Publication | Open Access
From pixels to patches: a cloud classification method based on a bag of micro-structures
47
Citations
26
References
2016
Year
EngineeringMachine LearningAutomatic Cloud ClassificationPoint Cloud ProcessingPoint CloudEarth ScienceImage ClassificationImage AnalysisData SciencePattern RecognitionCloud ClassMachine VisionCloud DynamicGeographyImage PatchesCloud PhysicCloud Classification MethodComputer VisionRemote SensingClassifier SystemPattern Recognition Application
Abstract. Automatic cloud classification has attracted more and more attention with the increasing development of whole sky imagers, but it is still in progress for ground-based cloud observation. This paper proposes a new cloud classification method, named bag of micro-structures (BoMS). This method treats an all-sky image as a collection of micro-structures mapped from image patches, rather than a collection of pixels. It represents the image with a weighted histogram of micro-structures. Based on this representation, BoMS recognizes the cloud class of the image by a support vector machine (SVM) classifier. Five classes of sky condition are identified: cirriform, cumuliform, stratiform, clear sky, and mixed cloudiness. BoMS is evaluated on a large data set, which contains 5000 all-sky images captured by a total-sky cloud imager located in Tibet (29.25° N, 88.88° E). BoMS achieves an accuracy of 90.9 % for 10-fold cross-validation, and it outperforms state-of-the-art methods with an increase of 19 %. Furthermore, influence of key parameters in BoMS is investigated to verify their robustness.
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