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Towards Automating Search and Classification of Protostellar Images

机译:迈为自动化素材图像的搜索和分类

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Research on the origins of planets and life centers around protoplanetary disks and protostars, for which the Atacama Large Millimeter/sub-millimeter Array (ALMA) has been revolutionary due to its ability to capture high-resolution images with exceptional sensitivity. Astronomers study these birthplaces of planets and their properties, which determine the properties of any eventual planets. The ALMA science archive contains over a petabyte of astronomical data which has been collected by the ALMA telescope over the last decade. While the archive data is publicly available, manually searching through many thousands of unlabelled images and ascertaining the type and physical properties of celestial objects is immensely labor-intensive. For these reasons, an exhaustive manual search of the archive is unlikely to be comprehensive and creates the potential for astronomers to miss objects that were not the primary target of the telescope observational program. We develop a Python package to automate the noise filtration process, identify astronomical objects within a single image, and fit bivariate Gaussians to each detection. We apply an unsupervised learning algorithm to identify many apparently different protostellar disk images in a curated ALMA data set. Using this model and the residuals from a bivariate Gaussian fit, we can flag images of an unusual nature (e.g. spiral, ring, or other structure that does not adhere to a bivariate Gaussian shape) for manual review by astronomers, allowing them to examine a small subset of interesting images without sifting through the entire archive. Our open-source package is intended to assist astronomers in making new scientific discoveries by eliminating a labor-intensive bottleneck in their research.
机译:由于其捕获具有特殊敏感性的高分辨率图像的能力,atacama大型磁盘和矩形周围的行星和生命中心的起源研究,其中Atacama大毫米/毫米阵列(Alma)是革命性的。天文学家研究这些行星的出生地及其属性,从而确定了任何最终行星的性质。 Alma Science Archive含有在过去十年中由Alma Telescope收集的天文数据的薄粘土。虽然存档数据是公开可用的,但手动搜索数千个未标记的图像并确定天体对象的类型和物理性质是完全劳动密集的。由于这些原因,对档案的详尽性手动搜索不太可能是全面的,并为天文学家造成潜在的潜力,以错过不是望远镜观测程序的主要目标的物体。我们开发一个Python包以自动化噪声过滤过程,识别单个图像内的天文对象,并将双变化的高斯符合每个检测。我们应用无监督的学习算法,以在策划的ALMA数据集中识别许多明显不同的原状磁盘图像。使用该模型和来自双震高斯拟合的残差,我们可以为天文学家进行手动回顾,我们可以从一只异常的性质(例如螺旋,环或不粘附在一只肌肉高斯形状的其他结构上)标记图像,以便他们检查一个没有筛选整个存档的有趣图像的小子集。我们的开源包装旨在帮助天文学家通过消除研究中的劳动密集型瓶颈来制定新的科学发现。

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