Align and Distill: Unifying and Improving Domain Adaptive Object Detection

Abstract

Object detectors often perform poorly on data that differs from their training set. Domain adaptive object detection (DAOD) methods have recently demonstrated strong results on addressing this challenge. Unfortunately, we identify systemic benchmarking pitfalls that call past results into question and hamper further progress: (a) Overestimation of performance due to underpowered baselines, (b) Inconsistent implementation practices preventing transparent comparisons of methods, and (c) Lack of generality due to outdated backbones and lack of diversity in benchmarks. We address these problems by introducing: (1) A unified benchmarking and implementation framework, Align and Distill (ALDI), enabling comparison of DAOD methods and supporting future development, (2) A fair and modern training and evaluation protocol for DAOD that addresses benchmarking pitfalls, (3) A new DAOD benchmark dataset, CFC-DAOD, increasing the diversity of available DAOD benchmarks, and (4) A new method, ALDI++, that achieves state-of-the-art results by a large margin. ALDI++ outperforms the previous state-of-the-art by +3.5 AP50 on Cityscapes $\rightarrow$ Foggy Cityscapes, +5.7 AP50 on Sim10k $\rightarrow$ Cityscapes (where ours is the only method to outperform a fair baseline), and +0.6 AP50 on CFC-DAOD. ALDI and ALDI++ are architecture-agnostic, setting a new state-of-the-art for YOLO and DETR-based DAOD as well without additional hyperparameter tuning. Our framework, dataset, and method offer a critical reset for DAOD and provide a strong foundation for future research.

Cite

Text

Kay et al. "Align and Distill: Unifying and Improving Domain Adaptive Object Detection." Transactions on Machine Learning Research, 2025.

Markdown

[Kay et al. "Align and Distill: Unifying and Improving Domain Adaptive Object Detection." Transactions on Machine Learning Research, 2025.](https://mlanthology.org/tmlr/2025/kay2025tmlr-align/)

BibTeX

@article{kay2025tmlr-align,
  title     = {{Align and Distill: Unifying and Improving Domain Adaptive Object Detection}},
  author    = {Kay, Justin and Haucke, Timm and Stathatos, Suzanne and Deng, Siqi and Young, Erik and Perona, Pietro and Beery, Sara and Van Horn, Grant},
  journal   = {Transactions on Machine Learning Research},
  year      = {2025},
  url       = {https://mlanthology.org/tmlr/2025/kay2025tmlr-align/}
}