TL;DR
This paper evaluates how vision foundation models can be adapted for optical and radio astronomy, demonstrating their potential to improve classification and detection tasks despite domain-specific challenges.
Contribution
It provides a comprehensive framework for selecting, fine-tuning, and optimizing vision foundation models specifically for astrophysical datasets.
Findings
Features from foundation models improve optical galaxy classification.
Models achieve comparable or better radio object detection performance.
Radio galaxy classification remains challenging with foundation models.
Abstract
Vision foundation models, which have demonstrated significant potential in many multimedia applications, are often underutilized in the natural sciences. This is primarily due to mismatches between the nature of domain-specific scientific data and the typical training data used for foundation models, leading to distribution shifts. Scientific data often differ substantially in structure and characteristics, and researchers frequently face the challenge of optimizing model performance with limited labeled data of only a few hundred or thousand images. This work evaluates the performance of vision foundation models in astrophysics, with a focus on identifying the best practices for adapting them to domain-specific datasets. We aim to establish a framework for selecting, fine-tuning, and optimizing these models for common tasks in optical and radio astronomy. We compared multiple…
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