一般化
样品(材料)
计算机科学
人工智能
代理(统计)
自然语言处理
领域(数学分析)
机器学习
数学
色谱法
数学分析
化学
作者
Xufeng Yao,Yang Bai,Xinyun Zhang,Yuechen Zhang,Qi Sun,Ran Chen,Ruiyu Li,Bei Yu
标识
DOI:10.1109/cvpr52688.2022.00696
摘要
Domain generalization refers to the problem of training a model from a collection of different source domains that can directly generalize to the unseen target domains. A promising solution is contrastive learning, which attempts to learn domain-invariant representations by exploiting rich semantic relations among sample-to-sample pairs from different domains. A simple approach is to pull positive sample pairs from different domains closer while pushing other negative pairs further apart. In this paper, we find that directly applying contrastive-based methods (e.g., supervised contrastive learning) are not effective in domain generalization. We argue that aligning positive sample-to-sample pairs tends to hinder the model generalization due to the significant distribution gaps between different domains. To address this issue, we propose a novel proxy-based contrastive learning method, which replaces the original sample-to-sample relations with proxy-to-sample relations, significantly alleviating the positive alignment issue. Experiments on the four standard benchmarks demonstrate the effectiveness of the proposed method. Furthermore, we also consider a more complex scenario where no ImageNet pre-trained models are provided. Our method consistently shows better performance.
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