AI RESEARCH

Grounding Synthetic Data Generation With Vision and Language Models

arXiv CS.AI

ArXi:2603.09625v1 Announce Type: cross Deep learning models benefit from increasing data diversity and volume, motivating synthetic data augmentation to improve existing datasets. However, existing evaluation metrics for synthetic data typically calculate latent feature similarity, which is difficult to interpret and does not always correlate with the contribution to downstream tasks. We propose a vision-language grounded framework for interpretable synthetic data augmentation and evaluation in remote sensing.