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Liu, Qing, Wu, Ting-ting, Deng, Ya-hong, Liu, Zhi-heng (2023) Intelligent identification of landslides in loess areas based on the improved YOLO algorithm: a case study of loess landslides in Baoji City. Journal of Mountain Science, 20 (11) 3343-3359 doi:10.1007/s11629-023-8128-0

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Reference TypeJournal (article/letter/editorial)
TitleIntelligent identification of landslides in loess areas based on the improved YOLO algorithm: a case study of loess landslides in Baoji City
JournalJournal of Mountain Science
AuthorsLiu, QingAuthor
Wu, Ting-tingAuthor
Deng, Ya-hongAuthor
Liu, Zhi-hengAuthor
Year2023 (November)Volume20
Issue11
PublisherSpringer Science and Business Media LLC
DOIdoi:10.1007/s11629-023-8128-0Search in ResearchGate
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Mindat Ref. ID16962030Long-form Identifiermindat:1:5:16962030:3
GUID0
Full ReferenceLiu, Qing, Wu, Ting-ting, Deng, Ya-hong, Liu, Zhi-heng (2023) Intelligent identification of landslides in loess areas based on the improved YOLO algorithm: a case study of loess landslides in Baoji City. Journal of Mountain Science, 20 (11) 3343-3359 doi:10.1007/s11629-023-8128-0
Plain TextLiu, Qing, Wu, Ting-ting, Deng, Ya-hong, Liu, Zhi-heng (2023) Intelligent identification of landslides in loess areas based on the improved YOLO algorithm: a case study of loess landslides in Baoji City. Journal of Mountain Science, 20 (11) 3343-3359 doi:10.1007/s11629-023-8128-0
In(2023, November) Journal of Mountain Science Vol. 20 (11) Springer Science and Business Media LLC


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