27th INTERNATIONAL CONFERENCE ON MEDICAL IMAGE COMPUTING
AND COMPUTER ASSISTED INTERVENTION
6-10 October 2024 • MARRAKESH / MOROCCO

Presenting today in Oral Session 2

Enhanced Scale-aware Depth Estimation for Monocular Endoscopic Scenes with Geometric Modeling

Ruofeng Wei, The Chinese University of Hong Kong, Hong Kong SAR

Scale-aware monocular depth estimation poses a significant challenge in computer-aided endoscopic navigation. However, existing depth estimation methods that do not consider the geometric priors struggle to learn the absolute scale from training with monocular endoscopic sequences. Additionally, conventional methods face difficulties in accurately estimating details on tissue and instruments' boundaries.

In this paper, we tackle these problems by proposing a novel enhanced scale-aware framework that only uses monocular images with geometric modeling for depth estimation. Specifically, we first propose a multi-resolution depth fusion strategy to enhance the quality of monocular depth estimation. To recover the precise scale between relative depth and real-world values, we further calculate the 3D poses of instruments in the endoscopic scenes by algebraic geometry based on the image-only geometric primitives (i.e., boundaries and tip of instruments).

Afterwards, the 3D poses of surgical instruments enable the scale recovery of relative depth maps. By coupling scale factors and relative depth estimation, the scale-aware depth of the monocular endoscopic scenes can be estimated. We evaluate the pipeline on in-house endoscopic surgery videos and simulated data.

The results demonstrate that our method can learn the absolute scale with geometric modeling and accurately estimate scale-aware depth for monocular scenes.

Ruofeng Wei

Presenting my paper at MICCAI 2024 is a big step in my research career. It's a chance to share my work with experts in medical imaging and robotic surgery, get feedback, and connect with others in the field. I hope to contribute to improving surgical techniques and patient care.

At MICCAI 2024, I want to learn about:

  • New Imaging Techniques: How they can improve robotic surgery.
  • AI in Navigation: Using machine learning to make surgical navigation better.
  • Human-Robot Interaction: Improving how surgeons work with robots.
  • Real-World Applications: Seeing case studies that show the benefits of robotic surgery.

I'm excited about:

  • Networking: Meeting other researchers and professionals in the field.
  • Workshops: Hands-on sessions to learn new skills and technologies.
  • Keynote Speeches: Hearing from leaders in robotic surgery.
  • Poster Sessions: Discussing research and getting feedback on my work.