Proceedings on Automation in Medical Engineering
Vol. 3 No. 1 (2026): Proc AUTOMED

18th Interdisciplinary AUTOMED Symposium in Collaboration with the TC Medical Robotics, 2485

Towards quantitative ergonomic assessment in robotic surgery using depth imaging

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Georg Wolf , Zino Ruchay , Johannes Peter Ackermann , Julian Maria Pape , Anne Katrin Brust , Alexandra Eberenz , Philipp Rostalski , Nicolai Maass , Georg Männel , Ibrahim Alkatout , Dennis Kundrat 

Abstract

Robot-assisted surgery lowers postural load for surgeons, yet desk-like ergonomic challenges persist. We evaluate posture monitoring using the Azure Kinect. Two surgeons performed console training tasks in deliberately “good” and “poor” postures. Using Kinect’s body tracking, we estimated the sagittal plane from spinal landmarks and reoriented the skeleton. Three angles were extracted: Lower-Spine (LS), Upper-Spine (US) and Arm-Spine (AS). Surgeon-independent thresholds for LS and US separated favorable from unfavorable postures for the interquartile range, whereas AS was less discriminative. These preliminary results support the feasibility of an automated posture feedback. Validation on a more diverse cohort will refine proposed metrics.

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