BriefGPT.xyz
Jun, 2024
视觉域适应中的判别性和可迁移性的几何理解
Geometric Understanding of Discriminability and Transferability for Visual Domain Adaptation
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You-Wei Luo, Chuan-Xian Ren, Xiao-Lin Xu, Qingshan Liu
TL;DR
通过几何视角对传递性和可区分性进行了理论分析,将能力形式化为域/聚类子空间之间的几何性质,并通过核范数优化提出了几何导向模型来增强传递性和可区分性,实验证明该模型在实际应用中的有效性。
Abstract
To overcome the restriction of identical distribution assumption,
invariant representation learning
for
unsupervised domain adaptation
(UDA) has made significant advances in computer vision and pattern recognitio
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