FLARE up your data: Diffusion-based Augmentation Method in Astronomical Imaging
Mohammed Talha Alam, Raza Imam, Mohsen Guizani, Fakhri Karray

TL;DR
The paper introduces FLARE, a two-stage diffusion-based augmentation framework for astronomical imaging that improves classification accuracy by synthetically generating samples and realigning feature space distributions.
Contribution
It proposes a novel two-stage augmentation method combining feature learning and diffusion models to enhance astronomical image classification performance.
Findings
Achieves up to 20.78% performance gain on fine-grained tasks.
Shows a consistent +15% improvement across various models.
Effective in both in-domain and out-of-domain tasks.
Abstract
The intersection of Astronomy and AI encounters significant challenges related to issues such as noisy backgrounds, lower resolution (LR), and the intricate process of filtering and archiving images from advanced telescopes like the James Webb. Given the dispersion of raw images in feature space, we have proposed a \textit{two-stage augmentation framework} entitled as \textbf{FLARE} based on \underline{f}eature \underline{l}earning and \underline{a}ugmented \underline{r}esolution \underline{e}nhancement. We first apply lower (LR) to higher resolution (HR) conversion followed by standard augmentations. Secondly, we integrate a diffusion approach to synthetically generate samples using class-concatenated prompts. By merging these two stages using weighted percentiles, we realign the feature space distribution, enabling a classification model to establish a distinct decision boundary and…
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Taxonomy
TopicsStatistical and numerical algorithms
Methods[[Refund`Get®]]How do I get American Airlines to respond? · Diffusion
