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Stellar Spectral Classification with Machine Learning Classifier Systems and Chebyshev Coefficients using the Tonantzintla Schmidt Camera Plate Collection

机译:使用Tonantzintla Schmidt相机印版集合进行机器学习分类器系统和Chebyshev系数的恒星光谱分类

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We propose a method for automatic stellar spectral classification using a large collection of astronomical plate images improving the number of true positives for several spectral type classes in comparison with other approaches using the WND-CHARM feature extractor in order to study the most relevant parameters for this problem, concluding that Chebyshev Coefficients applied to images are the best alternative to describe up to seven different Stellar Spectral Types according to the Harvard Spectral Classification system taking account the main classes [O, B, A, F, G, K, M] sorted from the hottest to the coldest stellar object by their chemical composition. We present precision and accuracy rates reached by multiple machine learning approaches, obtaining applicable results for five and seven of the most important stellar spectral classes.
机译:与使用WND-CHARM特征提取器的其他方法相比,我们提出了一种使用大量天文板图像集合进行自动恒星光谱分类的方法,与使用WND-CHARM特征提取器的其他方法相比,该方法可以改善几种光谱类型类别的真实正数。问题,得出结论,根据哈佛光谱分类系统,考虑到主要类别[O,B,A,F,G,K,M],将切比雪夫系数应用于图像是描述多达七种不同恒星光谱类型的最佳选择从最热到最冷的恒星物体,根据它们的化学成分。我们提出了多种机器学习方法所达到的精度和准确率,从而获得了适用于五种和七种最重要的恒星光谱类别的适用结果。

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