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首页> 外文期刊>Astronomy and astrophysics >Space variant deconvolution of galaxy survey images
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Space variant deconvolution of galaxy survey images

机译:星系调查图像的空间变卷积

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摘要

Removing the aberrations introduced by the point spread function (PSF) is a fundamental aspect of astronomical image processing. The presence of noise in observed images makes deconvolution a nontrivial task that necessitates the use of regularisation. This task is particularly difficult when the PSF varies spatially as is the case for the Euclid telescope. New surveys will provide images containing thousand of galaxies and the deconvolution regularisation problem can be considered from a completely new perspective. In fact, one can assume that galaxies belong to a low-rank dimensional space. This work introduces the use of the low-rank matrix approximation as a regularisation prior for galaxy image deconvolution and compares its performance with a standard sparse regularisation technique. This new approach leads to a natural way to handle a space variant PSF. Deconvolution is performed using a Python code that implements a primal-dual splitting algorithm. The data set considered is a sample of 10?000 space-based galaxy images convolved with a known spatially varying Euclid-like PSF and including various levels of Gaussian additive noise. Performance is assessed by examining the deconvolved galaxy image pixels and shapes. The results demonstrate that for small samples of galaxies sparsity performs better in terms of pixel and shape recovery, while for larger samples of galaxies it is possible to obtain more accurate estimates of the galaxy shapes using the low-rank approximation.
机译:消除由点扩展函数(PSF)引入的像差是天文图​​像处理的基本方面。观察到的图像中存在噪声,使得反卷积成为一项非平凡的任务,需要使用正则化。当PSF像Euclid望远镜那样在空间上变化时,此任务特别困难。新的勘测将提供包含数千个星系的图像,并且可以从全新的角度考虑反卷积正则化问题。实际上,可以假定星系属于低等级空间。这项工作介绍了使用低秩矩阵近似作为银河图像反卷积的正则化先验,并将其性能与标准稀疏正则化技术进行了比较。这种新方法导致处理空间变型PSF的自然方法。使用实现原始对偶拆分算法的Python代码执行反卷积。所考虑的数据集是一个10万个基于天基的星系图像的样本,这些图像与已知的空间变化的欧几里德式PSF卷积在一起,并包括各种级别的高斯加性噪声。通过检查反卷积的银河图像像素和形状来评估性能。结果表明,对于较小的星系样本,稀疏度在像素和形状恢复方面表现更好,而对于较大的星系样本,可以使用低秩近似来获得更准确的星系形状估计。

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