FedAL: An Federated Active Learning Framework for Efficient Labeling in Skin Lesion Analysis
Zhipeng Deng(Institute of High Energy Physics), Ze Jin(Guangxi Medical University), Kenji Suzuki(Iwate Medical University), Yuqiao Yang(Tokyo Institute of Technology)
2022 IEEE International Conference on Systems, Man, and Cybernetics (SMC)
October 9, 2022
Cited by 8
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