2nd Place Solution for VisDA 2021 Challenge -- Universally Domain Adaptive Image Recognition
The Visual Domain Adaptation (VisDA) 2021 Challenge calls for unsupervised domain adaptation (UDA) methods that can deal with both input distribution shift and label set variance between the source and target domains. In this report, we introduce a universal domain adaptation (UniDA) method by aggre...
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Zusammenfassung: | The Visual Domain Adaptation (VisDA) 2021 Challenge calls for unsupervised
domain adaptation (UDA) methods that can deal with both input distribution
shift and label set variance between the source and target domains. In this
report, we introduce a universal domain adaptation (UniDA) method by
aggregating several popular feature extraction and domain adaptation schemes.
First, we utilize VOLO, a Transformer-based architecture with state-of-the-art
performance in several visual tasks, as the backbone to extract effective
feature representations. Second, we modify the open-set classifier of OVANet to
recognize the unknown class with competitive accuracy and robustness. As shown
in the leaderboard, our proposed UniDA method ranks the 2nd place with 48.56%
ACC and 70.72% AUROC in the VisDA 2021 Challenge. |
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DOI: | 10.48550/arxiv.2110.14240 |