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Recovering Quantitative Remote Sensing Products Contaminated by Thick Clouds and Shadows Using Multitemporal Dictionary Learning

机译:使用多时相字典学习来恢复被浓云和阴影污染的定量遥感产品

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摘要

With regard to quantitative remote sensing products in the visible and infrared ranges, thick clouds and accompanying shadows are an inevitable source of noise. Due to the absence of adequate supporting information from the data themselves, it is a formidable challenge to accurately restore the surficial information underlying large-scale clouds. In this paper, dictionary learning is expanded into the multitemporal recovery of quantitative data contaminated by thick clouds and shadows. This paper proposes two multitemporal dictionary learning algorithms, expanding on their KSVD and Bayesian counterparts. In order to make better use of the temporal correlations, the expanded KSVD algorithm seeks an optimized temporal path, and the expanded Bayesian method adaptively weights the temporal correlations. In the experiments, the proposed algorithms are applied to a reflectance product and a land surface temperature product, and the respective advantages of the two algorithms are investigated. The results show that, from both the qualitative visual effect and the quantitative objective evaluation, the proposed methods are effective.
机译:对于可见光和红外范围内的定量遥感产品,浓云和伴随的阴影是不可避免的噪声源。由于数据本身缺乏足够的支持信息,因此要准确地恢复大规模云基础的表面信息是一项艰巨的挑战。在本文中,字典学习被扩展到了对被厚厚的云层和阴影污染的定量数据的多时间恢复。本文提出了两种多时相词典学习算法,分别在其KSVD和贝叶斯算法上进行了扩展。为了更好地利用时间相关性,扩展的KSVD算法寻求优化的时间路径,并且扩展的贝叶斯方法自适应地加权时间相关性。在实验中,将所提出的算法应用于反射率积和地表温度积,并研究了这两种算法各自的优点。结果表明,从定性视觉效果和定量客观评价两方面来看,该方法都是有效的。

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