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Autores principales: Zhang, Shiliang, Fang, Guanwen, Song, Jie, Li, Ran, Gu, Yizhou, Lin, Zesen, Zhou, Chichun, Dai, Yao, Kong, Xu
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2409.13296
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author Zhang, Shiliang
Fang, Guanwen
Song, Jie
Li, Ran
Gu, Yizhou
Lin, Zesen
Zhou, Chichun
Dai, Yao
Kong, Xu
author_facet Zhang, Shiliang
Fang, Guanwen
Song, Jie
Li, Ran
Gu, Yizhou
Lin, Zesen
Zhou, Chichun
Dai, Yao
Kong, Xu
contents Most existing star-galaxy classifiers depend on the reduced information from catalogs, necessitating careful data processing and feature extraction. In this study, we employ a supervised machine learning method (GoogLeNet) to automatically classify stars and galaxies in the COSMOS field. Unlike traditional machine learning methods, we introduce several preprocessing techniques, including noise reduction and the unwrapping of denoised images in polar coordinates, applied to our carefully selected samples of stars and galaxies. By dividing the selected samples into training and validation sets in an 8:2 ratio, we evaluate the performance of the GoogLeNet model in distinguishing between stars and galaxies. The results indicate that the GoogLeNet model is highly effective, achieving accuracies of 99.6% and 99.9% for stars and galaxies, respectively. Furthermore, by comparing the results with and without preprocessing, we find that preprocessing can significantly improve classification accuracy (by approximately 2.0% to 6.0%) when the images are rotated. In preparation for the future launch of the China Space Station Telescope (CSST), we also evaluate the performance of the GoogLeNet model on the CSST simulation data. These results demonstrate a high level of accuracy (approximately 99.8%), indicating that this model can be effectively utilized for future observations with the CSST.
format Preprint
id arxiv_https___arxiv_org_abs_2409_13296
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Preparation for CSST: Star-galaxy Classification using a Rotationally Invariant Supervised Machine Learning Method
Zhang, Shiliang
Fang, Guanwen
Song, Jie
Li, Ran
Gu, Yizhou
Lin, Zesen
Zhou, Chichun
Dai, Yao
Kong, Xu
Astrophysics of Galaxies
Most existing star-galaxy classifiers depend on the reduced information from catalogs, necessitating careful data processing and feature extraction. In this study, we employ a supervised machine learning method (GoogLeNet) to automatically classify stars and galaxies in the COSMOS field. Unlike traditional machine learning methods, we introduce several preprocessing techniques, including noise reduction and the unwrapping of denoised images in polar coordinates, applied to our carefully selected samples of stars and galaxies. By dividing the selected samples into training and validation sets in an 8:2 ratio, we evaluate the performance of the GoogLeNet model in distinguishing between stars and galaxies. The results indicate that the GoogLeNet model is highly effective, achieving accuracies of 99.6% and 99.9% for stars and galaxies, respectively. Furthermore, by comparing the results with and without preprocessing, we find that preprocessing can significantly improve classification accuracy (by approximately 2.0% to 6.0%) when the images are rotated. In preparation for the future launch of the China Space Station Telescope (CSST), we also evaluate the performance of the GoogLeNet model on the CSST simulation data. These results demonstrate a high level of accuracy (approximately 99.8%), indicating that this model can be effectively utilized for future observations with the CSST.
title Preparation for CSST: Star-galaxy Classification using a Rotationally Invariant Supervised Machine Learning Method
topic Astrophysics of Galaxies
url https://arxiv.org/abs/2409.13296