Leveraging Transfer Learning for Astronomical Image Analysis
Abstract
The exponential growth of astronomical data from large-scale surveys has created both opportunities and challenges for the astrophysics community. This paper explores the possibilities offered by transfer learning techniques in addressing these challenges across various domains of astronomical research. We present a set of recent applications of transfer learning methods for astronomical tasks based on the usage of a pre-trained convolutional neural networks. The examples shortly discussed include the detection of candidate active galactic nuclei (AGN), the possibility of deriving physical parameters for galaxies directly from images, the identification of artifacts in time series images, and the detection of strong lensing candidates and outliers. We demonstrate how transfer learning enables efficient analysis of complex astronomical phenomena, particularly in scenarios where labeled data is scarce. This kind of method will be very helpful for upcoming large-scale surveys like the Rubin Legacy Survey of Space and Time (LSST). By showcasing successful implementations and discussing methodological approaches, we highlight the versatility and effectiveness of such techniques.
Cite
@article{arxiv.2411.18206,
title = {Leveraging Transfer Learning for Astronomical Image Analysis},
author = {Stefano Cavuoti and Lars Doorenbos and Demetra De Cicco and Gianluca Sasanelli and Massimo Brescia and Giuseppe Longo and Maurizio Paolillo and Olena Torbaniuk and Giuseppe Angora and Crescenzo Tortora},
journal= {arXiv preprint arXiv:2411.18206},
year = {2024}
}
Comments
proceeding of the Seventeenth Marcel Grossmann Meeting