Research on Hyperspectral Surface Reflectance Dataset of Typical Ore Concentration Area in Hami Remote Sensing Test Field

Shuneng Liang, Yang Li, Hongyan Wei, Lina Dong, Jiaheng Zhang, Chenchao Xiao
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Abstract

Abstract. Surface reflectance data is the basic data source for the hyperspectral parametric remote sensing products and remote sensing quantitative application, which is widely used in various application fields such as natural resources and ecological environment monitoring. At present, multispectral data takes the leading role among the common land surface reflectance datasets and the reflectance data mainly involves the types of ground objects such as farmland, forest land, water body, soil, etc., while the datasets relatively less targets the types of rock and mineral surface objects, yet especially the reflectance datasets with the combination of time series and multi-scale satellite-earth are even more scarce. In order to better promote the application of hyperspectral surface reflectance and explore the advantages of joint application of satellite-earth multi-scale reflectance data, on the basis of field-measured rock and mineral target spectral, a comprehensive surface reflectance dataset was generated by using domestically produced hyperspectral satellite data as the data source in this study, mainly focusing on the typical ore concentration area in the Hami Remote Sensing test field in Xinjiang. The dataset includes multi-period hyperspectral satellite surface reflectance images, field measured rock and mineral spectral data, and multi-period sub-pixel spectral data collected based on ground spectral measured points, which can provide significant support for the research and development and accuracy verification as well as performance evaluation of algorithms such as surface reflectance inversion, mineral identification and ground object classification.
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哈密遥感试验场典型矿石集中区高光谱地表反射率数据集研究
摘要地表反射率数据是高光谱参数化遥感产品和遥感定量应用的基础数据源,广泛应用于自然资源和生态环境监测等多个应用领域。目前常见的地表反射率数据集以多光谱数据为主,反射率数据主要涉及耕地、林地、水体、土壤等地表对象类型,针对岩石、矿物等地表对象类型的数据集相对较少,尤其是结合时间序列和多尺度卫星大地的反射率数据集更为稀缺。为了更好地推广高光谱地表反射率的应用,探索星地多尺度反射率数据联合应用的优势,本研究以野外实测岩矿目标光谱为基础,以新疆哈密遥感试验场典型矿石集中区为主要研究对象,以国产高光谱卫星数据为数据源,生成了综合地表反射率数据集。该数据集包括多周期高光谱卫星地表反射率影像、野外实测岩石和矿物光谱数据,以及基于地面光谱测点采集的多周期亚像素光谱数据,可为地表反射率反演、矿物识别和地面目标分类等算法的研发、精度验证和性能评估提供重要支撑。
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