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An automated approach for segmenting and classifying a large sample of multi-date Landsat imagery for pan-tropical forest monitoring

机译:一种用于对大型多日期Landsat影像的大样本进行分割和分类以进行泛热带森林监测的自动化方法

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The TREES-3 project of the Joint Research Centre aims at assessing tropical forest cover changes for the periods 1990-2000 and 2000-2010 using a sample-based approach. This paper refers to the 1990-2000 assessment. Extracts of Landsat satellite imagery (20. km × 20. km) are analyzed for these reference dates for more than 4000 sample sites distributed systematically across the tropical belt. For the processing and analysis of such a large amount of satellite imagery a robust methodological approach for forest mapping and change detection has been developed. This approach comprises two automated steps of multi-date image segmentation and object-based land cover classification (based on a supervised spectral library), followed by an intense phase of visual control and expert refinement. Image segmentation is done at two spatial scales, introducing the concept of a minimum mapping unit via the automated selection of a site-specific scale parameter. The automated segmentation of land cover polygons and the pre-classification of land cover types mainly aim at avoiding manual delineation and at reducing the efforts of visual interpretation of land cover to a reasonable level, making the analysis of 4000 sample sites feasible. The importance of visual control and correction can be perceived when comparing to the initial automatic classification result: about 20% of the polygon labels were changed through expert knowledge by visual interpretation. The component of visual refinement of the mapping results had also a notable impact on forest area and change estimates: for a set of sample sites in Southeast Asia (~. 90% of all sites of SE-Asia) the rate of change in tree cover (deforestation) was assessed at 0.9% and 1.6% before and after visual control, respectively.
机译:联合研究中心的TREES-3项目旨在使用基于样本的方法评估1990-2000年和2000-2010年期间热带森林覆盖率的变化。本文指的是1990-2000年的评估。分析了这些参考日期的Landsat卫星影像提取物(20. km×20. km),以系统地分布在整个热带带上的4000多个采样点。为了处理和分析如此大量的卫星图像,已经开发了用于森林制图和变化检测的可靠的方法学方法。该方法包括两个自动步骤:多日期图像分割和基于对象的土地覆被分类(基于监督的光谱库),然后是视觉控制和专家完善的紧张阶段。在两个空间尺度上完成图像分割,通过自动选择特定于站点的尺度参数引入最小映射单元的概念。土地覆盖物多边形的自动分割和土地覆盖物类型的预分类主要是为了避免人工划定,并将视觉解释土地覆盖物的工作减少到合理的水平,从而使对4000个样本点的分析成为可能。与最初的自动分类结果相比,可以看出视觉控制和校正的重要性:大约20%的多边形标签是通过视觉解释的专家知识而更改的。映射结果的视觉优化部分也对森林面积和变化估计值产生了显着影响:对于东南亚的一组样本站点(约占东南亚所有站点的90%),树木覆盖率发生了变化视觉控制前后的森林砍伐(森林砍伐)评估为0.9%和1.6%。

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