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Salient Local Binary Pattern for Ground-Based Cloud Classification 被引量:2

Salient Local Binary Pattern for Ground-Based Cloud Classification
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摘要 Ground-based cloud classification is challenging due to extreme variations in the appearance of clouds under different atmospheric conditions. Texture classification techniques have recently been introduced to deal with this issue. A novel texture descriptor, the salient local binary pattern (SLBP), is proposed for ground-based cloud classification. The SLBP takes advantage of the most frequently occurring patterns (the salient patterns) to capture descriptive information. This feature makes the SLBP robust to noise. Experimental results using ground-based cloud images demonstrate that the proposed method can achieve better results than current state-of-the-art methods. Ground-based cloud classification is challenging due to extreme variations in the appearance of clouds under different atmospheric conditions. Texture classification techniques have recently been introduced to deal with this issue. A novel texture descriptor, the salient local binary pattern (SLBP), is proposed for ground-based cloud classification. The SLBP takes advantage of the most frequently occurring patterns (the salient patterns) to capture descriptive information. This feature makes the SLBP robust to noise. Experimental results using ground-based cloud images demonstrate that the proposed method can achieve better results than current state-of-the-art methods.
出处 《Acta meteorologica Sinica》 SCIE 2013年第2期211-220,共10页
基金 Supported by the National Natural Science Foundation of China (61172103, 60933010, and 60835001)
关键词 salient local binary pattern local binary pattern ground-based cloud classification salient local binary pattern, local binary pattern, ground-based cloud classification
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