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TimeTubes: Automatic Extraction of Observable Blazar Features from Long-Term, Multi-Dimensional Datasets

机译:TimeTubes:从长期的多维数据集中自动提取可观察到的Blazar特征

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Blazars are attractive objects for astronomers to observe in order to demystify the relativistic jet. Astronomers need to classify characteristic temporal variation patterns and correlations of multidimensional time-dependent observed blazar datasets. Our visualization scheme, called TimeTubes, allows them to easily explore and analyze such datasets geometrically as a 3D volumetric tube. Even with TimeTubes, however, data analysis over such long-term datasets costs them so much labor and may cause a biased analysis. This paper, therefore, attempts to incorporate into the current prototype of TimeTubes, a new functionality: feature extraction, which supports astronomers' efficient data analysis by automatically extracting characteristic spatiotemporal subspaces.
机译:为了使相对论射流神秘化,天体是天文学家观察的有吸引力的物体。天文学家需要对特征性的时间变化模式和多维随时间变化的观测blazar数据集的相关性进行分类。我们称为TimeTubes的可视化方案,使他们能够轻松地以几何形式(如3D体积管)探索和分析此类数据集。但是,即使使用TimeTubes,在如此长期的数据集上进行数据分析也会花费大量的精力,并可能导致分析结果有偏差。因此,本文试图将TimeTubes的新原型纳入一项新功能:特征提取,该功能通过自动提取特征时空子空间来支持天文学家的有效数据分析。

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