首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Blind cloud and cloud shadow removal of multitemporal images based on total variation regularized low-rank sparsity decomposition
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Blind cloud and cloud shadow removal of multitemporal images based on total variation regularized low-rank sparsity decomposition

机译:基于总变化正则化低秩稀疏分解的多时相图像盲云和云影去除

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摘要

Cloud and cloud shadow (cloud/shadow) removal from multitemporal satellite images is a challenging task and has elicited much attention for subsequent information extraction. Regarding cloud/shadow areas as missing information, low-rank matrix/tensor completion based methods are popular to recover information undergoing cloud/shadow degradation. However, existing methods required to determine the cloud/shadow locations in advance and failed to completely use the latent information in cloud/shadow areas. In this study, we propose a blind cloud/shadow removal method for time-series remote sensing images by unifying cloud/shadow detection and removal together. First, we decompose the degraded image into low-rank clean image (surface-reflected) component and sparse (cloud/shadow) component, which can simultaneously and completely use the underlying characteristics of these two components. Meanwhile, the spatial -spectral total variation regularization is introduced to promote the spatial-spectral continuity of the cloud/shadow component. Second, the cloud/shadow locations are detected from the sparse component using a threshold method. Finally, we adopt the cloud/shadow detection results to guide the information compensation from the original observed images to better preserve the information in cloud/shadow-free locations. The problem of the proposed model is efficiently addressed using the alternating direction method of multipliers. Both simulated and real datasets are performed to demonstrate the effectiveness of our method for cloud/shadow detection and removal when compared with other state-of-the-art methods.
机译:从多时相卫星图像中去除云和云阴影(云/阴影)是一项艰巨的任务,并引起了后续信息提取的广泛关注。关于云/阴影区域作为丢失的信息,基于低秩矩阵/张量完成的方法普遍用于恢复遭受云/阴影退化的信息。但是,现有的方法需要提前确定云/阴影位置,并且无法完全使用云/阴影区域中的潜在信息。在这项研究中,我们提出了一种通过统一云/阴影检测和去除方法来对时间序列遥感图像进行盲云/阴影去除的方法。首先,我们将退化的图像分解为低等级的干净图像(表面反射)分量和稀疏(云/阴影)分量,它们可以同时并完全利用这两个分量的基本特征。同时,引入空间光谱总变化正则化以促进云/阴影分量的空间光谱连续性。其次,使用阈值方法从稀疏组件中检测云/阴影位置。最后,我们采用云/阴影检测结果来指导原始观测图像的信息补偿,以更好地将信息保存在无云/无阴影的位置。使用乘法器的交替方向方法可以有效地解决所提出模型的问题。与其他最新方法相比,模拟数据集和真实数据集的执行都证明了我们的方法对云/阴影检测和去除的有效性。

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