Activate and Reject: Towards Safe Domain Generalization under Category Shift
Chaoqi Chen, Luyao Tang, Leitian Tao, Hong-Yu Zhou, Yue Huang,, Xiaoguang Han, Yizhou Yu

TL;DR
This paper introduces the Activate and Reject (ART) framework for safe domain generalization under category shift, enabling models to detect unknown classes and adapt to unseen environments without retraining.
Contribution
The novel ART framework reshapes decision boundaries during training and employs post hoc adaptation for unknown class detection and domain generalization.
Findings
ART improves H-score by 6.1% on image classification.
Achieves new benchmarks in object detection and semantic segmentation.
Consistently enhances generalization across vision tasks.
Abstract
Albeit the notable performance on in-domain test points, it is non-trivial for deep neural networks to attain satisfactory accuracy when deploying in the open world, where novel domains and object classes often occur. In this paper, we study a practical problem of Domain Generalization under Category Shift (DGCS), which aims to simultaneously detect unknown-class samples and classify known-class samples in the target domains. Compared to prior DG works, we face two new challenges: 1) how to learn the concept of ``unknown'' during training with only source known-class samples, and 2) how to adapt the source-trained model to unseen environments for safe model deployment. To this end, we propose a novel Activate and Reject (ART) framework to reshape the model's decision boundary to accommodate unknown classes and conduct post hoc modification to further discriminate known and unknown…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · COVID-19 diagnosis using AI
MethodsHigh-Order Consensuses
