基于卷积神经网络算法层的天体分类

D. Kyselica, Linda Jurkasová, R. Ďurikovič, J. Silha
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引用次数: 0

摘要

我们的工作重点是现代实验机器学习算法在空间物体分类中的应用。分析了两种类型的数据,即天文柔性图像传输系统(FITS)框架上的框架对象和空间对象的光曲线,这些光曲线可以被视为给定对象的足迹。在我们的工作中,我们将介绍用于识别FITS帧中存在的帧对象的ML算法,通过使用它们的特定形状。提出的算法是一个9层卷积神经网络(CNN)。网络的输入是一个50x50的小图像,它必须只包含一个对象,网络才能正确地对它进行分类。在完整FITS图像中找到感兴趣的区域后,可以将其用作基于区域的CNN中的子网。此外,我们还展示了应用基于ResNet架构的CNN神经网络根据光线曲线的形状进行分类的结果。对于深度学习,我们主要使用了精选的上层人口的公开目录光曲线,例如,猎鹰9号,阿特拉斯半人马5号,德尔塔4号,它们通常在光度系列中包含更简单的特征。建模软件Blender也被用来生成用于训练的合成光曲线。算法可以正确识别超过84%的被测物体。在不久的将来,我们计划将该算法扩展到识别更复杂的目标,如盒翼和单盒翼卫星。
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Astronomical Objects Classification by Convolutional Neural Network Algorithms Layers
Our work focuses on application of modern experimental Machine Learning (ML) algorithms toward the space objects classification. Two types of data are analyzed, frame objects present on the astronomical Flexible Image Transport System (FITS) frames and space objects’ light curves, which could be considered as a footprint for given object. In our work we will present ML algorithm used for recognition of frame objects present in the FITS frames by using their specific shape. Presented algorithm is a Convolutional Neural Network (CNN) of 9 layers. The input to the network is a small 50x50 image which must contain only one object for the network to correctly classify it. This could later be used as subnet in region-based CNN after finding regions of interest in full FITS image. Additionally, we present results of applying CNN neural network based on ResNet architecture to classify light curves to categories based on their shape. For deep learning we used primarily public catalogue light curves of selected populations of upper stages e.g., Falcon 9, Atlas Centaur 5, Delta 4 which usually contain simpler features in their photometric series. The modeling software Blender was also used to generate synthetic light curves for training purposes. Algorithm can identify correctly more than 84% of tested objects. In near future we plan to extend the algorithm to identify more complex objects such as box-wing and single box-wing satellites.
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