Integrating temporal and spectral features of astronomical data using wavelet analysis for source classification

T. Ukwatta, P. Wozniak
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引用次数: 2

Abstract

Temporal and spectral information extracted from a stream of photons received from astronomical sources is the foundation on which we build understanding of various objects and processes in the Universe. Typically astronomers fit a number of models separately to light curves and spectra to extract relevant features. These features are then used to classify, identify, and understand the nature of the sources. However, these feature extraction methods may not be optimally sensitive to unknown properties of light curves and spectra. One can use the raw light curves and spectra as features to train classifiers, but this typically increases the dimensionality of the problem, often by several orders of magnitude. We overcome this problem by integrating light curves and spectra to create an abstract image and using wavelet analysis to extract important features from the image. Such features incorporate both temporal and spectral properties of the astronomical data. Classification is then performed on those abstract features. In order to demonstrate this technique, we have used gamma-ray burst (GRB) data from the NASA's Swift mission to classify GRBs into high- and low-redshift groups. Reliable selection of high-redshift GRBs is of considerable interest in astrophysics and cosmology.
利用小波分析综合天文数据的时间和光谱特征进行源分类
从天文来源接收的光子流中提取的时间和光谱信息是我们理解宇宙中各种物体和过程的基础。通常情况下,天文学家将许多模型分别与光曲线和光谱相匹配,以提取相关特征。然后使用这些特征来分类、识别和理解源的性质。然而,这些特征提取方法可能对光曲线和光谱的未知特性不太敏感。人们可以使用原始光曲线和光谱作为训练分类器的特征,但这通常会增加问题的维度,通常会增加几个数量级。我们通过整合光曲线和光谱来创建一个抽象图像,并使用小波分析从图像中提取重要特征来克服这个问题。这些特征结合了天文数据的时间和光谱特性。然后对这些抽象特征进行分类。为了演示这项技术,我们使用了来自美国宇航局雨燕任务的伽马射线暴(GRB)数据,将GRB分为高红移组和低红移组。高红移伽马射线暴的可靠选择在天体物理学和宇宙学中具有相当大的兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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