Assessment of Astronomical Images Using Combined Machine-learning Models

被引:9
|
作者
Teimoorinia, H. [1 ,2 ]
Kavelaars, J. J. [1 ,2 ]
Gwyn, S. D. J. [1 ]
Durand, D. [1 ]
Rolston, K. [1 ,2 ]
Ouellette, A. [1 ]
机构
[1] NRC Herzberg Astron & Astrophys, 5071 West Saanich Rd, Victoria, BC V9E 2E7, Canada
[2] Univ Victoria, Dept Phys & Astron, Victoria, BC V8P 5C2, Canada
来源
ASTRONOMICAL JOURNAL | 2020年 / 159卷 / 04期
关键词
Astronomy data analysis; Convolutional neural networks; Neural networks; Astronomy data modeling; Astronomy data visualization; H-ALPHA; GALAXY; MEGACAM;
D O I
10.3847/1538-3881/ab7938
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
We present a two-component machine-learning-based approach for classifying astronomical images by data quality via an examination of sources detected in the images and image pixel values from representative sources within those images. The first component, which uses a clustering algorithm, creates a proper and small fraction of the image pixels to determine the quality of the observation. The representative images (and associated tables) are similar to 800 times smaller than the original images, significantly reducing the time required to train our algorithm. The useful information in the images is preserved, permitting them to be classified into different categories, but the required storage is reduced. The second component, which is a deep neural network model, classifies the representative images. Using ground-based telescope imaging data, we demonstrate that the method can be used to separate "usable" images from those that present some problems for scientific projects-such as images that were taken in suboptimal conditions. This method uses two different data sets as input to a deep model and provides better performance than if we only used the images' pixel information. The method may be used in cases where large and complex data sets should be examined using deep models. Our automated classification approach achieves 97% agreement when compared to classification generated via manual image inspection. We compare our method with traditional results and show that the method improves the results by about 10%, and also presents more comprehensive outcomes.
引用
收藏
页数:18
相关论文
共 50 条
  • [21] Different scaling of linear models and deep learning in UKBiobank brain images versus machine-learning datasets
    Marc-Andre Schulz
    B. T. Thomas Yeo
    Joshua T. Vogelstein
    Janaina Mourao-Miranada
    Jakob N. Kather
    Konrad Kording
    Blake Richards
    Danilo Bzdok
    Nature Communications, 11
  • [22] Hybrid optical turbulence models using machine-learning and local measurements
    Jellen, Christopher
    Nelson, Charles
    Burkhardt, John
    Brownell, Cody
    APPLIED OPTICS, 2023, 62 (18) : 4880 - 4890
  • [23] Using comprehensive machine-learning models to classify complex morphological characters
    Teng, Dequn
    Li, Fengyuan
    Zhang, Wei
    ECOLOGY AND EVOLUTION, 2021, 11 (15): : 10421 - 10431
  • [24] Developing and Improving Risk Models using Machine-learning Based Algorithms
    Wang, Yan
    Ni, Xuelei Sherry
    PROCEEDINGS OF THE 2019 ANNUAL ACM SOUTHEAST CONFERENCE (ACMSE 2019), 2019, : 281 - 282
  • [25] Smartphones dependency risk analysis using machine-learning predictive models
    Giraldo-Jimenez, Claudia Fernanda
    Gaviria-Chavarro, Javier
    Sarria-Paja, Milton
    Bermeo Varon, Leonardo Antonio
    Villarejo-Mayor, John Jairo
    Rodacki, Andre Luiz Felix
    SCIENTIFIC REPORTS, 2022, 12 (01)
  • [26] Prediction of Post-Intubation Tachycardia Using Machine-Learning Models
    Kim, Hanna
    Jeong, Young-Seob
    Kang, Ah Reum
    Jung, Woohyun
    Chung, Yang Hoon
    Koo, Bon Sung
    Kim, Sang Hyun
    APPLIED SCIENCES-BASEL, 2020, 10 (03):
  • [27] Smartphones dependency risk analysis using machine-learning predictive models
    Claudia Fernanda Giraldo-Jiménez
    Javier Gaviria-Chavarro
    Milton Sarria-Paja
    Leonardo Antonio Bermeo Varón
    John Jairo Villarejo-Mayor
    André Luiz Felix Rodacki
    Scientific Reports, 12
  • [28] Advancing interpretability of machine-learning prediction models
    Trenary, Laurie
    DelSole, Timothy
    ENVIRONMENTAL DATA SCIENCE, 2022, 1
  • [29] Synchronization of chaotic systems and their machine-learning models
    Weng, Tongfeng
    Yang, Huijie
    Gu, Changgui
    Zhang, Jie
    Small, Michael
    PHYSICAL REVIEW E, 2019, 99 (04)
  • [30] Machine-learning models for combinatorial catalyst discovery
    Landrum, GA
    Penzotti, J
    Putta, S
    COMBINATORIAL AND ARTIFICIAL INTELLIGENCE METHODS IN MATERIALS SCIENCE II, 2004, 804 : 301 - 306