjamin S.C. Steer , Michael S. Watt , Pete Watt , Andrew Holdaway
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引用次数: 0

摘要

遥感越来越多地被用于创建大规模的森林描述。在新西兰,辐射松(Pinus radiata)人工林在林业部门占主导地位,目前的国家森林描述缺乏明确的空间信息,难以获取小规模森林的数据。这一点很重要,因为这些森林预计将对未来的木材供应和碳封存作出重大贡献。本研究展示了吉斯本地区(一个主要的森林生长区)基于遥感的空间明确森林描述的发展。我们将基于深度学习的高分辨率航空图像森林制图与区域机载激光扫描(ALS)数据相结合,绘制了所有人工林并估计了关键属性。深度学习模型准确地描绘了人工林,包括大庄园、小林地和种植后3年新建立的林分。它在保留的数据集上实现了0.94的交集,0.96的精度和0.98的召回。als模型在估算平均顶高、茎总积和林龄方面表现良好(R2分别为0.94、0.82和0.94)。由此产生的空间明确的森林描述提供了所有大小森林的森林范围、年龄和体积的全面信息。这使得木材供应预测、采伐计划和基础设施投资决策的关键变量分层成为可能。我们提出了基于卫星的采伐检测和数字摄影测量来不断更新原始森林描述。这种方法可以对所有尺度的人工林进行近乎实时的监测,并适用于具有类似数据的其他区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a forest description from remote sensing: Insights from New Zealand
Remote sensing is increasingly being used to create large-scale forest descriptions. In New Zealand, where radiata pine (Pinus radiata) plantations dominate the forestry sector, the current national forest description lacks spatially explicit information and struggles to capture data on small-scale forests. This is important as these forests are expected to contribute significantly to future wood supply and carbon sequestration. This study demonstrates the development of a spatially explicit, remote sensing-based forest description for the Gisborne region, a major forest growing area. We combined deep learning-based forest mapping using high-resolution aerial imagery with regional airborne laser scanning (ALS) data to map all planted forest and estimate key attributes. The deep learning model accurately delineated planted forests, including large estates, small woodlots, and newly established stands as young as 3-years post planting. It achieved an intersection over union of 0.94, precision of 0.96, and recall of 0.98 on a withheld dataset. ALS-derived models for estimating mean top height, total stem volume, and stand age showed good performance (R2 = 0.94, 0.82, and 0.94 respectively). The resulting spatially explicit forest description provides wall-to-wall information on forest extent, age, and volume for all sizes of forest. This enables stratification by key variables for wood supply forecasting, harvest planning, and infrastructure investment decisions. We propose satellite-based harvest detection and digital photogrammetry to continuously update the initial forest description. This methodology enables near real-time monitoring of planted forests at all scales and is adaptable to other regions with similar data availability.
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来源期刊
CiteScore
12.20
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