Automated galaxy sizes in Euclid images using the Segment Anything Model
J. Vega-Ferrero, F. Buitrago, J. Fern\'andez-Iglesias, S. Raji, B., Sahelices, H. Dom\'inguez S\'anchez

TL;DR
This study demonstrates that the Segment Anything Model (SAM) can automatically and accurately identify galaxy disk truncations in Euclid-like images, enabling large-scale galaxy size measurements without extensive preprocessing or training.
Contribution
The paper shows that SAM can effectively detect galaxy truncations and measure sizes in large datasets, with minimal preprocessing and no need for domain-specific training.
Findings
SAM achieves ~3% deviation from manual size measurements
Performance improves to ~1% deviation when excluding problematic cases
SAM operates effectively without extensive preprocessing or additional training
Abstract
Stellar disk truncations, also referred to as galaxy edges, are key indicators of galactic size, determined by the radial location of the gas density threshold for star formation. Accurately measuring galaxy sizes for millions of galaxies is essential for understanding the physical processes driving galaxy evolution over cosmic time. In this study, we aim to explore the potential of the Segment Anything Model (SAM), a foundation model designed for image segmentation, to automatically identify disk truncations in galaxy images. With the Euclid Wide Survey poised to deliver vast datasets, our goal is to assess SAM's capability to measure galaxy sizes in a fully automated manner. SAM was applied to a labeled dataset of 1,047 disk-like galaxies with at redshifts up to , sourced from the HST CANDELS fields. We 'euclidized' the HST galaxy images by creating…
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Taxonomy
TopicsTechnology and Data Analysis · Korean Urban and Social Studies · Big Data Technologies and Applications
