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A Simple Radial Gradient Filter for Batch-Processing of Coronagraph Images

机译:一种用于日冕成像图像批量处理的简单径向梯度滤波器

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摘要

Images of the extended solar corona, as observed by different white-light coronagraphs, include the K- and F-corona and suffer from a radial variation in intensity. These images require separation of the two coronal components with some additional image-processing to reduce the intensity gradient and analyse the structures and processes occurring at different heights in the solar corona within the full field of view. Over the past few decades, coronagraphs have been producing enormous amounts of data, which will be continued with the launch of new telescopes. To process these bulk coronagraph images with steep radial-intensity gradients, we have developed the algorithm Simple Radial Gradient Filter (SiRGraF). This algorithm is based on subtracting a minimum background (F-corona) created using long-duration images and then dividing the resultant by a uniform-intensity-gradient image to enhance the K-corona. We demonstrate the utility of this algorithm to bring out the short-time-scale transient structures of the corona. SiRGraF can be used to reveal and analyse such structures. It is not suitable for quantitative estimations based on intensity. We have successfully tested the algorithm on images of the Large Angle Spectroscopic COronagraph (LASCO)-C2 onboard the Solar and Heliospheric Observatory (SOHO) and COR-2A onboard the Solar TErrestrial RElations Observatory (STEREO) with good signal-to-noise ratio (SNR) along with low-SNR images of STEREO/COR-1A and the KCoronagraph (KCor). We also compared the performance of SiRGraF with the existing widely used algorithm Normalizing Radial Gradient Filter (NRGF). We found that when hundreds of images have to be processed, SiRGraF works faster than NRGF, providing similar brightness and contrast in the images and separating the transient features. Moreover, SiRGraF works better on low-SNR images of COR-1A than on NRGF, providing better identification of dynamic coronal structures throughout the field of view. We discuss the advantages and limitations of the algorithm. The application of SiRGraF to COR-1 images can be extended for an automated coronal mass ejection (CME) detection algorithm in the future, which will help in our study of the characteristics of CMEs in the inner corona.
机译:通过不同的白光日冕仪观察到的扩展太阳日冕的图像包括K日冕和F日冕,并且强度呈径向变化。这些图像需要分离两个日冕成分,并进行一些额外的图像处理,以降低强度梯度,并分析整个视场内太阳日冕中不同高度发生的结构和过程。在过去的几十年里,日冕仪一直在产生大量的数据,这些数据将随着新望远镜的发射而继续下去。为了处理这些具有陡峭径向强度梯度的体日冕成像图像,我们开发了简单径向梯度滤波器(SiRGraF)算法。该算法基于减去使用长时间图像创建的最小背景 (F-corona),然后将结果除以均匀强度梯度图像以增强 K-corona。我们证明了该算法在带出日冕的短时间尺度瞬态结构方面的实用性。SiRGraF可用于揭示和分析这些结构。它不适用于基于强度的定量估计。我们已经成功地在太阳和日光层天文台(SOHO)上的大角光谱COronagraph(LASCO)-C2和太阳地球观测站(STEREO)上的COR-2A图像上测试了该算法,具有良好的信噪比(SNR),以及STEREO/COR-1A和KCoronagraph(KCor)的低SNR图像。我们还比较了SiRGraF与现有广泛使用的归一化径向梯度滤波器(NRGF)算法的性能。我们发现,当必须处理数百张图像时,SiRGraF 的工作速度比 NRGF 快,在图像中提供相似的亮度和对比度,并分离瞬态特征。此外,SiRGraF在COR-1A的低SNR图像上比在NRGF上效果更好,可以更好地识别整个视场的动态冠状结构。我们讨论了该算法的优点和局限性。SiRGraF在COR-1图像上的应用可以扩展到未来的自动日冕物质抛射(CME)检测算法,这将有助于我们研究日冕内CMEs的特性。

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