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Developing a Forest Description from Remote Sensing: Insights from New Zealand

SCIENCE OF REMOTE SENSING(2025)

Flinders Univ S Australia | Scion | Indufor Asia Pacific

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Abstract
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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Key words
Forestry,Forest inventory,Lidar,Airborne laser scanning,Deep learning,Aerial imagery,Radiata pine
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要点】:本研究开发了一种基于遥感技术的新西兰吉斯伯恩地区森林描述方法,提高了对各类规模森林的空间显式信息获取能力,并通过深度学习和激光扫描数据提高了对小规模森林的监测精度。

方法】:研究采用深度学习模型处理高分辨率航空影像,结合区域机载激光扫描(ALS)数据,绘制所有种植森林并估算关键属性。

实验】:实验在吉斯伯恩地区进行,使用深度学习模型在保留数据集上达到了0.94的交并比、0.96的精确度和0.98的召回率,ALS衍生模型在估算平均树高、总茎体积和林龄方面表现良好(R2分别为0.94、0.82和0.94)。