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Fusion of imaging spectroscopy and airborne laser scanning data for characterization of forest ecosystems - A review

机译:融合成像光谱学和机载激光扫描数据表征森林生态系统-综述

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Forest ecosystems play an important role in the global carbon cycle and it is largely unknown how this role might be altered by transients imposed by global change and deforestation. Remote sensing can provide information on ecosystem state and functioning and, among others, two remote sensing techniques, airborne laser scanning (ALS) and imaging spectroscopy (IS), have been used to characterize forest ecosystems, both independently and combined in fusion approaches. However, the fusion of these data-sets should make the best use of the complementarity of both sensors and provide better and more robust vegetation products in forested ecosystems. Similar to other data fusion approaches, satisfying results depend on choosing appropriate fusion levels and methods. In this review paper, we summarize and classify relevant studies that focused on forest characterization using combined ALS and IS data, limited to the last decade. We classified the approaches by fusion level (data or product level) and by choice of methods (physical or empirical methods). Five different categories of products (landcover maps, aboveground biomass, biophysical parameters, grosset primary productivity and biochemical parameters), have been found as the main aspects of forest ecosystems studied so far. A qualitative accuracy analysis of the products exposed that currently landcover maps are profiting the most from ALS and IS data fusion, while there is room for improvements in respect to the other products, such as biophysical parameters. Only few studies using physical approaches were found, but we expect the use of such approaches will increase with the growing availability of physically based radiative transfer models that can simulate both, ALS and IS data.
机译:森林生态系统在全球碳循环中起着重要的作用,但目前尚不清楚如何由全球变化和森林砍伐所造成的瞬变来改变这种作用。遥感可以提供有关生态系统状态和功能的信息,除其他外,两种遥感技术,即机载激光扫描(ALS)和成像光谱学(IS),已被用于表征森林生态系统,既可以独立地也可以融合在一起使用。但是,这些数据集的融合应充分利用两个传感器的互补性,并在森林生态系统中提供更好,更坚固的植被产品。与其他数据融合方法类似,令人满意的结果取决于选择适当的融合级别和方法。在这篇综述文件中,我们总结并分类了相关研究,这些研究集中在使用结合ALS和IS数据的森林表征中,仅限于最近十年。我们通过融合级别(数据或产品级别)和方法选择(物理或经验方法)对方法进行了分类。到目前为止,已发现五种不同的产品类别(土地覆盖图,地上生物量,生物物理参数,总/净初级生产力和生化参数),这是森林生态系统的主要研究内容。对目前暴露的土地覆盖图从ALS和IS数据融合中获利最大的产品进行定性准确性分析,同时在其他产品(例如生物物理参数)方面还有改进的余地。仅发现了很少的使用物理方法的研究,但是我们希望随着基于物理的可以模拟ALS和IS数据的辐射传输模型的可用性的增加,此类方法的使用也会增加。

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