Michael Unger1, Claire Chalopin2, Thomas Neumuth2. 1. Innovation Center Computer Assisted Surgery, University of Leipzig, Semmelweisstr. 14, Leipzig, 04103, Germany. michael.unger@medizin.uni-leipzig.de. 2. Innovation Center Computer Assisted Surgery, University of Leipzig, Semmelweisstr. 14, Leipzig, 04103, Germany.
Abstract
PURPOSE: Surgical processes are complex entities characterized by expressive models and data. Recognizable activities define each surgical process. The principal limitation of current vision-based recognition methods is inefficiency due to the large amount of information captured during a surgical procedure. To overcome this technical challenge, we introduce a surgical gesture recognition system using temperature-based recognition. METHODS: An infrared thermal camera was combined with a hierarchical temporal memory and was used during surgical procedures. The recordings were analyzed for recognition of surgical activities. The image sequence information acquired included hand temperatures. This datum was analyzed to perform gesture extraction and recognition based on heat differences between the surgeon's warm hands and the colder background of the environment. RESULTS: The system was validated by simulating a functional endoscopic sinus surgery, a common type of otolaryngologic surgery. The thermal camera was directed toward the hands of the surgeon while handling different instruments. The system achieved an online recognition accuracy of 96% with high precision and recall rates of approximately 60%. CONCLUSION: Vision-based recognition methods are the current best practice approaches for monitoring surgical processes. Problems of information overflow and extended recognition times in vision-based approaches were overcome by changing the spectral range to infrared. This change enables the real-time recognition of surgical activities and provides online monitoring information to surgical assistance systems and workflow management systems.
PURPOSE: Surgical processes are complex entities characterized by expressive models and data. Recognizable activities define each surgical process. The principal limitation of current vision-based recognition methods is inefficiency due to the large amount of information captured during a surgical procedure. To overcome this technical challenge, we introduce a surgical gesture recognition system using temperature-based recognition. METHODS: An infrared thermal camera was combined with a hierarchical temporal memory and was used during surgical procedures. The recordings were analyzed for recognition of surgical activities. The image sequence information acquired included hand temperatures. This datum was analyzed to perform gesture extraction and recognition based on heat differences between the surgeon's warm hands and the colder background of the environment. RESULTS: The system was validated by simulating a functional endoscopic sinus surgery, a common type of otolaryngologic surgery. The thermal camera was directed toward the hands of the surgeon while handling different instruments. The system achieved an online recognition accuracy of 96% with high precision and recall rates of approximately 60%. CONCLUSION: Vision-based recognition methods are the current best practice approaches for monitoring surgical processes. Problems of information overflow and extended recognition times in vision-based approaches were overcome by changing the spectral range to infrared. This change enables the real-time recognition of surgical activities and provides online monitoring information to surgical assistance systems and workflow management systems.
Authors: Vikram Tiwari; Franklin Dexter; Brian S Rothman; Jesse M Ehrenfeld; Richard H Epstein Journal: Anesth Analg Date: 2013-06-18 Impact factor: 5.108
Authors: Carol E Reiley; Henry C Lin; Balakrishnan Varadarajan; Balazs Vagvolgyi; Ssanjeev Khudanpur; David D Yuh; Gregory D Hager Journal: Stud Health Technol Inform Date: 2008
Authors: Thomas Neumuth; Pierre Jannin; Juliane Schlomberg; Jürgen Meixensberger; Peter Wiedemann; Oliver Burgert Journal: Int J Comput Assist Radiol Surg Date: 2010-06-06 Impact factor: 2.924