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Towards automatic quality assessment of tomograms of cataclysmic variable stars

机译:走向大灾变星断层图像的自动质量评估

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Astronomy provides important challenges for computer sciences, since there are many astronomical phenomena that must be studied through computational means. One of them is cataclysmic variable stars (CV). These phenomena must be studied through indirect observation techniques, since modern instruments are not able to directly obtain information about their structure and behavior. One of such techniques, Doppler tomography, uses a search algorithm to generate an image, called tomogram that depicts the relevant structures of a cataclysmic variable star. One important drawback of this algorithm is that it lacks any criteria to decide when to stop the search. This paper proposes an approach to automatically stop the algorithm based on the quality of the tomogram. The approach is to process each tomogram with the Sobel operator and then calculate the standard deviation (SD) of the result. The SD values of all of the tomograms generated during the search are introduced into a feed-forward neural network that indicates which tomograms have the best scientific quality. The neural network training data was created with the assessment of an expert astronomer.
机译:天文学为计算机科学提出了重要的挑战,因为必须通过计算手段研究许多天文学现象。其中之一是大变星(CV)。由于现代仪器无法直接获得有关其结构和行为的信息,因此必须通过间接观察技术来研究这些现象。多普勒断层扫描是一种这样的技术,它使用搜索算法来生成称为断层图的图像,该图像描述了灾难性变星的相关结构。该算法的一个重要缺点是,它缺乏决定何时停止搜索的标准。本文提出了一种基于断层图像质量自动停止算法的方法。方法是使用Sobel运算符处理每个断层图,然后计算结果的标准差(SD)。在搜索过程中生成的所有断层图的SD值都被引入到前馈神经网络中,该神经网络指示哪些断层图具有最佳的科学质量。神经网络训练数据是在专家天文学家的评估下创建的。

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