Cloud detection in all-sky images via multi-scale neighborhood features and multiple supervised learning techniques
2016
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.
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