Solar Imaging by Blind Deconvolution of Segments from Multiple frames

N. Miura, N. Baba, F. Tsumuraya, T. Sakurai
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Abstract

A short-exposure solar image observed on the ground is given as the convolution of a solar surface structure and an instantaneous point-spread-function (PSF) of an atmosphere-telescope system 1. Thus, one can hardly observe finer structure on the solar surface than a seeing-disk size. The iterative blind deconvolution (BD) proposed by Ayers and Dainty 2 is a powerful tool for recovering the solar image atmospherically degraded. We have proposed two BD methods based on the iterative BD methods, multiframe BD 3 and segment-image BD 4. The former method consists of the application of the iterative BD method to several frames observed at different times. In the latter method, the iterative BD method is applied to images segmented from a single frame. In this paper, we present a BD method using images segmented from multiple frames, referred to as a segmented-multiframe BD (SMBD) method, which is a fusion of the previous two methods.
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多帧分段的盲反卷积太阳成像
以太阳表面结构与大气望远镜系统的瞬时点扩展函数(PSF)卷积的形式给出了在地面观测到的太阳短曝光图像。因此,人们很难在太阳表面观察到比观测盘大小更精细的结构。Ayers和Dainty 2提出的迭代盲反褶积(BD)是恢复大气退化太阳图像的有力工具。在迭代的基础上,提出了多帧bd3和分段图像bd4两种图像分割方法。前一种方法是将迭代BD方法应用于不同时间观测到的多个帧。在后一种方法中,将迭代BD方法应用于从单帧分割的图像。本文提出了一种基于多帧图像分割的图像分割方法,称为分割多帧图像分割(SMBD)方法,它是前两种方法的融合。
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