首页> 外文会议>the Biennial Workshop on Aerial Photography, Videography,and High Resolution Digital Imagery for Resource Assessment >PRELIMINARY SPECTRAL ASSESSMENT OF LAGUNA MADRE WATER FEATURES USING AISA+ HYPERSPECTRAL DATA
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PRELIMINARY SPECTRAL ASSESSMENT OF LAGUNA MADRE WATER FEATURES USING AISA+ HYPERSPECTRAL DATA

机译:利用AISA +高光谱数据Laguna Madre水分的初步光谱评估

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Two hundred forty four-band (.39-.97 mum), 1.5 meter resolution, AISA+ hyperspectral data were acquired by Indiana State University and the USDA-ARS, Weslaco, TX in early March 2005. These data were acquired from areas in South Padre Island (SPI), Lower Laguna Madre (LLM) and terrestrial fresh water in the Lower Rio Grande Valley. Preliminary analysis of hyperspectral scenes acquired from the hypersaline LLM was conducted focusing on seagrass and brown tide algal blooms. Insights into basic patterns of seagrass density, water depth, and lagoon bottom feature conditions were provided in a LLM study area near SPI through analysis of unsupervised and supervised classification results that used hyperspectral data subsets in original and principal component forms. Texas brown tide algal blooms and spectral variation patterns within them were identified and analyzed in a LLM study area. Hyperspectral data analysis indicated that important LLM seagrass and associated features are possible to identify. This research supports future use of AISA+ data to acquire many types of water, seagrass, and associated parameter information. Development of data most useful for monitoring and modeling requires the integration of spectral data acquired nearly concurrently with detailed data from field sampling.
机译:印第安纳州立大学和2005年3月初,印第安纳州立大学和USDA-Ars,Weslaco,Weslaco,Weslaco,Wesda-Ars,Wesda-Ars,Wesda-Ars,Weslaco,Wesda-Ars,Wesda-Ars,ZX,Wesda-Ars。这些数据是从南方的地区获得的Padre岛(SPI),下拉古纳Madre(LLM)和下Rio Grande Valley的陆地淡水。从纯净的LLM获得的高光谱场景的初步分析专注于海草和棕色潮汐藻类绽放。在SPI附近的LLM研究区域内提供了海草密度,水深和泻湖底部特征条件的基本模式的见解,通过分析了原始和主成分形式的超光数据子集的无监督和监督分类结果。在LLM研究区域中鉴定并分析了它们内的德克萨斯棕色潮藻盛盛和光谱变化模式。高光谱数据分析表明,重要的LLM海草和相关特征是可以识别的。本研究支持未来使用AISA +数据以获取许多类型的水,海草和相关参数信息。对监视和建模最有用的数据的开发需要与来自现场采样的详细数据相同时获取的频谱数据集成。

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