Image Preprocessing Framework for Time-domain Astronomy in the Artificial Intelligence Era

The rapid advancement of image analysis methods in time-domain astronomy, particularly those leveraging artificial intelligence (AI) algorithms, has highlighted efficient image preprocessing as a critical bottleneck affecting algorithm performance. Image preprocessing, which involves standardizing i...

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Main Authors: Liang Cao, Peng Jia, Jiaxin Li, Yu Song, Chengkun Hou, Yushan Li
Format: Article
Language:English
Published: IOP Publishing 2025-01-01
Series:The Astronomical Journal
Subjects:
Online Access:https://doi.org/10.3847/1538-3881/adb842
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author Liang Cao
Peng Jia
Jiaxin Li
Yu Song
Chengkun Hou
Yushan Li
author_facet Liang Cao
Peng Jia
Jiaxin Li
Yu Song
Chengkun Hou
Yushan Li
author_sort Liang Cao
collection DOAJ
description The rapid advancement of image analysis methods in time-domain astronomy, particularly those leveraging artificial intelligence (AI) algorithms, has highlighted efficient image preprocessing as a critical bottleneck affecting algorithm performance. Image preprocessing, which involves standardizing images for training or deployment of various AI algorithms, encompasses essential steps such as image quality evaluation, alignment, stacking, background extraction, gray-scale transformation, cropping, source detection, astrometry, and photometry. Historically, these algorithms were developed independently by different research groups, primarily based on central processing unit (CPU) architecture for small-scale data processing. This paper introduces a novel framework for image preprocessing that integrates key algorithms specifically modified for graphics processing unit architecture, enabling large-scale image preprocessing for different algorithms. To prepare for the new algorithm design paradigm in the AI era, we have implemented two operational modes in the framework for different application scenarios: eager mode and pipeline mode. The Eager mode facilitates real-time feedback and flexible adjustments, which could be used for parameter tuning and algorithm development. The pipeline mode is primarily designed for large-scale data processing, which could be used for training or deploying of AI models. We have tested the performance of our framework using simulated and real observation images. Results demonstrate that our framework significantly enhances image preprocessing speed while maintaining accuracy levels comparable to CPU-based algorithms. To promote accessibility and ease of use, a Docker version of our framework is available for download in the PaperData Repository powered by China-VO, compatible with various AI algorithms developed for time-domain astronomy research.
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institution Kabale University
issn 1538-3881
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publishDate 2025-01-01
publisher IOP Publishing
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series The Astronomical Journal
spelling doaj-art-e29a1a7c73d8451487291ac78eb7fea42025-08-20T03:39:45ZengIOP PublishingThe Astronomical Journal1538-38812025-01-01169421510.3847/1538-3881/adb842Image Preprocessing Framework for Time-domain Astronomy in the Artificial Intelligence EraLiang Cao0Peng Jia1https://orcid.org/0000-0001-6623-0931Jiaxin Li2Yu Song3Chengkun Hou4Yushan Li5College of Physics and Optoelectronics, Taiyuan University of Technology , Taiyuan, 030024, People’s Republic of China ; robinmartin20@gmail.comCollege of Physics and Optoelectronics, Taiyuan University of Technology , Taiyuan, 030024, People’s Republic of China ; robinmartin20@gmail.comCollege of Physics and Optoelectronics, Taiyuan University of Technology , Taiyuan, 030024, People’s Republic of China ; robinmartin20@gmail.comCollege of Physics and Optoelectronics, Taiyuan University of Technology , Taiyuan, 030024, People’s Republic of China ; robinmartin20@gmail.comCollege of Physics and Optoelectronics, Taiyuan University of Technology , Taiyuan, 030024, People’s Republic of China ; robinmartin20@gmail.comCollege of Physics and Optoelectronics, Taiyuan University of Technology , Taiyuan, 030024, People’s Republic of China ; robinmartin20@gmail.comThe rapid advancement of image analysis methods in time-domain astronomy, particularly those leveraging artificial intelligence (AI) algorithms, has highlighted efficient image preprocessing as a critical bottleneck affecting algorithm performance. Image preprocessing, which involves standardizing images for training or deployment of various AI algorithms, encompasses essential steps such as image quality evaluation, alignment, stacking, background extraction, gray-scale transformation, cropping, source detection, astrometry, and photometry. Historically, these algorithms were developed independently by different research groups, primarily based on central processing unit (CPU) architecture for small-scale data processing. This paper introduces a novel framework for image preprocessing that integrates key algorithms specifically modified for graphics processing unit architecture, enabling large-scale image preprocessing for different algorithms. To prepare for the new algorithm design paradigm in the AI era, we have implemented two operational modes in the framework for different application scenarios: eager mode and pipeline mode. The Eager mode facilitates real-time feedback and flexible adjustments, which could be used for parameter tuning and algorithm development. The pipeline mode is primarily designed for large-scale data processing, which could be used for training or deploying of AI models. We have tested the performance of our framework using simulated and real observation images. Results demonstrate that our framework significantly enhances image preprocessing speed while maintaining accuracy levels comparable to CPU-based algorithms. To promote accessibility and ease of use, a Docker version of our framework is available for download in the PaperData Repository powered by China-VO, compatible with various AI algorithms developed for time-domain astronomy research.https://doi.org/10.3847/1538-3881/adb842GPU computingTime domain astronomyAstronomical techniques
spellingShingle Liang Cao
Peng Jia
Jiaxin Li
Yu Song
Chengkun Hou
Yushan Li
Image Preprocessing Framework for Time-domain Astronomy in the Artificial Intelligence Era
The Astronomical Journal
GPU computing
Time domain astronomy
Astronomical techniques
title Image Preprocessing Framework for Time-domain Astronomy in the Artificial Intelligence Era
title_full Image Preprocessing Framework for Time-domain Astronomy in the Artificial Intelligence Era
title_fullStr Image Preprocessing Framework for Time-domain Astronomy in the Artificial Intelligence Era
title_full_unstemmed Image Preprocessing Framework for Time-domain Astronomy in the Artificial Intelligence Era
title_short Image Preprocessing Framework for Time-domain Astronomy in the Artificial Intelligence Era
title_sort image preprocessing framework for time domain astronomy in the artificial intelligence era
topic GPU computing
Time domain astronomy
Astronomical techniques
url https://doi.org/10.3847/1538-3881/adb842
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