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Improving cloud type classification of ground-based images using region covariance descriptors

机译:使用区域协方差描述符改进地面图像的云类型分类

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The distribution and frequency of occurrence of different cloud types affect the energy balance of the Earth. Automatic cloud type classification of images continuously observed by the ground-based imagers could help climate researchers find the relationship between cloud type variations and climate change. However, by far it is still a 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 the Riemannian bag-of-feature (BoF) method. RCovDs model the correlations among different dimensional features, which allows for a more discriminative representation. BoF is extended from Euclidean space to Riemannian manifold by k -means clustering, in which Stein divergence is adopted as a similarity metric. The histogram feature is extracted by encoding RCovDs of the cloud image blocks with a BoF-based codebook. The multiclass support vector machine (SVM) is utilized for the recognition of cloud types. The experiments on the ground-based cloud image datasets show that a very high prediction accuracy (more than 98?% on two datasets) can be obtained with a small number of training samples, which validate the proposed method and exhibit the competitive performance against state-of-the-art methods.
机译:不同云类型的分布和频率影响地球的能量平衡。由地面成像仪连续观察到的图像的自动云类型分类可以帮助气候研究人员发现云类型变异与气候变化之间的关系。然而,到目前为止,为云分类设计强大的鉴别分类器仍然是一个巨大的挑战。为了解决这种困难,在本文中,我们提出了一种具有区域协方差描述符(RCOVD)和RIEMANNIAN袋的改进方法和特征(BOF)方法。 RCOVDS模拟不同维度特征之间的相关性,其允许更辨别的表示。 BOF通过K-Means聚类从欧几里德空间延伸到riemannian歧管,其中采用了Stein发散作为相似度量。通过使用基于BOF的码本对云图像块的RCOV编码RCOV来提取直方图特征。多字符支持向量机(SVM)用于识别云类型。基于地基云图像数据集的实验表明,通过少量训练样本可以获得非常高的预测精度(两个数据集上超过98倍),验证了所提出的方法并展示对国家的竞争性能-Of-最现实的方法。

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