Assessment of Asteroid Classification Using Deep Convolutional Neural Networks

IF 0.1 4区 工程技术 Q4 ENGINEERING, AEROSPACE Aerospace America Pub Date : 2023-08-25 DOI:10.3390/aerospace10090752
V. Bâcu, C. Nandra, A. Sabou, T. Stefanut, D. Gorgan
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Abstract

Near-Earth Asteroids represent potential threats to human life because their trajectories may bring them in the proximity of the Earth. Monitoring these objects could help predict future impact events, but such efforts are hindered by the large numbers of objects that pass in the Earth’s vicinity. Additionally, there is also the problem of distinguishing asteroids from other objects in the night sky, which implies sifting through large sets of telescope image data. Within this context, we believe that employing machine learning techniques could greatly improve the detection process by sorting out the most likely asteroid candidates to be reviewed by human experts. At the moment, the use of machine learning techniques is still limited in the field of astronomy and the main goal of the present paper is to study the effectiveness of deep convolutional neural networks for the classification of astronomical objects, asteroids in this particular case, by comparing some of the well-known deep convolutional neural networks, including InceptionV3, Xception, InceptionResNetV2 and ResNet152V2. We applied transfer learning and fine-tuning on these pre-existing deep convolutional networks, and from the results that we obtained, the potential of using deep convolutional neural networks in the process of asteroid classification can be seen. The InceptionV3 model has the best results in the asteroid class, meaning that by using it, we lose the least number of valid asteroids.
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基于深度卷积神经网络的小行星分类评估
近地小行星对人类生命构成潜在威胁,因为它们的轨道可能会使它们靠近地球。对这些物体的监测有助于预测未来的撞击事件,但这种努力受到大量在地球附近经过的物体的阻碍。此外,将小行星与夜空中的其他物体区分开来也是一个问题,这意味着要筛选大量的望远镜图像数据。在这种情况下,我们相信采用机器学习技术可以通过挑选最有可能的小行星候选者来由人类专家进行审查,从而大大改善检测过程。目前,机器学习技术在天文学领域的应用仍然有限,本文的主要目标是通过比较一些知名的深度卷积神经网络,包括InceptionV3, Xception, InceptionResNetV2和ResNet152V2,来研究深度卷积神经网络在这种特殊情况下对天文物体,小行星分类的有效性。我们将迁移学习和微调应用在这些已有的深度卷积网络上,从我们获得的结果中,可以看出在小行星分类过程中使用深度卷积神经网络的潜力。InceptionV3模型在小行星类中有最好的结果,这意味着通过使用它,我们失去了最少数量的有效小行星。
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来源期刊
Aerospace America
Aerospace America 工程技术-工程:宇航
自引率
0.00%
发文量
9
审稿时长
4-8 weeks
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