Depth Face Recognition Algorithm Based on Adaptive Circle Margin
CAI Hua1,2, SUN Jun1, ZHU Ruikun1, ZHU Xinli1, ZHAO Yiwu3
(1.School of Electronic Information Engineering,Changchun University of Science and Technology,Changchun 130022,Jilin,China;2.Changchun China Optics Science and Technology Museum,Changchun 130117,Jilin,China;3.School of Opto-Electronic Engineering,Changchun University of Science and Technology,Changchun 130022,Jilin,China)
CAI Hua, SUN Jun, ZHU Ruikun, ZHU Xinli, ZHAO Yiwu. Depth Face Recognition Algorithm Based on Adaptive Circle Margin[J]. Acta Armamentarii, 2021, 42(11): 2424-2432.
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