Improving Surgical Training Phantoms by Hyperrealism: Deep Unpaired Image-to-Image Translation from Real Surgeries
Sandy Engelhardt, Raffaele De Simone, Peter M. Full, Matthias, Karck, Ivo Wolf

TL;DR
This paper introduces tempCycleGAN, a novel video translation method that enhances the realism of surgical training phantoms by transferring intraoperative tissue textures onto phantom videos, improving visual fidelity and temporal consistency.
Contribution
The work presents a new extension of cycle-consistent GANs, called tempCycleGAN, specifically designed to improve temporal stability in video-to-video translation for surgical applications.
Findings
Synthesized videos exhibit highly realistic tissue textures.
tempCycleGAN effectively reduces flickering in video sequences.
The approach enhances the training experience for minimally-invasive surgeries.
Abstract
Current `dry lab' surgical phantom simulators are a valuable tool for surgeons which allows them to improve their dexterity and skill with surgical instruments. These phantoms mimic the haptic and shape of organs of interest, but lack a realistic visual appearance. In this work, we present an innovative application in which representations learned from real intraoperative endoscopic sequences are transferred to a surgical phantom scenario. The term hyperrealism is introduced in this field, which we regard as a novel subform of surgical augmented reality for approaches that involve real-time object transfigurations. For related tasks in the computer vision community, unpaired cycle-consistent Generative Adversarial Networks (GANs) have shown excellent results on still RGB images. Though, application of this approach to continuous video frames can result in flickering, which turned out to…
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