Ground Truth Annotation

Ground truth annotation, the process of creating accurate labels for data used in machine learning, is crucial for training effective models but faces significant challenges. Current research focuses on automating annotation through techniques like leveraging foundation models (e.g., Segment Anything Model) and self-supervised learning, as well as developing methods to mitigate biases introduced by automated or incomplete annotations. The development of high-quality, efficiently generated ground truth data is essential for advancing various fields, including medical image analysis, autonomous driving, and object detection, enabling more robust and reliable AI systems.

Papers