Generates large labeled realistic laparoscopic image datasets from simulations using extended unpaired translation and demonstrates use for liver segmentation achieving Dice scores up to 0.89 without any real labeled data.
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Generating large labeled data sets for laparoscopic image processing tasks using unpaired image-to-image translation
Generates large labeled realistic laparoscopic image datasets from simulations using extended unpaired translation and demonstrates use for liver segmentation achieving Dice scores up to 0.89 without any real labeled data.