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LiftFeat: 3D Geometry-Aware Local Feature Matching

6 May 2025
Yepeng Liu
Wenpeng Lai
Zhou Zhao
Yuxuan Xiong
Jinchi Zhu
Jun Cheng
Yongchao Xu
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Abstract

Robust and efficient local feature matching plays a crucial role in applications such as SLAM and visual localization for robotics. Despite great progress, it is still very challenging to extract robust and discriminative visual features in scenarios with drastic lighting changes, low texture areas, or repetitive patterns. In this paper, we propose a new lightweight network called \textit{LiftFeat}, which lifts the robustness of raw descriptor by aggregating 3D geometric feature. Specifically, we first adopt a pre-trained monocular depth estimation model to generate pseudo surface normal label, supervising the extraction of 3D geometric feature in terms of predicted surface normal. We then design a 3D geometry-aware feature lifting module to fuse surface normal feature with raw 2D descriptor feature. Integrating such 3D geometric feature enhances the discriminative ability of 2D feature description in extreme conditions. Extensive experimental results on relative pose estimation, homography estimation, and visual localization tasks, demonstrate that our LiftFeat outperforms some lightweight state-of-the-art methods. Code will be released at :this https URL.

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@article{liu2025_2505.03422,
  title={ LiftFeat: 3D Geometry-Aware Local Feature Matching },
  author={ Yepeng Liu and Wenpeng Lai and Zhou Zhao and Yuxuan Xiong and Jinchi Zhu and Jun Cheng and Yongchao Xu },
  journal={arXiv preprint arXiv:2505.03422},
  year={ 2025 }
}
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