Open surgery tool classification and hand utilization using a multi-camera system
Kristina Basiev, Adam Goldbraikh, Carla M Pugh, Shlomi Laufer

TL;DR
This study develops a multi-camera system using YOLOv5 and LSTM networks to accurately classify open surgery tools and identify hand-held tools, effectively handling occlusions and visibility issues in surgical videos.
Contribution
It introduces a novel multi-camera fusion approach with high and low fps LSTMs for improved surgical tool classification and hand utilization detection.
Findings
Multi-camera system achieved 93% accuracy and 94% F1 score.
Combining high and low fps LSTMs enhances classification performance.
Multi-camera approach outperforms single-view systems.
Abstract
Purpose: The goal of this work is to use multi-camera video to classify open surgery tools as well as identify which tool is held in each hand. Multi-camera systems help prevent occlusions in open surgery video data. Furthermore, combining multiple views such as a Top-view camera covering the full operative field and a Close-up camera focusing on hand motion and anatomy, may provide a more comprehensive view of the surgical workflow. However, multi-camera data fusion poses a new challenge: a tool may be visible in one camera and not the other. Thus, we defined the global ground truth as the tools being used regardless their visibility. Therefore, tools that are out of the image should be remembered for extensive periods of time while the system responds quickly to changes visible in the video. Methods: Participants (n=48) performed a simulated open bowel repair. A Top-view and a…
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Taxonomy
TopicsSurgical Simulation and Training · Anatomy and Medical Technology
MethodsSigmoid Activation · Tanh Activation · Long Short-Term Memory
