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A biogeophysical approach for automated SWIR unmixing of soils and vegetation

机译:土壤和植被自动SWIR分解的生物地球物理方法

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Arid and semiarid ecosystems endure strong spatial and temporal variation of climate and land use that results in uniquely dynamic vegetation phenology, cover, and leaf area characteristics Previous remote sensing efforts have not fully captured the spatial heterogeneity of vegetation properties required for functional analyses of these ecosystems, or have done so only with manually intensive algorithms of spectral mixture analysis that have limited operational use. Those limitations motivated the development of an automated spectral unmixing approach based on, a comprehensive analysis of vegetation and soil spectral variability resulting from biogeophysical variation in arid and semiarid regions. A field spectroscopic database of bare soils, green canopies, and litter canopies was compiled for 17 arid and semiarid sites in North and South America, representing a wide array of plant growth forms and species, vegetation conditions, and soil mineralogical-hydrological properties. Spectral reflectance of dominant cover types (green vegetation, litter, and bare soil) varied widely within and between sites, but the reflectance derivatives in the shortwave-infrared (SWIR2: 2,100-2,400 nm) were similar within and separable between each cover type. Using this result, art automated SWIR2 spectral unmixing algorithm was developed that includes a Monte Carlo approach for estimating errors in derived subpixel cover fractions resulting from endmember variability. The algorithm was applied to SWIR2 spectral data collected by the Airborne Visible and infrared Imaging Spectrometer instrument over the Sevilleta and Jornada Long-Term Ecological Re-search sites. Subsequent comparisons to field data and geographical information system (GIS) maps were deemed successful. The SWIR2 region of the reflected solar spectrum provides a robust means to estimate the extent of bare soil and vegetation covers in arid and semiarid regions. The computationally efficient method developed here could be extended globally using SWIR2 spectrometer data to be collected from platforms such as the NASA Earth Observing-1 satellite. (C) Elsevier Science Inc., 2000. [References: 39]
机译:干旱和半干旱的生态系统承受着强烈的气候和土地利用的时空变化,从而导致独特的动态植被物候,覆盖和叶面积特征。 ,或者仅使用手动密集型频谱混合分析算法来完成此操作,而这些算法的使用范围有限。这些局限性推动了自动光谱解混方法的发展,该方法基于对干旱和半干旱地区生物地球物理变化产生的植被和土壤光谱变化的综合分析。针对北美和南美的17个干旱和半干旱地点,建立了裸露的土壤,绿色的冠层和凋落的冠层的野外光谱数据库,代表了各种各样的植物生长形式和物种,植被状况以及土壤矿物水文学特性。站点内部和站点之间主要覆盖类型(绿色植被,凋落物和裸露土壤)的光谱反射率差异很大,但是短波红外(SWIR2:2,100-2,400 nm)的反射率导数在每个覆盖类型内部相似且可分离。利用这一结果,开发了一种自动SWIR2光谱解混算法,该算法包括一种蒙特卡洛方法,用于估算由端成员可变性导致的子像素覆盖分数的误差。该算法已应用于机载可见光和红外成像光谱仪仪器在塞维利亚和乔纳达长期生态研究站点上收集的SWIR2光谱数据。随后对现场数据和地理信息系统(GIS)地图的比较被认为是成功的。反射太阳光谱的SWIR2区域为估算干旱和半干旱地区裸土和植被的覆盖范围提供了一种可靠的方法。可以使用SWIR2光谱仪数据从NASA Earth Observing-1卫星等平台收集在全球范围内扩展此处开发的计算有效方法。 (C)Elsevier Science Inc.,2000年。[参考:39]

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