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Cloud detection in all-sky images via multi-scale neighborhood features and multiple supervised learning techniques

机译:通过多尺度邻域特征和多种监督学习技术在全天图像中的云检测

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Cloud detection is important for providing necessary information such as cloud cover in many applications. Existing cloud detection methods include red-to-blue ratio thresholding and other classification-based techniques. In this paper, we propose to perform cloud detection using supervised learning techniques with multi-resolution features. One of the major contributions of this work is that the features are extracted from local image patches with different sizes to include local structure and multi-resolution information. The cloud models are learned through the training process. We consider classifiers including random forest, support vector machine, and Bayesian classifier. To take advantage of the clues provided by multiple classifiers and various levels of patch sizes, we employ a voting scheme to combine the results to further increase the detection accuracy. In the experiments, we have shown that the proposed method can distinguish cloud and non-cloud pixels more accurately compared with existing works.
机译:云检测对于提供许多应用中的云覆盖等必要信息非常重要。现有的云检测方法包括红蓝比率阈值和基于其他分类的技术。在本文中,我们建议使用具有多分辨率功能的监督学习技术来执行云检测。这项工作的主要贡献之一是,具有不同尺寸的本地图像斑块提取特征,以包括本地结构和多分辨率信息。通过培训过程学习云模型。我们认为分类器包括随机森林,支持向量机和贝叶斯分类器。为了利用多个分类器提供的线索和各种级别的补丁尺寸,我们采用了投票方案来组合结果以进一步提高检测精度。在实验中,我们已经表明,与现有的工作相比,所提出的方法可以更准确地区分云和非云像素。

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