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A Cloud Removal Algorithm to Generate Cloud and Cloud Shadow Free Images Using Information Cloning

机译:使用信息克隆生成云和云阴影自由图像的云删除算法

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摘要

One of the main problems of optical remote sensing is clouds and cloud shadows caused by specific atmospheric conditions during data acquisition. These features limit the usage of acquired images and increase the difficulty in data analysis, such as normalized difference vegetation index values, misclassification, and atmospheric correction. Accurate detection and reliable cloning of cloud and cloud shadow features in satellite images are very useful processes for optical remote sensing applications. In this study, an automated cloud removal algorithm to generate cloud and cloud shadow free images from multitemporal Landsat-8 images is introduced. Cloud and cloud shadow areas are classified by using process-based rule set developed by using spectral and spatial features after applying simple linear iterative clustering superpixel segmentation algorithm to the image to find cloud pixel groups easily and correctly. Segmentation-based cloud detection method gives better results than pixel-based for detection of cloud and cloud shadow patches. After detection of clouds and cloud shadows, cloud-free images are created by cloning cloudless regions from multitemporal dataset. Spectral and structural consistency are preserved by considering spectral features and seasonal effects while cloning process. Statistical similarity tests are applied to find best cloud-free image to use for cloning process. Cloning results are tested with the structural similarity index metric to evaluate the performance of cloning algorithm.
机译:光学遥感的主要问题之一是在数据采集期间由特定的大气条件引起的云和云阴影。这些特征限制了所获取的图像的使用,并提高数据分析的难度,例如归一化差异植被指标值,错误分类和大气校正。卫星图像中的云和云阴影特征的准确检测和可靠克隆是光学遥感应用的非常有用的过程。在本研究中,引入了一种自动云移除算法,用于生成来自多模车LANDSAT-8图像的云和云阴影自由图像。通过使用基于过程的规则集来分类云和云阴影区域通过在将简单的线性迭代集群超顶序算法应用于图像以便轻松且正确地查找云像素组。基于分段的云检测方法提供比基于像素的更好的结果,以检测云和云阴影斑块。在检测到云和云阴影之后,通过克隆来自多立体数据集的无云区域来创建无云图像。通过考虑克隆过程的频谱特征和季节性效果,保留光谱和结构一致性。统计相似性测试应用于找到最佳无云图像以用于克隆过程。用结构相似性指数度量测试克隆结果来评估克隆算法的性能。

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