TL;DR
This paper introduces DetCycleGAN, an extension of CycleGAN that incorporates landmark detection to improve the realism and consistency of endoscopic image synthesis, benefiting surgical training and detection tasks.
Contribution
It proposes a novel method integrating landmark detection into CycleGAN to enhance unpaired image translation and detection accuracy in surgical images.
Findings
Landmark-guided CycleGAN improves synthesis consistency.
Detection performance metrics increased significantly.
Generated images can augment training data for detection models.
Abstract
The CycleGAN framework allows for unsupervised image-to-image translation of unpaired data. In a scenario of surgical training on a physical surgical simulator, this method can be used to transform endoscopic images of phantoms into images which more closely resemble the intra-operative appearance of the same surgical target structure. This can be viewed as a novel augmented reality approach, which we coined Hyperrealism in previous work. In this use case, it is of paramount importance to display objects like needles, sutures or instruments consistent in both domains while altering the style to a more tissue-like appearance. Segmentation of these objects would allow for a direct transfer, however, contouring of these, partly tiny and thin foreground objects is cumbersome and perhaps inaccurate. Instead, we propose to use landmark detection on the points when sutures pass into the…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Batch Normalization · Residual Connection · HuMan(Expedia)||How do I get a human at Expedia? · Sigmoid Activation · Instance Normalization · Residual Block · Cycle Consistency Loss · PatchGAN · GAN Least Squares Loss
