Chuanhai Zhang, Wallapak Tavanapong, J. Wong, P. C. Groen, Jung-Hwan Oh
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Real-Time Instrument Scene Detection in Screening GI Endoscopic Procedures
We describe a new and effective real-time solution for detecting video segments showing an instrument used during diagnostic or therapeutic operations in endoscopic procedures. In addition, we present a new method to collect a large training dataset: similarity-based data augmentation. This method automates most of the creation of a large training dataset and prevents extensive manual effort to collect and annotate training data by domain experts. Convolutional Neural Network (CNN) analysis using the training data collected with similarity-based data augmentation yields an average F1 score within 1% of that of the CNN analysis using a large manually collected training dataset.