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A Sparse Dictionary Learning-Based Adaptive Patch Inpainting Method for Thick Clouds Removal from High-Spatial Resolution Remote Sensing Imagery

机译:基于稀疏字典学习的自适应补丁修补方法从高空间分辨率遥感影像中去除厚云

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摘要

Cloud cover is inevitable in optical remote sensing (RS) imagery on account of the influence of observation conditions, which limits the availability of RS data. Therefore, it is of great significance to be able to reconstruct the cloud-contaminated ground information. This paper presents a sparse dictionary learning-based image inpainting method for adaptively recovering the missing information corrupted by thick clouds patch-by-patch. A feature dictionary was learned from exemplars in the cloud-free regions, which was later utilized to infer the missing patches via sparse representation. To maintain the coherence of structures, structure sparsity was brought in to encourage first filling-in of missing patches on image structures. The optimization model of patch inpainting was formulated under the adaptive neighborhood-consistency constraint, which was solved by a modified orthogonal matching pursuit (OMP) algorithm. In light of these ideas, the thick-cloud removal scheme was designed and applied to images with simulated and true clouds. Comparisons and experiments show that our method can not only keep structures and textures consistent with the surrounding ground information, but also yield rare smoothing effect and block effect, which is more suitable for the removal of clouds from high-spatial resolution RS imagery with salient structures and abundant textured features.
机译:由于观测条件的影响,在光学遥感(RS)图像中不可避免会出现云层,这限制了RS数据的可用性。因此,重建受云污染的地面信息具有重要意义。本文提出了一种基于稀疏词典学习的图像修复方法,用于自适应地逐层修复厚云破坏的丢失信息。从无云区域的示例中学习了一个特征字典,该字典随后用于通过稀疏表示来推断缺失的补丁。为了保持结构的连贯性,引入了结构稀疏性以鼓励首先填充图像结构上缺失的色块。在自适应邻域一致性约束条件下,建立了补丁修补的优化模型,并通过改进的正交匹配追踪(OMP)算法进行求解。根据这些想法,设计了浓云去除方案并将其应用于具有模拟云和真实云的图像。比较和实验表明,我们的方法不仅可以使结构和纹理与周围地面信息保持一致,而且还可以产生罕见的平滑效果和块效果,更适合于从具有显着结构的高空间分辨率RS影像中去除云和丰富的纹理特征。

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