Automated Solar Flare Detection and Feature Extraction in High-Resolution and Full-Disk H$upalpha$ Images |
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Authors: | Meng Yang Yu Tian Yangyi Liu Changhui Rao |
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Affiliation: | 1.Key Laboratory on Adaptive Optics,Chinese Academy of Sciences,Chengdu,China;2.Institute of Optics and Electronics,Chinese Academy of Sciences,Chengdu,China;3.University of Chinese Academy of Sciences,Beijing,China |
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Abstract: | In this article, an automated solar flare detection method applied to both full-disk and local high-resolution H(upalpha) images is proposed. An adaptive gray threshold and an area threshold are used to segment the flare region. Features of each detected flare event are extracted, e.g. the start, peak, and end time, the importance class, and the brightness class. Experimental results have verified that the proposed method can obtain more stable and accurate segmentation results than previous works on full-disk images from Big Bear Solar Observatory (BBSO) and Kanzelhöhe Observatory for Solar and Environmental Research (KSO), and satisfying segmentation results on high-resolution images from the Goode Solar Telescope (GST). Moreover, the extracted flare features correlate well with the data given by KSO. The method may be able to implement a more complicated statistical analysis of H(upalpha) solar flares. |
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