English

Turbulence-Robust Dynamic Object Segmentation with Multi-Signal Priors and SAM2 Refinement

Computer Vision and Pattern Recognition 2026-05-29 v1

Abstract

This technical report presents our solution for the CVPR 2026 UG2+ Challenge Track 3: Dynamic Object Segmentation in Turbulence (DOST). We design a training-free multi-signal segmentation pipeline that combines pretrained motion estimation, self-supervised semantic priors, background anomaly modeling, manually calibrated proposal fusion, and SAM2-based mask refinement. The method uses RAFT for dense motion responses, DINOv2 for semantic objectness priors, ViBe for training-free background modeling, and pretrained SAM2 for box-prompt mask refinement. Instead of optimizing an end-to-end segmentation network, our system operates entirely in inference mode. This design is suitable for the DOST setting, where severe atmospheric turbulence produces pseudo-motion, blur, and intermittent target visibility, making a single motion cue unreliable. The final submitted masks are evaluated by the official leaderboard, which reports 0.425041 mIoU and 0.457206 mDice. Since no task-specific model training or fine-tuning is performed, stronger learned temporal association, adaptive proposal selection, or task-specific adaptation may further improve the system.

Keywords

Cite

@article{arxiv.2605.29292,
  title  = {Turbulence-Robust Dynamic Object Segmentation with Multi-Signal Priors and SAM2 Refinement},
  author = {Bolian Peng and Ying Tang and Xu Liu and Long Sun and Xiaoqiang Lu},
  journal= {arXiv preprint arXiv:2605.29292},
  year   = {2026}
}