Dynamic Depth-Supervised NeRF for Multi-View RGB-D Operating Room Images
Beerend G.A. Gerats, Jelmer M. Wolterink, Ivo A.M.J. Broeders

TL;DR
This paper demonstrates that a depth-supervised dynamic NeRF can effectively synthesize views in a surgical operating room, improving view quality and depth accuracy from multiple synchronized RGB-D cameras during surgery.
Contribution
It introduces a novel dynamic depth-supervised NeRF approach tailored for multi-view RGB-D data in surgical environments, enhancing view synthesis and depth estimation accuracy.
Findings
NeRF can generate consistent views from interpolated camera positions.
Depth supervision improves image quality and depth accuracy.
Achieved an average PSNR of 18.2 and 2.0% depth error in surgical scenes.
Abstract
The operating room (OR) is an environment of interest for the development of sensing systems, enabling the detection of people, objects, and their semantic relations. Due to frequent occlusions in the OR, these systems often rely on input from multiple cameras. While increasing the number of cameras generally increases algorithm performance, there are hard limitations to the number and locations of cameras in the OR. Neural Radiance Fields (NeRF) can be used to render synthetic views from arbitrary camera positions, virtually enlarging the number of cameras in the dataset. In this work, we explore the use of NeRF for view synthesis of dynamic scenes in the OR, and we show that regularisation with depth supervision from RGB-D sensor data results in higher image quality. We optimise a dynamic depth-supervised NeRF with up to six synchronised cameras that capture the surgical field in five…
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Taxonomy
TopicsAdvanced Vision and Imaging · Robotics and Sensor-Based Localization · Computer Graphics and Visualization Techniques
MethodsMasked autoencoder
