无线电干涉图像中卷积伪影的图谱聚类

Matthieu Simeoni, P. Hurley
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引用次数: 4

摘要

射电天文学中反卷积方法的起点是对天空强度的估计,称为脏图像。这些方法依靠望远镜的点扩散函数来去除污染它的伪影。在这项工作中,我们证明了强度场只是匹配滤波干涉数据的部分汇总统计,我们证明了在天球上是空间相关的。这允许我们定义一个天空协方差函数。这个先前未开发的数量为我们带来了可以在去除脏图像伪影的过程中利用的额外信息。我们使用一种新的无监督学习方法来证明这一点。这个问题是在一个图上表述的:每个像素被解释为一个节点,由根据空间相关性加权的边连接起来。然后,我们使用光谱聚类来分离各组伪影,并识别其中的物理源。
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Graph Spectral Clustering of Convolution Artefacts in Radio Interferometric Images
The starting point for deconvolution methods in radio astronomy is an estimate of the sky intensity called a dirty image. These methods rely on the telescope point-spread function so as to remove artefacts which pollute it. In this work, we show that the intensity field is only a partial summary statistic of the matched filtered interferometric data, which we prove is spatially correlated on the celestial sphere. This allows us to define a sky covariance function. This previously unexplored quantity brings us additional information that can be leveraged in the process of removing dirty image artefacts. We demonstrate this using a novel unsupervised learning method. The problem is formulated on a graph: each pixel interpreted as a node, linked by edges weighted according to their spatial correlation. We then use spectral clustering to separate the artefacts in groups, and identify physical sources within them.
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