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Semi-Automatic Detection of Storm-Felled Forest Areas in Western Norway's Spruce Forests Using a Landsat Time Series and Change Detection

机译:使用LANDSAT时间序列和变更检测,半自动检测挪威云杉森林中的暴风雨污染林区

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Within the widely investigated field of forest disturbance monitoring, the detection of forest storm damages with remote sensing techniques gained rather low attention in the last years. This work aims to fill this gap. The project of storm damage detection, focusing on spruce forests, was initiated by the Norwegian Forest and Landscape Institute 'Skog og Landskap'. The triggering event for this investigation was the storm 'Dagmar' from December 2011. This storm event and its impact on spruce forests on Norway's west coast are investigated to develop a semi-automatic storm damage detection model. For detecting storm damages, primarily the question of adequate data pre-processing of Landsat 7 ETM+ is discussed. In the pre-processing stage, haze reduction, image-to-image registration, atmospheric and topographic correction are applied. The 'Wide Dynamic Range Vegetation Index' (WDRVI) is analysed and evaluated for its applicability when detecting forest storm damages. Pixel information from known storm areas is extracted, and compared with a focus on data distribution and the trend behaviour for different damage categories. A correlation was detected between the data trend of the WDRVI and the increasing damage percentages in the forest, showing an increase in WDRVI values for increasing damage percentages in the observed forest stands. Therefore, the WDRVI provides the best possibilities to detect storm damages in the study area. Through a non-linear regression analysis and 'Partitioning Around Medoids' classification (PAM), thresholds are derived from the WDRVI change image. Implementing those thresholds in an ERDAS 2013 spatial model, a tool is developed, which detects forest changes without the requirement of further user input. The only requirements are pre-processed Landsat 7 images before and after the storm, and a defined area of interest data (AOI), e.g. a vector-mask of spruce forests. Testing and evaluating the semiautomatic detection model on a larger AOI (covering almost a whole Landsat 7 scene) achieved an overall accuracy of 96.3% (Cohen's KAPPA of 0.94). With very good detection results, this investigation contributes to forest management and a faster response to storm damaged forest areas.
机译:在广泛调查的森林障碍监测领域内,在过去几年中,遥感技术的森林风暴损害损失率相当低。这项工作旨在填补这个差距。挪威森林和景观研究所的“横向陆地园”启动了风暴损伤检测项目,专注于云杉林。这项调查的触发事件是2011年12月的风暴“达球队”。这场风暴事件及其对挪威西海岸云杉森林的影响是调查了半自动风暴损伤检测模型。为了检测风暴损害,主要讨论了Landsat 7 ETM +的充分数据预处理的问题。在预处理阶段,雾化降低,图像到图像配准,大气和地形校正。分析并评估了“宽动态范围植被指数”(WDRVI)在检测森林风暴损害时的适用性。提取来自已知风暴区域的像素信息,并与不同损伤类别的数据分布和趋势行为进行比较。在WDRVI的数据趋势和森林中增加损伤百分比之间检测到相关性,显示出在观察到的森林站立的损伤百分比增加WDRVI值的增加。因此,WDRVI提供了检测研究区域中的风暴损害的最佳可能性。通过非线性回归分析和“围绕麦地区的分区”分类(PAM),阈值来自WDRVI变化图像。在ERDAS 2013空间模型中实现这些阈值,开发了一种工具,该工具是检测森林的变化,而不需要进一步的用户输入。唯一的要求是预处理风暴前后的预处理LANDSAT 7图像,以及限定的感兴趣区域(AOI),例如,云杉的森林矢量掩码。测试和评估较大AOI上的半自动检测模型(覆盖几乎整个Landsat 7场景),实现了96.3%的整体准确性(Cohen的Kappa为0.94)。探测结果非常好,这项调查有助于森林管理和对风暴受损的森林地区的速度更快。

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