CVSep 19, 2025

DistillMatch: Leveraging Knowledge Distillation from Vision Foundation Model for Multimodal Image Matching

arXiv:2509.16017v12 citationsh-index: 34
Originality Incremental advance
AI Analysis

This addresses the problem of pixel-level correspondences between images of different modalities for cross-modal perception, with incremental improvements in adaptability and generalization.

The paper tackles the challenge of multimodal image matching by proposing DistillMatch, which uses knowledge distillation from Vision Foundation Models to extract high-level semantic features, resulting in improved performance over existing algorithms on public datasets.

Multimodal image matching seeks pixel-level correspondences between images of different modalities, crucial for cross-modal perception, fusion and analysis. However, the significant appearance differences between modalities make this task challenging. Due to the scarcity of high-quality annotated datasets, existing deep learning methods that extract modality-common features for matching perform poorly and lack adaptability to diverse scenarios. Vision Foundation Model (VFM), trained on large-scale data, yields generalizable and robust feature representations adapted to data and tasks of various modalities, including multimodal matching. Thus, we propose DistillMatch, a multimodal image matching method using knowledge distillation from VFM. DistillMatch employs knowledge distillation to build a lightweight student model that extracts high-level semantic features from VFM (including DINOv2 and DINOv3) to assist matching across modalities. To retain modality-specific information, it extracts and injects modality category information into the other modality's features, which enhances the model's understanding of cross-modal correlations. Furthermore, we design V2I-GAN to boost the model's generalization by translating visible to pseudo-infrared images for data augmentation. Experiments show that DistillMatch outperforms existing algorithms on public datasets.

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