EasyREG: Easy Depth-Based Markerless Registration and Tracking using Augmented Reality Device for Surgical Guidance
Journal:
arXiv
Published Date:
Apr 13, 2025
Abstract
The use of Augmented Reality (AR) devices for surgical guidance has gained
increasing traction in the medical field. Traditional registration methods
often rely on external fiducial markers to achieve high accuracy and real-time
performance. However, these markers introduce cumbersome calibration procedures
and can be challenging to deploy in clinical settings. While commercial
solutions have attempted real-time markerless tracking using the native RGB
cameras of AR devices, their accuracy remains questionable for medical
guidance, primarily due to occlusions and significant outliers between the live
sensor data and the preoperative target anatomy point cloud derived from MRI or
CT scans. In this work, we present a markerless framework that relies only on
the depth sensor of AR devices and consists of two modules: a registration
module for high-precision, outlier-robust target anatomy localization, and a
tracking module for real-time pose estimation. The registration module
integrates depth sensor error correction, a human-in-the-loop region filtering
technique, and a robust global alignment with curvature-aware feature sampling,
followed by local ICP refinement, for markerless alignment of preoperative
models with patient anatomy. The tracking module employs a fast and robust
registration algorithm that uses the initial pose from the registration module
to estimate the target pose in real-time. We comprehensively evaluated the
performance of both modules through simulation and real-world measurements. The
results indicate that our markerless system achieves superior performance for
registration and comparable performance for tracking to industrial solutions.
The two-module design makes our system a one-stop solution for surgical
procedures where the target anatomy moves or stays static during surgery.