pith. sign in

Grounding Synthetic Data Generation With Vision and Language Models

1 Pith paper cite this work. Polarity classification is still indexing.

1 Pith paper citing it
abstract

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. Our approach combines generative models, semantic segmentation and image captioning with vision and language models. Based on this framework, we introduce ARAS400k: A large-scale Remote sensing dataset Augmented with Synthetic data for segmentation and captioning, containing 100k real images and 300k synthetic images, each paired with segmentation maps and descriptions. ARAS400k enables the automated evaluation of synthetic data by analyzing semantic composition, minimizing caption redundancy, and verifying cross-modal consistency between visual structures and language descriptions. Experimental results indicate that while models trained exclusively on synthetic data reach competitive performance levels, those trained with augmented data (a combination of real and synthetic images) consistently outperform real-data baselines. Consequently, this work establishes a scalable benchmark for remote sensing tasks, specifically in semantic segmentation and image captioning. The dataset is available at zenodo.org/records/18890661 and the code base at github.com/caglarmert/ARAS400k.

fields

eess.IV 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

LALE: Lightweight-Transformer Architecture for Land-Cover Estimation

eess.IV · 2026-06-01 · unverdicted · novelty 5.0

LALE introduces a bifurcated ConvMixer-transformer encoder with an all-MLP decoder for efficient semantic segmentation of remote sensing imagery, achieving near-baseline F1 scores with 4.5x fewer parameters on the ARAS400k benchmark.

citing papers explorer

Showing 1 of 1 citing paper.

  • LALE: Lightweight-Transformer Architecture for Land-Cover Estimation eess.IV · 2026-06-01 · unverdicted · none · ref 26 · internal anchor

    LALE introduces a bifurcated ConvMixer-transformer encoder with an all-MLP decoder for efficient semantic segmentation of remote sensing imagery, achieving near-baseline F1 scores with 4.5x fewer parameters on the ARAS400k benchmark.