Beyond Seen Bounds: Class-Centric Polarization for Single-Domain Generalized Deep Metric Learning
Xin Yuan, Meiqi Wan, Wei Liu, Xin Xu, Zheng Wang

TL;DR
CenterPolar introduces a class-centric polarization framework for single-domain generalized deep metric learning, effectively expanding and constraining domain distributions to improve generalization across unseen categories and domains.
Contribution
It proposes a novel two-phase polarization approach, combining centrifugal expansion and centripetal constraint, to better simulate broad domain shifts and enhance model generalization.
Findings
Outperforms state-of-the-art methods on multiple datasets
Effectively generalizes to unseen categories and domains
Demonstrates superior domain distribution modeling
Abstract
Single-domain generalized deep metric learning (SDG-DML) faces the dual challenge of both category and domain shifts during testing, limiting real-world applications. Therefore, aiming to learn better generalization ability on both unseen categories and domains is a realistic goal for the SDG-DML task. To deliver the aspiration, existing SDG-DML methods employ the domain expansion-equalization strategy to expand the source data and generate out-of-distribution samples. However, these methods rely on proxy-based expansion, which tends to generate samples clustered near class proxies, failing to simulate the broad and distant domain shifts encountered in practice. To alleviate the problem, we propose CenterPolar, a novel SDG-DML framework that dynamically expands and constrains domain distributions to learn a generalizable DML model for wider target domain distributions. Specifically,…
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Taxonomy
TopicsFace recognition and analysis · Domain Adaptation and Few-Shot Learning · Speech Recognition and Synthesis
