Featured in:
Science China Technological Sciences
Authors:
QinHe Gao, Tong Huang, Ke Zhao, HaiDong Shao, Bo Jin, ZhiHao Liu and Dong Wang
Existing unsupervised domain adaptation approaches primarily focus on reducing the data distribution gap between the source and target domains, often neglecting the influence of class information, leading to inaccurate alignment outcomes. Guided by this observation, this paper proposes an adaptive inter-intradomain discrepancy method to quantify the intra-class and inter-class discrepancies between the source and target domains. Furthermore, an adaptive factor is introduced to dynamically assess their relative importance. Building upon the proposed adaptive inter-intradomain discrepancy approach, we develop an inter-intra-domain alignment network with a class-aware sampling strategy (IDAN-CSS) to distill the feature representations. The class-aware sampling strategy, integrated within IDAN-CSS, facilitates more efficient training. Through multiple transfer diagnosis cases, we comprehensively demonstrate the feasibility and effectiveness of the proposed IDAN-CSS model.
© 2024 VISTeam | Made by Black Monster Media
Institute of Systems and Robotics Department of Electrical and Computers Engineering University of Coimbra