Mitigating Both Covariate and Conditional Shift for Domain Generalization
Jianxin Lin1,2; Yongqiang Tang2; Junping Wang1,2; Wensheng Zhang1,2
2023-01-19
会议日期2022-11-26~2022-11-28
会议地点Chengdu, China
英文摘要

Domain generalization (DG) aims to learn a model on several source domains, hoping that the model can generalize well to unseen target domains. The distribution shift between domains contains the covariate shift and conditional shift, both of which the model must be able to handle for better generalizability. In this paper, a novel DG method is proposed to deal with the distribution shift via Visual Alignment and Uncertainty-guided belief Ensemble (VAUE). Specifically, for the covariate shift, a visual alignment module is designed to align the distribution of image style to a common empirical Gaussian distribution so that the covariate shift can be eliminated in the visual space. For the conditional shift, we adopt an uncertainty-guided belief ensemble strategy based on subjective logic and Dempster-Shafer theory. The conditional distribution given a test sample is estimated by the dynamic combination of that of source domains. Comprehensive experiments are conducted to demonstrate the superior performance of the proposed method on four widely used datasets, i.e., Office-Home, VLCS, TerraIncognita, and PACS.

语种英语
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/51891]  
专题精密感知与控制研究中心_人工智能与机器学习
通讯作者Yongqiang Tang; Wensheng Zhang
作者单位1.中国科学院大学人工智能学院
2.中国科学院自动化研究所
推荐引用方式
GB/T 7714
Jianxin Lin,Yongqiang Tang,Junping Wang,et al. Mitigating Both Covariate and Conditional Shift for Domain Generalization[C]. 见:. Chengdu, China. 2022-11-26~2022-11-28.
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