Citation: | LI Shuxin, ZHAO Xuebin, CHEN Jun, LI Weifu, CHEN Hong, CHEN Yanhong, CUI Yanmei, YUAN Tianjiao. Recognition Method for Mount Wilson Magnetic Type of Sunspots Based on Deep Learning (in Chinese). Chinese Journal of Space Science, 2022, 42(3): 333-339. DOI: 10.11728/cjss2022.03.210107004 |
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