Implicit domain adaptation with conditional generative adversarial networks for depth prediction in endoscopy

ConclusionsTraining the discriminator and generator of the model on real images, we show that our model performs implicit domain adaptation, which is a key step towards bridging the gap between synthetic and real data. Importantly, we demonstrate the feasibility of training a single model to predict depth from both synthetic and real images without the need for explicit, unsupervised transformer networks mapping between the domains of synthetic and real data.
Source: International Journal of Computer Assisted Radiology and Surgery - Category: Intensive Care Source Type: research