ABRA: Teleporting Fine-Tuned Knowledge Across Domains for Open-Vocabulary Object Detection
arXiv cs.CV / 3/16/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- ABRA presents a method that treats domain adaptation as a geometric transport problem in the weight space of a pretrained detector to move class-specific knowledge from a labeled source domain to a target domain lacking labeled examples for those classes.
- The approach aligns source and target domain experts to transport class-specific knowledge, enabling fine-tuning-free adaptation under domain shifts such as nighttime or foggy conditions.
- Experimental results across challenging domain shifts show ABRA can teleport class-level specialization for open-vocabulary object detection, improving robustness when data is scarce.
- The authors plan to release code upon acceptance to facilitate replication and practical use.
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