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Iterative methods for the reconstruction of astronomical images with high dynamic range

机译:高动态范围天文图像重建的迭代方法

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In most cases astronomical images contain objects with very different intensities such as bright stars combined with faint nebulae. Since the noise is mainly due to photon counting (Poisson noise), the signal-to-noise ratio may be very different in different regions of the image. Moreover, the bright and faint objects have, in general, different angular scales. These features imply that the iterative methods which are most frequently used for the reconstruction of astronomical images, namely the Richardson-Lucy Method (RLM), also known in tomography as Expectation Maximization (EM) method, and the Iterative Space Reconstruction Algorithm (ISRA) do not work well in these cases. Also standard regularization approaches do not provide satisfactory results since a kind of adaptive regularization is required, in the sense that one needs a different regularization for bright and faint objects. In this paper we analyze a number of regularization functionals with this particular kind of adaptivity and we propose a simple modification of RLM and ISRA which takes into account these regularization terms. The preliminary results on a test object are promising. (c) 2005 Elsevier B.V. All rights reserved.
机译:在大多数情况下,天文图像包含强度非常不同的物体,例如明亮的恒星和微弱的星云结合在一起。由于噪声主要是由于光子计数(泊松噪声)引起的,因此信噪比在图像的不同区域可能会非常不同。此外,明亮和暗淡的物体通常具有不同的角度比例。这些特征意味着最常用于重建天文图像的迭代方法,即Richardson-Lucy方法(RLM)(在层析成像中也称为期望最大化(EM)方法)和迭代空间重建算法(ISRA)在这些情况下效果不佳。同样,标准的正则化方法也无法提供令人满意的结果,因为需要一种自适应正则化,就某种意义而言,对于明亮和微弱的对象,它们需要不同的正则化。在本文中,我们分析了具有这种特殊适应性的许多正则化功能,并提出了考虑这些正则化项的RLM和ISRA的简单修改。关于测试对象的初步结果很有希望。 (c)2005 Elsevier B.V.保留所有权利。

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