Effective object detection in autonomous vehicles is challenged by deployment in diverse and unfamiliar environments. Online Source-Free Domain Adaptation (O-SFDA) offers model adaptation using a stream of unlabeled data from a target domain in an online manner. However, not all captured frames contain information beneficial for adaptation, especially in the presence of redundant data and class imbalance issues. This paper introduces a novel approach to enhance O-SFDA for adaptive object detection through unsupervised data acquisition. Our methodology prioritizes the most informative unlabeled frames for inclusion in the online training process. Empirical evaluation on a real-world dataset reveals that our method outperforms existing state-of-the-art O-SFDA techniques, demonstrating the viability of unsupervised data acquisition for improving the adaptive object detector.
@article{arxiv.2310.19258,
title = {Improving Online Source-free Domain Adaptation for Object Detection by Unsupervised Data Acquisition},
author = {Xiangyu Shi and Yanyuan Qiao and Qi Wu and Lingqiao Liu and Feras Dayoub},
journal= {arXiv preprint arXiv:2310.19258},
year = {2024}
}
Comments
Accepted by ECCV workshop ROAM 2024; 12 pages, 2 figures