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Automated Detection of Cloud and Cloud Shadow in Single-Date Landsat Imagery Using Neural Networks and Spatial Post-Processing

机译:使用神经网络和空间后处理自动检测单日Landsat影像中的云和云阴影

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The use of Landsat data to answer ecological questions is greatly increased by the effective removal of cloud and cloud shadow from satellite images. We develop a novel algorithm to identify and classify clouds and cloud shadow, SPARCS: Spatial Procedures for Automated Removal of Cloud and Shadow. The method uses a neural network approach to determine cloud, cloud shadow, water, snow/ice and clear sky classification memberships of each pixel in a Landsat scene. It then applies a series of spatial procedures to resolve pixels with ambiguous membership by using information, such as the membership values of neighboring pixels and an estimate of cloud shadow locations from cloud and solar geometry. In a comparison with FMask, a high-quality cloud and cloud shadow classification algorithm currently available, SPARCS performs favorably, with substantially lower omission errors for cloud shadow (8.0% and 3.2%), only slightly higher omission errors for clouds (0.9% and 1.3%, respectively) and fewer errors of commission (2.6% and 0.3%). Additionally, SPARCS provides a measure of uncertainty in its classification that can be exploited by other algorithms that require clear sky pixels. To illustrate this, we present an application that constructs obstruction-free composites of images acquired on different dates in support of a method for vegetation change detection.
机译:通过有效去除卫星图像中的云和云影,大大增加了使用Landsat数据回答生态问题的机会。我们开发了一种新颖的算法来识别和分类云和云影,即SPARCS:自动去除云影的空间过程。该方法使用神经网络方法来确定Landsat场景中每个像素的云,云影,水,雪/冰和晴空分类成员资格。然后,它使用一系列空间过程来通过使用信息来解析具有模糊隶属关系的像素,例如相邻像素的隶属值以及根据云和太阳几何对云阴影位置的估计。与目前可用的高质量云和云阴影分类算法FMask相比,SPARCS表现出色,云阴影的遗漏误差低得多(分别为8.0%和3.2%),云的遗漏误差仅略高(0.9%和0.9%)。分别为1.3%和更少的佣金错误(2.6%和0.3%)。此外,SPARCS提供了一种分类不确定性的度量,可以由需要晴朗天空像素的其他算法来利用。为了说明这一点,我们提出了一种应用程序,该应用程序构建了在不同日期获取的图像的无障碍合成物,以支持植被变化检测方法。

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