Annotated Dataset
Annotated datasets are collections of data points labeled with specific information, crucial for training and evaluating machine learning models, particularly in complex domains like medicine and robotics. Current research emphasizes creating high-quality annotations, often incorporating AI-assisted methods to reduce manual effort, and addressing challenges like noisy or partially annotated data through techniques such as active learning, multi-task learning, and self-supervised learning. These datasets are vital for advancing various fields, enabling the development of more accurate and robust models for applications ranging from medical image analysis and natural language processing to robotics and e-commerce.
Papers
Leveraging AI Predicted and Expert Revised Annotations in Interactive Segmentation: Continual Tuning or Full Training?
Tiezheng Zhang, Xiaoxi Chen, Chongyu Qu, Alan Yuille, Zongwei Zhou
One model to use them all: Training a segmentation model with complementary datasets
Alexander C. Jenke, Sebastian Bodenstedt, Fiona R. Kolbinger, Marius Distler, Jürgen Weitz, Stefanie Speidel