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High-Quality Virtual Single-Viewpoint Surgical Video: Geometric Autocalibration of Multiple Cameras in Surgical Lights

5 March 2025
Yuna Kato
Mariko Isogawa
Shohei Mori
Hideo Saito
Hiroki Kajita
Yoshifumi Takatsume
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Abstract

Occlusion-free video generation is challenging due to surgeons' obstructions in the camera field of view. Prior work has addressed this issue by installing multiple cameras on a surgical light, hoping some cameras will observe the surgical field with less occlusion. However, this special camera setup poses a new imaging challenge since camera configurations can change every time surgeons move the light, and manual image alignment is required. This paper proposes an algorithm to automate this alignment task. The proposed method detects frames where the lighting system moves, realigns them, and selects the camera with the least occlusion. This algorithm results in a stabilized video with less occlusion. Quantitative results show that our method outperforms conventional approaches. A user study involving medical doctors also confirmed the superiority of our method.

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@article{kato2025_2503.03558,
  title={ High-Quality Virtual Single-Viewpoint Surgical Video: Geometric Autocalibration of Multiple Cameras in Surgical Lights },
  author={ Yuna Kato and Mariko Isogawa and Shohei Mori and Hideo Saito and Hiroki Kajita and Yoshifumi Takatsume },
  journal={arXiv preprint arXiv:2503.03558},
  year={ 2025 }
}
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