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Machine learning based data mining for milky way filamentary structures reconstruction

机译:基于机器学习的银河系丝状结构重建数据挖掘

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摘要

We present an innovative method called FilExSeC (Filaments Extraction, Selection and Classification), a data mining tool developed to investigate the possibility to refine and optimize the shape reconstruction of filamentary structures detected with a consolidated method based on the flux derivative analysis, through the column-density maps computed from Herschel infrared Galactic Plane Survey (Hi-GAL) observations of the Galactic plane. The present methodology is based on a feature extraction module followed by a machine learning model (Random Forest) dedicated to select features and to classify the pixels of the input images. From tests on both simulations and real observations the method appears reliable and robust with respect to the variability of shape and distribution of filaments. In the cases of highly defined filament structures, the presented method is able to bridge the gaps among the detected fragments, thus improving their shape reconstruction. From a preliminary a posteriori analysis of derived filament physical parameters, themethod appears potentially able to add a sufficient contribution to complete and refine the filament reconstruction.
机译:我们提出了一种创新的方法,称为FilExSeC(细丝提取,选择和分类),这是一种数据挖掘工具,其开发目的是调查通过基于导数导数分析的合并方法来细化和优化检测到的细丝结构形状重构的可能性,该方法通过色谱柱密度图,根据银河平面的赫歇尔红外银河平面调查(Hi-GAL)观测值计算得出。本方法基于特征提取模块,其后是专用于选择特征并对输入图像的像素进行分类的机器学习模型(Random Forest)。从模拟和实际观察的测试来看,该方法在长丝形状和分布的可变性方面似乎是可靠且健壮的。在高度确定的细丝结构的情况下,提出的方法能够弥合检测到的碎片之间的间隙,从而改善其形状重构。从派生的细丝物理参数的初步后验分析来看,该方法似乎有可能为完成和细化细丝重构增加足够的贡献。

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