Post-training Iterative Hierarchical Data Augmentation for Deep Networks

Neural Information Processing Systems 

In this paper, we propose a new iterative hierarchical data augmentation (IHDA) method to fine-tune trained deep neural networks to improve their generalization performance. The IHDA is motivated by three key insights: (1) Deep networks (DNs) are good at learning multi-level representations from data.