
Annotation Methods for Domain Migration: From Synthetic to Real Data
Synthetic data provides scalability when training AI models. However, real-world applications require accurate annotations that capture unpredictable variables such as lighting or object boundaries. This domain shift, where the source and target data distributions differ, poses challenges in maintaining AI model accuracy.
This gap can be bridged by using strategic