학술논문

Deep-learnt classification of light curves
Document Type
Conference
Source
2017 IEEE Symposium Series on Computational Intelligence (SSCI) Computational Intelligence (SSCI), 2017 IEEE Symposium Series on. :1-8 Nov, 2017
Subject
Computing and Processing
Standards
Training
Kernel
Time series analysis
Cathode ray tubes
Transient analysis
Astronomy
Language
Abstract
Astronomy light curves are sparse, gappy, and heteroscedastic. As a result standard time series methods regularly used for financial and similar datasets are of little help and astronomers are usually left to their own instruments and techniques to classify light curves. A common approach is to derive statistical features from the time series and to use machine learning methods, generally supervised, to separate objects into a few of the standard classes. In this work, we transform the time series to two-dimensional light curve representations in order to classify them using modern deep learning techniques. In particular, we show that convolutional neural networks based classifiers work well for broad characterization and classification. We use labeled datasets of periodic variables from CRTS survey and show how this opens doors for a quick classification of diverse classes with several possible exciting extensions.