Sample-Efficient Multi-Round Generative Data Augmentation for Long-Tail Instance Segmentation

Neural Information Processing Systems 

Data synthesis has become increasingly crucial for long-tail instance segmentation tasks to mitigate class imbalance and high annotation costs. Previous methods have primarily prioritized the selection of data from a pre-generated image object pool, which frequently leads to the inefficient utilization of generated data.