高寒地区森林动态的天基植被高度图的准确性和一致性

IF 5.7 Q1 ENVIRONMENTAL SCIENCES Science of Remote Sensing Pub Date : 2023-09-01 DOI:10.1016/j.srs.2023.100099
Yuchang Jiang , Marius Rüetschi , Vivien Sainte Fare Garnot , Mauro Marty , Konrad Schindler , Christian Ginzler , Jan D. Wegner
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引用次数: 0

摘要

监测和了解森林动态对环境保护和管理至关重要。这就是为什么瑞士国家森林调查(NFI)以0.5米的空间分辨率提供全国植被高度图的原因。然而,其更新时间长达6年,限制了森林动态的时间分析。这可以通过利用星载遥感和深度学习以经济有效的方式生成大规模植被高度图来改善。在本文中,我们对这些方法在瑞士的业务应用进行了深入分析。我们基于Sentinel-2卫星图像生成2017-2020年10米地面采样距离的年度全国植被高度图。与以前的工作相比,我们针对精确的机载激光扫描参考数据集进行了大规模和详细的分层分析。这种分层分析揭示了模型精度与拓扑结构,特别是坡度和坡向之间的密切关系。我们评估了深度学习衍生的高度图用于变化检测的潜力,并发现这些图可以指示小至250 m2的变化。探测到冬季风暴引起的较大尺度变化,f1得分为0.77。我们的研究结果表明,通过深度学习从卫星图像中计算出的植被高度图是一种有价值的、互补的、具有成本效益的证据来源,可以提高国家森林评估的时间分辨率。
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Accuracy and consistency of space-based vegetation height maps for forest dynamics in alpine terrain

Monitoring and understanding forest dynamics is essential for environmental conservation and management. This is why the Swiss National Forest Inventory (NFI) provides countrywide vegetation height maps at a spatial resolution of 0.5 m. Its long update time of 6 years, however, limits the temporal analysis of forest dynamics. This can be improved by using spaceborne remote sensing and deep learning to generate large-scale vegetation height maps in a cost-effective way. In this paper, we present an in-depth analysis of these methods for operational application in Switzerland. We generate annual, countrywide vegetation height maps at a 10-m ground sampling distance for the years 2017–2020 based on Sentinel-2 satellite imagery. In comparison to previous works, we conduct a large-scale and detailed stratified analysis against a precise Airborne Laser Scanning reference dataset. This stratified analysis reveals a close relationship between the model accuracy and the topology, especially slope and aspect. We assess the potential of deep learning-derived height maps for change detection and find that these maps can indicate changes as small as 250 m2. Larger-scale changes caused by a winter storm are detected with an F1-score of 0.77. Our results demonstrate that vegetation height maps computed from satellite imagery with deep learning are a valuable, complementary, cost-effective source of evidence to increase the temporal resolution for national forest assessments.

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