FSOD-VFM: Few-Shot Object Detection with Vision Foundation Models and Graph Diffusion

ICLR 2026

Chen-Bin Feng*1,2   Youyang Sha*1Longfei Liu  Yongjun Yu1Chi Man Vong†2 Xuanlong Yu†1Xi Shen†1

1 Intellindust AI Lab  |  2 University of Macau
* Equal Contribution   Corresponding

arXiv Code

Abstract

In this paper, we present FSOD-VFM: Few-Shot Object Detectors with Vision Foundation Models, a framework that leverages vision foundation models to tackle the challenge of few-shot object detection. FSOD-VFM integrates three key components: a universal proposal network (UPN) for category-agnostic bounding box generation, SAM2 for accurate mask extraction, and DINOv2 features for efficient adaptation to new object categories. Despite the strong generalization capabilities of foundation models, the bounding boxes generated by UPN often suffer from overfragmentation, covering only partial object regions and leading to numerous small, false-positive proposals rather than accurate, complete object detections. To address this issue, we introduce a novel graph-based confidence reweighting method. In our approach, predicted bounding boxes are modeled as nodes in a directed graph, with graph diffusion operations applied to propagate confidence scores across the network. This reweighting process refines the scores of proposals, assigning higher confidence to whole objects and lower confidence to local, fragmented parts. This strategy improves detection granularity and effectively reduces the occurrence of false-positive bounding box proposals. Through extensive experiments on Pascal-5 , COCO-20, and CD-FSOD datasets, we demonstrate that our method substantially outperforms existing approaches, achieving superior performance without requiring additional training. Notably, on the challenging CD-FSOD dataset, which spans multiple datasets and domains, our FSOD-VFM achieves 31.6 AP in the 10-shot setting, substantially outperforming previous training-free methods that reach only 21.4 AP. Codes and pretrained weights are available at: https://github.com/Intellindust-AI-Lab/FSOD-VFM

Method

FSOD-VFM STA method diagram

Visualization

Visualization

Experimental Results of Pascal

Experimental Results

Experimental Results of COCO

Experimental Results2

Experimental Results of CD-FSOD

Experimental Results3

BibTeX

If you find this work useful, please cite:

@article{huang2025FSOD-VFM,
  title={FSOD-VFM: Few-Shot Object Detection with Vision Foundation Models and Graph Diffusion},
  author={Huang, Shihua and Hou, Yongjie and Liu, Longfei and Yu, Xuanlong and Shen, Xi},
  journal={arXiv},
  year={2025}
}