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EDM: Equirectangular Projection-Oriented Dense Kernelized Feature Matching

28 February 2025
Dongki Jung
Jaehoon Choi
Yonghan Lee
Somi Jeong
T. Lee
Dinesh Manocha
Suyong Yeon
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Abstract

We introduce the first learning-based dense matching algorithm, termed Equirectangular Projection-Oriented Dense Kernelized Feature Matching (EDM), specifically designed for omnidirectional images. Equirectangular projection (ERP) images, with their large fields of view, are particularly suited for dense matching techniques that aim to establish comprehensive correspondences across images. However, ERP images are subject to significant distortions, which we address by leveraging the spherical camera model and geodesic flow refinement in the dense matching method. To further mitigate these distortions, we propose spherical positional embeddings based on 3D Cartesian coordinates of the feature grid. Additionally, our method incorporates bidirectional transformations between spherical and Cartesian coordinate systems during refinement, utilizing a unit sphere to improve matching performance. We demonstrate that our proposed method achieves notable performance enhancements, with improvements of +26.72 and +42.62 in AUC@5° on the Matterport3D and Stanford2D3D datasets.

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@article{jung2025_2502.20685,
  title={ EDM: Equirectangular Projection-Oriented Dense Kernelized Feature Matching },
  author={ Dongki Jung and Jaehoon Choi and Yonghan Lee and Somi Jeong and Taejae Lee and Dinesh Manocha and Suyong Yeon },
  journal={arXiv preprint arXiv:2502.20685},
  year={ 2025 }
}
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