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Assessment of Hyperspectral Sharpening Methods for the Monitoring of Natural Areas Using Multiplatform Remote Sensing Imagery

机译:利用多平台遥感影像评估自然区域监测的高光谱锐化方法

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The use of cutting-edge geospatial technologies to monitor ecosystems and the development of tailored tools for assessing such natural areas is a fundamental task. In this context, the growing availability of hyperspectral (HS) imagery from satellite and aerial platforms can provide valuable information for the sustainable management of ecosystems. However, in some cases, the spectral richness provided by HS sensors is at the expense of spatial quality. To alleviate this inconvenience, which can be critical to monitor some heterogeneous and mixed natural areas, a number of HS sharpening techniques have been developed to increase the spatial resolution while trying to preserve the spectral content. This image processing field has attracted the interest of the scientific community, and many research studies have been conducted to assess the performance of different HS sharpening algorithms. In the last decade, however, many comparative studies rely upon simulated data. In this work, the challenging application of sharpening methods in real situations using multiplatform or multisensor data is also addressed. Thus, experiments with real data have been conducted, in addition to a thorough assessment of HS sharpening techniques using simulated imagery in scenarios with different spatial resolution ratios and registration errors. In particular, airborne and satellite HS imageries have been pansharpened with drone, orthophotos, and satellite high spatial resolution data evaluating 11 fusion algorithms. After a comprehensive analysis, considering different visual and quantitative quality indicators, the algorithm characteristics have been summarized and the methods with higher performance and robustness have been identified.
机译:基本的任务是利用尖端的地理空间技术监测生态系统,并开发用于评估此类自然区域的量身定制的工具。在这种情况下,来自卫星和空中平台的高光谱(HS)图像的可用性不断增长,可以为生态系统的可持续管理提供有价值的信息。但是,在某些情况下,HS传感器提供的光谱丰富度是以空间质量为代价的。为了减轻这种不便,这对于监视某些异构和混合的自然区域可能至关重要,已经开发了多种HS锐化技术,以在试图保留光谱内容的同时提高空间分辨率。该图像处理领域引起了科学界的兴趣,并且已经进行了许多研究来评估不同的HS锐化算法的性能。但是,在过去的十年中,许多比较研究都依赖于模拟数据。在这项工作中,还解决了使用多平台或多传感器数据在实际情况下锐化方法的挑战性应用。因此,除了在具有不同空间分辨率比率和配准误差的情况下使用模拟图像对HS锐化技术进行了全面评估之外,还进行了使用真实数据的实验。尤其是,机载和卫星HS图像已使用无人机,正射影像和卫星高空间分辨率数据进行了全面锐化,评估了11种融合算法。经过综合分析,考虑了不同的视觉和定量质量指标,总结了算法的特点,并确定了性能和鲁棒性更高的方法。

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