2021
DOI: 10.48550/arxiv.2107.06941
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Mutually improved endoscopic image synthesis and landmark detection in unpaired image-to-image translation

Lalith Sharan,
Gabriele Romano,
Sven Koehler
et al.

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 … Show more

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“…Our data set comes from the AdaptOR challenge [8]. The data set is mainly split into two endoscopic sets:…”
Section: Data Setmentioning
confidence: 99%
“…Our data set comes from the AdaptOR challenge [8]. The data set is mainly split into two endoscopic sets:…”
Section: Data Setmentioning
confidence: 99%