Foreground Object Structure Transfer for Unsupervised Domain Adaptation
Jieren Cheng, Le Liu, Xiangyan Tang, Wenxuan Tu, Boyi Liu, Ke Zhou,, Qiaobo Da, Yue Yang

TL;DR
This paper introduces FOST, a novel method for unsupervised domain adaptation that leverages foreground object structure transfer and local feature alignment to improve classification accuracy across different domains.
Contribution
FOST uniquely incorporates foreground structure transfer and relative position relationships to enhance class-wise feature compactness and alignment in unsupervised domain adaptation.
Findings
FOST outperforms existing methods on multiple benchmarks.
FOST achieves higher classification accuracy in domain adaptation tasks.
FOST effectively utilizes source domain clustering for pseudo-labeling.
Abstract
Unsupervised domain adaptation aims to train a classification model from the labeled source domain for the unlabeled target domain. Since the data distributions of the two domains are different, the model often performs poorly on the target domain. Existing methods align the feature distributions of the source and target domains and learn domain-invariant features to improve the performance of the model. However, the features are usually aligned as a whole, and the domain adaptation task fails to serve the classification, which will ignore the class information and lead to misalignment.In this paper, we investigate those features that should be used for domain alignment, introduce prior knowledge to extract foreground features to guide the domain adaptation task for classification tasks, and perform alignment in the local structure of objects. We propose a method called Foreground…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
