卷积神经网络在天琴座RR光曲线分类中的比较

A. Morales, Javier Rojas, P. Huijse, R. C. Ramos
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引用次数: 0

摘要

光曲线是天体亮度的时间序列,是分析变星的基础。天琴座RR是一种特殊类型的变星,在它们的光曲线上表现出周期性的行为。通过Lactea (VVV)调查的Vista变量旨在了解我们的星系是如何形成的,而找到大量的天琴座RR是实现这一目标的关键。在这项工作中,我们使用VVV调查的光曲线子集来评估卷积神经网络对RR Lyrae的自动分类。为了解决光曲线之间的长度差异,我们比较了填充、部分卷积和基于子采样的策略。实验表明,在补零光曲线上使用全局最大池化算子的传统卷积层获得了最好的测试集结果。未来的工作包括使用连续时间卷积进行测试,探索与基于特征的模型的协同作用,以及在更多类别的周期变星上进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Convolutional Neural Networks for RR Lyrae Light Curve Classification
Light curves are time series of the brightness of astronomical objects and are fundamental to analyze variable stars. RR Lyrae are a particular type of variable stars that exhibit periodic behavior in their light curves. The Vista Variable in the Via Lactea (VVV) survey aims to understand how our galaxy was formed and finding large quantities of RR Lyrae is key to accomplish this. In this work we evaluate convolutional neural networks for the automatic classification of RR Lyrae using a subset of the light curves of the VVV survey. To address the differences in length between light curves we compare padding, partial-convolution and subsampling based strategies. The experiments show that the best test-set results are achieved using conventional convolutional layers with a global max pooling operator over zero-padded light curves. Future work includes testing with continuous-time convolutions, exploring synergies with feature-based models and evaluating on more classes of periodic variable star.
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