Comprehensive experiments on synthesized data and clinical data substantiate the superiority of the proposed methods as well as the superior generalization performance beyond the current state-of-the-art (SOTA) MAR methods.
Authors
Deyu Meng
5 papers
Yefeng Zheng
2 papers
Hong Wang
5 papers
Yuexiang Li
5 papers
Haimiao Zhang
2 papers
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