AIDMAN: An AI-based object detection system for malaria diagnosis from smartphone thin-blood-smear images
Ruicun Liu(Institute of Microbiology), Yue Teng(Institute of Microbiology), Yingtan Zhuang(Institute of Microbiology), Boyu Luo(Institute of Microbiology), Tingting Dan(South China University of Technology), Yanbing Li(Institute of Microbiology), Xianchao Zhang(Jiaxing University), X. Fan(Institute of Microbiology), Tuoyu Liu(Institute of Microbiology), Shan Yang(Sichuan University), Hongmin Cai(South China University of Technology)
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