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Hyperion, IKONOS, ALI, and ETM+ sensors in the study of African rainforests

机译:Hyperion,IKONOS,ALI和ETM +传感器在非洲雨林研究中

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The goal of this research was to compare narrowband hyperspectral Hyperion data with broadband hyperspatial IKONOS data and advanced multispectral Advanced Land Imager (ALI) and Landsat-7 Enhanced Thematic Mapper Plus (ETM+) data through modeling and classifying complex rainforest vegetation. For this purpose, Hyperion, ALI, IKONOS, and ETM+ data were acquired for southern Cameroon, a region considered to be a representative area for tropical moist evergreen and semi-deciduous forests. Field data, collected in near-real time to coincide with satellite sensor overpass, were used to (1) quantify and model the biomass of tree, shrub, and weed species; and (2) characterize forestland use/land cover (LULC) classes. The study established that even the most advanced broadband sensors (i.e., ETM+, IKONOS, and ALI) had serious limitations in modeling biomass and in classifying forest LULC classes. The broadband models explained only 13-60% of the variability in biomass across primary forests, secondary forests, and fallows. The overall accuracies were between 42% and 51% for classifying nine complex rainforest LULC classes using the broadband data of these sensors. Within individual vegetation types (e.g., primary or secondary forest), the overall accuracies increased slightly, but followed a similar trend. Among the broadband sensors, ALI sensor performed better than the IKONOS and ETM+ sensors. When compared to the three broadband sensors, Hyperion narrowband data produced (1) models that explained 36-83% more of the variability in rainforest biomass, and (2) LULC classifications with 45-52% higher overall accuracies. Twenty-three Hyperion narrowbands that were most sensitive in modeling forest biomass and in classifying forest LULC classes were identified and discussed.
机译:这项研究的目的是通过对复杂的热带雨林植被进行建模和分类,将窄带高光谱Hyperion数据与宽带超空间IKONOS数据,先进的多光谱高级土地成像仪(ALI)和Landsat-7增强的专题制图仪(ETM +)数据进行比较。为此,获取了喀麦隆南部的Hyperion,ALI,IKONOS和ETM +数据,该地区被认为是热带潮湿常绿和半落叶林的代表地区。与卫星传感器天桥相近地实时收集的现场数据被用于(1)量化和建模树木,灌木和杂草物种的生物量; (2)表征林地用途/土地覆被(LULC)类。该研究表明,即使是最先进的宽带传感器(即ETM +,IKONOS和ALI)在生物量建模和森林LULC分类方面也存在严重的局限性。宽带模型仅解释了原始森林,次生森林和休耕地生物量变化的13-60%。使用这些传感器的宽带数据对九个复杂的雨林LULC类别进行分类的总体准确度在42%到51%之间。在单个植被类型(例如原始森林或次生森林)中,总体精度略有提高,但趋势相似。在宽带传感器中,ALI传感器的性能优于IKONOS和ETM +传感器。与三个宽带传感器相比,Hyperion窄带数据产生的模型(1)解释的雨林生物量变异性高36-83%,(2)LULC分类的总体准确度高45-52%。识别并讨论了23种Hyperion窄带,它们在模拟森林生物量和分类森林LULC类中最敏感。

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