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Multi-resolution Filtering: An Empirical Method for Isolating Faint, Extended Emission in Dragonfly Data and Other Low Resolution Images

机译:多分辨率过滤:分离蜻蜓数据和其他低分辨率图像中的微弱,扩展发射的实证方法

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摘要

We describe an empirical, self-contained method to isolate faint, large-scale emission in imaging data of low spatial resolution. Multi-resolution filtering (MRF) uses independent data of superior spatial resolution and point source depth to create a model for all compact and high surface brightness objects in the field. This model is convolved with an appropriate kernel and subtracted from the low resolution image. The halos of bright stars are removed in a separate step and artifacts are masked. The resulting image only contains extended emission fainter than a pre-defined surface brightness limit. The method was developed for the Dragonfly Telephoto Array, which produces images that have excellent low surface brightness sensitivity but poor spatial resolution. We demonstrate the MRF technique using Dragonfly images of a satellite of the spiral galaxy M101, the tidal debris surrounding M51, two ultra-diffuse galaxies in the Coma cluster, and the galaxy NGC 5907. As part of the analysis we present a newly-identified very faint galaxy in the filtered Dragonfly image of the M101 field. We also discuss variations of the technique for cases when no low resolution data are available (self-MRF and cross-MRF). The method is implemented inmrf, an open-source MIT licensed Python package (https://github.com/AstroJacobLi/mrf).
机译:我们描述了一种实证,独立的方法来隔离微弱,大规模发射的低空间分辨率的成像数据。多分辨率滤波(MRF)使用卓越的空间分辨率和点源深度的独立数据来为该字段中的所有紧凑型和高表面亮度对象创建模型。该模型用适当的内核卷积并从低分辨率图像中减去。在单独的步骤中删除明亮恒星的晕,并且掩盖伪像。得到的图像仅包含比预定义的表面亮度限制越来越微弱的发射。该方法是为蜻蜓长焦阵列开发的方法,其产生具有优异的低表面亮度灵敏度但空间分辨率不良的图像。我们展示了使用螺旋星系M101卫星卫星的蜻蜓图像,围绕M51的潮汐碎片,在彗星簇中的两个超漫射星系以及Galaxy NGC 5907的阳光碎片。作为分析的一部分,我们提出了新识别的部分在M101场的过滤的蜻蜓图像中非常微弱的星系。我们还讨论在没有可用的低分辨率数据(自我MRF和Cross-MRF)时对案例技术的变化。该方法是INMRF的,一个开源麻省理工学员授权许可的Python包(https://github.com/astrojacobli/mrf)。

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