One model to use them all: training a segmentation model with complementary datasets.
Alexander C JenkeSebastian BodenstedtFiona R KolbingerMarius DistlerJürgen WeitzStefanie SpeidelPublished in: International journal of computer assisted radiology and surgery (2024)
By leveraging multiple datasets and applying mutual exclusion constraints, we developed a method that improves surgical scene segmentation performance without the need for fully annotated datasets. Our results demonstrate the feasibility of training a model on multiple complementary datasets. This paves the way for future work further alleviating the need for one specialized large, fully segmented dataset but instead the use of already existing datasets.