VCL Challenges 2023 at ICCV 2023 Technical Report: Bi-level Adaptation Method for Test-time Adaptive Object Detection

Abstract

This report outlines our team's participation in VCL Challenges B Continual Testtime Adaptation, focusing on the technical details of our approach. Our primary focus is Testtime Adaptation using bilevel adaptations, encompassing imagelevel and detectorlevel adaptations. At the image level, we employ adjustable parameterbased image filters, while at the detector level, we leverage adjustable parameterbased mean teacher modules. Ultimately, through the utilization of these bilevel adaptations, we have achieved a remarkable 38.3% mAP on the target domain of the test set within VCL Challenges B. It is worth noting that the minimal drop in mAP, is mearly 4.2%, and the overall performance is 32.5% mAP.

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