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Bibliographic Details
Main Authors: Acar, Ayberk, Li, Fangjie, Stern, Susheela Sharma, Al-Zogbi, Lidia, Li, Hao, Oguine, Kanyifeechukwu Jane, Isik, Dilara, Burkhart, Brendan, d'Almeida, Jesse F., Webster III, Robert J., Oguz, Ipek, Wu, Jie Ying
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.13541
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Table of Contents:
  • Purpose: Natural orifice surgeries minimize the need for incisions and reduce the recovery time compared to open surgery; however, they require a higher level of expertise due to visualization and orientation challenges. We propose a perception pipeline for these surgeries that allows semantic scene understanding. Methods: We bring learning-based segmentation, depth estimation, and 3D reconstruction modules together to create real-time segmented maps of the surgical scenes. Additionally, we use registration with robot poses to solve the scale ambiguity of mapping from monocular images, and allow the use of semantically informed real-time reconstructions in robotic surgeries. Results: We achieve sub-milimeter reconstruction accuracy based on average one-sided Chamfer distances, average pose registration RMSE of 0.9 mm, and an estimated scale within 2% of ground truth. Conclusion: We present a modular perception pipeline, integrating semantic segmentation with real-time monocular SLAM for natural orifice surgeries. This pipeline offers a promising solution for scene understanding that can facilitate automation or surgeon guidance.