通过无标签深度CR训练为HST WFC3/UVIS提供新的宇宙射线剔除程序

Z. Chen 陈, Keming 可名 Zhang 张, Benjamin F. Williams, M. Durbin
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摘要

deepCR 是一种基于深度学习的宇宙射线(CR)剔除框架,最初由 Zhang 和 Bloom 提出。最初的方法需要一个专门的训练集,该训练集由相同场的多个帧组成,通过与它们的中值同源物进行比较,实现自动的宇宙射线标记。在这里,我们提出了一种新颖的训练方法,它不需要专门的训练集,而是利用暗帧和需要去除 CR 的科学图像本身。在训练过程中,暗帧中出现的 CR 会被添加到科学图像中,然后训练网络识别这些 CR。反过来,训练好的 deepCR 模型又可用于识别原本存在于科学图像中的 CR。利用这种方法,我们提出了一种新的深度CR模型,该模型是在哈勃太空望远镜拍摄的来自本星系群中解析星系的各种图像上训练出来的,普遍适用于所有WFC3/UVIS滤镜。我们引入了一种稳健的方法来确定根据 deepCR 概率图的预测生成双宇宙射线掩模的阈值。当应用于全色哈勃仙女座南库巡天时,我们的新深CR模型增加了7%的高质量恒星,这些恒星在它们的色-星等图中表现出明显的特征。
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A New Cosmic-Ray Rejection Routine for HST WFC3/UVIS via Label-free Training of deepCR
deepCR is a deep-learning-based cosmic-ray (CR) rejection framework originally presented by Zhang & Bloom. The original approach requires a dedicated training set that consists of multiple frames of the same fields, enabling automatic CR labeling through comparison with their median coadds. Here, we present a novel training approach that circumvents the need for a dedicated training set, but instead utilizes dark frames and the science images requiring CR removal themselves. During training, CRs present in dark frames are added to the science images, which the network is then trained to identify. In turn, the trained deepCR model can then be applied to identify CRs originally present in the science images. Using this approach, we present a new deepCR model trained on a diverse set of Hubble Space Telescope images taken from resolved galaxies in the Local Group, which is universally applicable across all WFC3/UVIS filters. We introduce a robust approach to determining the threshold for generating binary cosmic-ray masks from predictions from deepCR probability maps. When applied to the Panchromatic Hubble Andromeda Southern Treasury survey, our new deepCR model added ∼7% of good-quality stars that exhibit distinct features in their color–magnitude diagrams.
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