2020
DOI: 10.5194/amt-2020-189
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Improving Cloud Type Classification of Ground-Based Images Using Region Covariance Descriptors

Abstract: Abstract. Cloud types are important indicators of cloud characteristics and short-term weather forecasting. The meteorological researchers can benefit from the automatic cloud type recognition of massive images captured by the ground-based imagers. However, by far it is still of huge challenge to design a powerful discriminative classifier for cloud categorization. To tackle this difficulty, in this paper, we present an improved method with region covariance descriptors (RCovDs) and Riemannian Bag-of-Feature (… Show more

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