Surveying Image Segmentation Approaches in Astronomy
Duo Xu, Ye Zhu

TL;DR
This paper reviews the evolution of image segmentation methods in astronomy, highlighting the shift from traditional techniques to advanced machine learning approaches that significantly improve accuracy and efficiency.
Contribution
It provides a comprehensive overview of classical and machine learning-based segmentation methods, emphasizing recent advancements and their impact on astronomical image analysis.
Findings
Classical methods are insufficient for high-accuracy segmentation needs.
Deep learning approaches significantly improve segmentation accuracy.
Automated methods reduce manual effort and bias in astronomical data analysis.
Abstract
Image segmentation plays a critical role in unlocking the mysteries of the universe, providing astronomers with a clearer perspective on celestial objects within complex astronomical images and data cubes. Manual segmentation, while traditional, is not only time-consuming but also susceptible to biases introduced by human intervention. As a result, automated segmentation methods have become essential for achieving robust and consistent results in astronomical studies. This review begins by summarizing traditional and classical segmentation methods widely used in astronomical tasks. Despite the significant improvements these methods have brought to segmentation outcomes, they fail to meet astronomers' expectations, requiring additional human correction, further intensifying the labor-intensive nature of the segmentation process. The review then focuses on the transformative impact of…
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Taxonomy
TopicsAstronomical Observations and Instrumentation
