Machine Vision-Based Surgical Lighting System:Design and Implementation
By: Amir Gharghabi , Mahdi Hakiminezhad , Maryam Shafaei and more
Potential Business Impact:
Lights follow the surgeon's hand automatically.
Effortless and ergonomically designed surgical lighting is critical for precision and safety during procedures. However, traditional systems often rely on manual adjustments, leading to surgeon fatigue, neck strain, and inconsistent illumination due to drift and shadowing. To address these challenges, we propose a novel surgical lighting system that leverages the YOLOv11 object detection algorithm to identify a blue marker placed above the target surgical site. A high-power LED light source is then directed to the identified location using two servomotors equipped with tilt-pan brackets. The YOLO model achieves 96.7% mAP@50 on the validation set consisting of annotated images simulating surgical scenes with the blue spherical marker. By automating the lighting process, this machine vision-based solution reduces physical strain on surgeons, improves consistency in illumination, and supports improved surgical outcomes.
Similar Papers
High-Quality Virtual Single-Viewpoint Surgical Video: Geometric Autocalibration of Multiple Cameras in Surgical Lights
CV and Pattern Recognition
Clears blocked views in surgery videos automatically.
Evaluation of facial landmark localization performance in a surgical setting
Robotics
Helps robots find faces better during surgery.
Learning-Based Vision Systems for Semi-Autonomous Forklift Operation in Industrial Warehouse Environments
CV and Pattern Recognition
Helps robots find and grab boxes in warehouses.