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CLOUD DETECTION FROM A SEQUENCE OF SST IMAGES

机译:SST图像序列的云检测

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A cloud detection algorithm mas designed as an adjunct to a companion edge-detection algorithm. The cloud detection integrates two distinct algorithms: one based on multiimage processing, the other on single-image analysis. The multiimage portion of the cloud detection algorithm operates on a time sequence of sea surface temperature (SST) images. It is designed to detect clouds associated with regions of apparently lower temperatures than the underlying SST field. A pixel in the current image is initially considered to be corrupted by clouds if it is significantly cooler than the corresponding pixel in a neighbor image. To refine the initial classificatlon, the algorithm checks the current image and the neighbor image for the presence of water masses, which through displacement could explain the change in temperature. The single-image cloud detection algorithm is designed to detect clouds associated with regions of the SST image where gradient vectors have a large magnitude. These regions are flagged in the map of potential clouds. Multiimage processing is integrated with the single-image algorithm by adding pixels classified as cloudy at the multiimage level to the map of potential clouds. Further analysis of the gradient vector field and of the shapes of potentially cloudy areas allows one to determine whether these regions correspond to clouds or SST fronts. A previous study has shown that the clouds identified by the single-image algorithm were in close agreement with those detected by a human expert. To validate the additional multiimage processing, the effect of the integrated cloud detection on the performance of a companion edge detection algorithm is examined. These results and a direct comparison with the cloud masks produced by a human expert indicate that, compared to the single-image algorithm, the multiimage algorithm successfully identify additional cloud-corrupted regions while keeping a Low rate for the detection of false clouds. [References: 18]
机译:云检测算法可以被设计为伴随边缘检测算法的辅助。云检测集成了两种不同的算法:一种基于多图像处理,另一种基于单图像分析。云检测算法的多图像部分在海面温度(SST)图像的时间序列上运行。它旨在检测与温度明显低于其底层SST场的区域相关的云。如果当前图像中的像素比相邻图像中的相应像素凉爽得多,则最初认为该像素已被云破坏。为了改进初始分类,该算法检查当前图像和邻居图像中是否存在水团,这可以通过位移来解释温度的变化。单图像云检测算法旨在检测与SST图像中梯度矢量幅度较大的区域相关的云。这些区域在潜在的云图上标记。通过将在多图像级别分类为多云的像素添加到潜在云图,将多图像处理与单图像算法集成在一起。对梯度矢量场和潜在的阴天区域的形状的进一步分析使人们能够确定这些区域是对应于云还是SST锋。先前的研究表明,单图像算法识别的云与人类专家检测到的云非常吻合。为了验证附加的多图像处理,检查了集成云检测对伴随边缘检测算法性能的影响。这些结果以及与人类专家生产的云遮罩的直接比较表明,与单图像算法相比,多图像算法成功地识别了其他云损坏的区域,同时保持了较低的伪云检测率。 [参考:18]

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