ERUP-YOLO: Enhancing Object Detection Robustness for Adverse Weather Condition by Unified Image-Adaptive Processing

Abstract

We propose an image-adaptive object detection method for adverse weather conditions such as fog and low-light. Our framework employs differentiable preprocessing filters to perform image enhancement suitable for later-stage object detections. Our framework introduces two differentiable filters: a Bezier curve-based pixel-wise (BPW) filter and a kernel-based local (KBL) filter. These filters unify the functions of classical image processing filters and improve performance of object detection. We also propose a domain-agnostic data augmentation strategy using the BPW filter. Our method does not require data-specific customization of the filter combinations parameter ranges and data augmentation. We evaluate our proposed approach called Enhanced Robustness by Unified Image Processing (ERUP)-YOLO by applying it to the YOLOv3 detector. Experiments on adverse weather datasets demonstrate that our proposed filters match or exceed the expressiveness of conventional methods and our ERUP-YOLO achieved superior performance in a wide range of adverse weather conditions including fog and low-light conditions.

Cite

Text

Ogino et al. "ERUP-YOLO: Enhancing Object Detection Robustness for Adverse Weather Condition by Unified Image-Adaptive Processing." Winter Conference on Applications of Computer Vision, 2025.

Markdown

[Ogino et al. "ERUP-YOLO: Enhancing Object Detection Robustness for Adverse Weather Condition by Unified Image-Adaptive Processing." Winter Conference on Applications of Computer Vision, 2025.](https://mlanthology.org/wacv/2025/ogino2025wacv-erupyolo/)

BibTeX

@inproceedings{ogino2025wacv-erupyolo,
  title     = {{ERUP-YOLO: Enhancing Object Detection Robustness for Adverse Weather Condition by Unified Image-Adaptive Processing}},
  author    = {Ogino, Yuka and Shoji, Yuho and Toizumi, Takahiro and Ito, Atsushi},
  booktitle = {Winter Conference on Applications of Computer Vision},
  year      = {2025},
  pages     = {8586-8594},
  url       = {https://mlanthology.org/wacv/2025/ogino2025wacv-erupyolo/}
}