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Use of Markov Random Fields for automatic cloud/shadow detection on high resolution optical images

机译:使用马尔可夫随机场对高分辨率光学图像进行自动云/阴影检测

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In this study, we propose an automatic detection algorithm for cloud/shadow on remote sensing optical images. It is based on physical properties of clouds and shadows, namely for a cloud and its associated shadow: both are connex objects of similar shape and area, and they are related by their relative locations. We show that these properties can be formalized using Markov Random Field (MRF) framework at two levels: one MRF over the pixel graph for connexity modelling, and one MRF over the graph of objects (clouds and shadows) for their relationship modelling. Then, we show that, practically, having performed an image pre-processing step (channel inter-calibration) specific to cloud detection, the local optimization of the proposed MRF models leads to a rather simple image processing algorithm involving only six parameters. Using a 39 image database, performance is shown and discussed, in particular in comparison with the Marked Point Process approach.
机译:在这项研究中,我们提出了一种用于遥感光学图像上的云/阴影自动检测算法。它基于云和阴影(即云及其关联的阴影)的物理属性:都是形状和区域相似的连接对象,它们之间的相对位置相关。我们展示了可以在两个级别上使用马尔可夫随机场(MRF)框架来形式化这些属性:一个用于像素像素图的MRF用于连接性建模,另一个用于对象图(云和阴影)用于关系模型的MRF。然后,我们表明,实际上,在执行了特定于云检测的图像预处理步骤(通道相互校准)后,所提出的MRF模型的局部优化导致了一个仅包含六个参数的相当简单的图像处理算法。使用39图像数据库显示并讨论了性能,特别是与“标记点过程”方法进行了比较。

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