Bag of Tricks for Fully Test-Time Adaptation
Abstract
Fully Test-Time Adaptation (TTA), which aims at adapting models to data drifts, has recently attracted wide interest. Numerous tricks and techniques have been proposed to ensure robust learning on arbitrary streams of unlabeled data. However, assessing the true impact of each individual technique and obtaining a fair comparison still constitutes a significant challenge. To help consolidate the community's knowledge, we present a categorization of selected orthogonal TTA techniques, including small batch normalization, stream rebalancing, reliable sample selection, and network confidence calibration. We meticulously dissect the effect of each approach on different scenarios of interest. Through our analysis, we shed light on trade-offs induced by those techniques between accuracy, the computational power required, and model complexity. We also uncover the synergy that arises when combining techniques and are able to establish new state-of-the-art results.
Cite
Text
Mounsaveng et al. "Bag of Tricks for Fully Test-Time Adaptation." Winter Conference on Applications of Computer Vision, 2024.Markdown
[Mounsaveng et al. "Bag of Tricks for Fully Test-Time Adaptation." Winter Conference on Applications of Computer Vision, 2024.](https://mlanthology.org/wacv/2024/mounsaveng2024wacv-bag/)BibTeX
@inproceedings{mounsaveng2024wacv-bag,
title = {{Bag of Tricks for Fully Test-Time Adaptation}},
author = {Mounsaveng, Saypraseuth and Chiaroni, Florent and Boudiaf, Malik and Pedersoli, Marco and Ayed, Ismail Ben},
booktitle = {Winter Conference on Applications of Computer Vision},
year = {2024},
pages = {1936-1945},
url = {https://mlanthology.org/wacv/2024/mounsaveng2024wacv-bag/}
}