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Unconstrained Large-scale 3D Reconstruction and Rendering across Altitudes

29 April 2025
Neil Joshi
Joshua Carney
Nathanael Kuo
Homer Li
Cheng Peng
Myron Brown
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Abstract

Production of photorealistic, navigable 3D site models requires a large volume of carefully collected images that are often unavailable to first responders for disaster relief or law enforcement. Real-world challenges include limited numbers of images, heterogeneous unposed cameras, inconsistent lighting, and extreme viewpoint differences for images collected from varying altitudes. To promote research aimed at addressing these challenges, we have developed the first public benchmark dataset for 3D reconstruction and novel view synthesis based on multiple calibrated ground-level, security-level, and airborne cameras. We present datasets that pose real-world challenges, independently evaluate calibration of unposed cameras and quality of novel rendered views, demonstrate baseline performance using recent state-of-practice methods, and identify challenges for further research.

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@article{joshi2025_2505.00734,
  title={ Unconstrained Large-scale 3D Reconstruction and Rendering across Altitudes },
  author={ Neil Joshi and Joshua Carney and Nathanael Kuo and Homer Li and Cheng Peng and Myron Brown },
  journal={arXiv preprint arXiv:2505.00734},
  year={ 2025 }
}
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