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A versatile framework for analyzing galaxy image data by incorporating Human-in-the-loop in a large vision model

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【作者】 傅溟翔宋宇吕佳蒙曹亮贾鹏李楠李乡儒刘继峰罗阿理邱波沈世银屠良平王丽丽卫守林杨海峰衣振萍邹志强

【Author】 Ming-Xiang Fu;Yu Song;Jia-Meng Lv;Liang Cao;Peng Jia;Nan Li;Xiang-Ru Li;Ji-Feng Liu;A-Li Luo;Bo Qiu;Shi-YinShen;Liang-Ping Tu;Li-Li Wang;Shou-Lin Wei;Hai-Feng Yang;Zhen-Ping Yi;Zhi-Qiang Zou;National Astronomical Observatories, Chinese Academy of Sciences;School of Astronomy and Space Science, University of Chinese Academy of Sciences;Key lab of Space Astronomy and Technology, National Astronomical Observatories;College of Electronic Information and Optical Engineering, Taiyuan University of Technology;School of Computer Science, South China Normal University;CAS Key Laboratory of Optical Astronomy, National Astronomical Observatories;University of Chinese Academy of Sciences, Nanjing;University of Science and Technology Beijing;Shanghai Astronomical Observatory, Chinese Academy of Sciences;School of Science, University of Science and Technology Liaoning;School of Computer and Information, Dezhou University;Faculty of Information Engineering and Automation, Kunming University of Science and Technology;School of Computer Science and Technology, Taiyuan University of Science and Technology;School of Mechanical, Electrical and Information Engineering, Shandong University;Nanjing University of Posts & Telecommunications;

【机构】 National Astronomical Observatories, Chinese Academy of SciencesSchool of Astronomy and Space Science, University of Chinese Academy of SciencesKey lab of Space Astronomy and Technology, National Astronomical ObservatoriesCollege of Electronic Information and Optical Engineering, Taiyuan University of TechnologySchool of Computer Science, South China Normal UniversityCAS Key Laboratory of Optical Astronomy, National Astronomical ObservatoriesUniversity of Chinese Academy of Sciences, NanjingUniversity of Science and Technology BeijingShanghai Astronomical Observatory, Chinese Academy of SciencesSchool of Science, University of Science and Technology LiaoningSchool of Computer and Information, Dezhou UniversityFaculty of Information Engineering and Automation, Kunming University of Science and TechnologySchool of Computer Science and Technology, Taiyuan University of Science and TechnologySchool of Mechanical, Electrical and Information Engineering, Shandong UniversityNanjing University of Posts & Telecommunications

【摘要】 The exponential growth of astronomical datasets provides an unprecedented opportunity for humans to gain insight into the Universe.However,effectively analyzing this vast amount of data poses a significant challenge.In response,astronomers are turning to deep learning techniques,but these methods are limited by their specific training sets,leading to considerable duplicate workloads.To overcome this issue,we built a framework for the general analysis of galaxy images based on a large vision model(LVM) plus downstream tasks(DST),including galaxy morphological classification,image restoration object detection,parameter extraction,and more.Considering the low signal-to-noise ratios of galaxy images and the imbalanced distribution of galaxy categories,we designed our LVM to incorporate a Human-in-the-loop(HITL) module,which leverages human knowledge to enhance the reliability and interpretability of processing galaxy images interactively.The proposed framework exhibits notable fewshot learning capabilities and versatile adaptability for all the abovementioned tasks on galaxy images in the DESI Legacy Imaging Surveys.In particular,for the object detection task,which was trained using 1000 data points,our DST in the LVM achieved an accuracy of 96.7%,while ResNet50 plus Mask R-CNN reached an accuracy of 93.1%.For morphological classification,to obtain an area under the curve(AUC) of~0.9,LVM plus DST and HITL only requested 1/50 of the training sets that ResNet18 requested.In addition,multimodal data can be integrated,which creates possibilities for conducting joint analyses with datasets spanning diverse domains in the era of multi-messenger astronomy.

【Abstract】 The exponential growth of astronomical datasets provides an unprecedented opportunity for humans to gain insight into the Universe.However,effectively analyzing this vast amount of data poses a significant challenge.In response,astronomers are turning to deep learning techniques,but these methods are limited by their specific training sets,leading to considerable duplicate workloads.To overcome this issue,we built a framework for the general analysis of galaxy images based on a large vision model(LVM) plus downstream tasks(DST),including galaxy morphological classification,image restoration object detection,parameter extraction,and more.Considering the low signal-to-noise ratios of galaxy images and the imbalanced distribution of galaxy categories,we designed our LVM to incorporate a Human-in-the-loop(HITL) module,which leverages human knowledge to enhance the reliability and interpretability of processing galaxy images interactively.The proposed framework exhibits notable fewshot learning capabilities and versatile adaptability for all the abovementioned tasks on galaxy images in the DESI Legacy Imaging Surveys.In particular,for the object detection task,which was trained using 1000 data points,our DST in the LVM achieved an accuracy of 96.7%,while ResNet50 plus Mask R-CNN reached an accuracy of 93.1%.For morphological classification,to obtain an area under the curve(AUC) of~0.9,LVM plus DST and HITL only requested 1/50 of the training sets that ResNet18 requested.In addition,multimodal data can be integrated,which creates possibilities for conducting joint analyses with datasets spanning diverse domains in the era of multi-messenger astronomy.

【基金】 the support from the National Natural Science Foundation of China (Grant Nos. 12173027, 12303105, 12173062);the National Key R&D Program of China (Grant Nos. 2023YFF0725300, 2022YFF0503402);the Science Research Grants from the Square Kilometre Array (SKA)(2020SKA0110100);the Science Research Grants from the China Manned Space Project (Grant Nos. CMS-CSST-2021-A01, CMS-CSST-2021-A07, CMS-CSST-2021-B05);the CAS Project for Young Scientists in Basic Research;China (Grant No. YSBR-062);supported by the Young Data Scientist Project of the National Astronomical Data Center;the Program of Science and Education Integration at the School of Astronomy and Space Science,University of Chinese Academy of Sciences,China
  • 【文献出处】 Chinese Physics C ,中国物理C , 编辑部邮箱 ,2024年09期
  • 【分类号】TP18;P15
  • 【下载频次】4
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