Panoptic Segmentation of Galactic Structures in LSB Images

Felix Richards, A. Paiement, Xianghua Xie, Elisabeth Sola, P. Duc
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引用次数: 1

Abstract

We explore the use of deep learning to localise galactic structures in low surface brightness (LSB) images. LSB imaging reveals many interesting structures, though these are frequently confused with galactic dust contamination, due to a strong local visual similarity. We propose a novel unified approach to multi-class segmentation of galactic structures and of extended amorphous image contaminants. Our panoptic segmentation model combines Mask R-CNN with a contaminant specialised network and utilises an adaptive preprocessing layer to better capture the subtle features of LSB images. Further, a human-in-the-loop training scheme is employed to augment ground truth labels. These different approaches are evaluated in turn, and together greatly improve the detection of both galactic structures and contaminants in LSB images.
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LSB图像中星系结构的全视分割
我们探索使用深度学习来定位低表面亮度(LSB)图像中的星系结构。LSB成像显示了许多有趣的结构,尽管由于强烈的局部视觉相似性,这些结构经常与星系尘埃污染混淆。我们提出了一种新的统一的方法来分割星系结构和扩展的无定形图像污染物。我们的全光学分割模型结合了掩模R-CNN和污染物专用网络,并利用自适应预处理层来更好地捕捉LSB图像的细微特征。此外,采用人在环训练方案来增强地面真值标签。这些不同的方法依次进行评估,并共同极大地提高了对LSB图像中星系结构和污染物的检测。
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