DeepSpaceYoloDataset: Annotated Astronomical Images Captured with Smart Telescopes
Abstract
:1. Summary
2. Related Works
- AI-based methods need huge training data to be effective. For instance, megacosm is a set of annotated pictures with the positions of various celestial bodies—but it contains insufficient images (400) [12].
- Astronomical images are noisy, and methods like YOLO are sensitive to noise and need to be trained on realistic datasets [13]. To build an effective training set, using high-quality images such as those obtained with Hubble and/or the James Webb Space Telescope is not relevant, and adding artificial noise to these images is not effective either because it will not be as realistic as real noise.
- Light pollution has an important and negative impact on the quality of astronomical images [3]: like for noise, it is important to have a training set reflecting this issue in images.
- Due to the lack of publicly available data, the PixInsight company recently launched the Multiscale All-Sky Reference Survey (MARS), an initiative to collect images from amateur astronomers in order to improve their own algorithms 2.
3. Data Description
4. Methods
4.1. Image Acquisition
- The Vespera smart telescope 4 is built on an apochromatic quadruplet with an aperture of 50 mm and a focal length of 200 mm (focal ratio of f/4). It is equipped with a Sony IMX462 CMOS sensor with a resolution of 2 million pixels (1920 × 1080 pixels).
4.2. Data Annotation
5. User Notes
6. Conclusions and Perspectives
Supplementary Materials
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
EAA | Electronically Assisted Astronomy |
AI | Artificial Intelligence |
DSO | Deep Sky Objects |
CV | Computer Vision |
YOLO | You Only Look Once |
1 | https://github.com/jiangyx123/SSOD-dataset (accessed on 1 December 2023). |
2 | https://pixinsight.com/doc/docs/MARS/MARS.html (accessed on 1 December 2023). |
3 | https://vaonis.com/stellina (accessed on 1 December 2023). |
4 | https://vaonis.com/vespera (accessed on 1 December 2023). |
5 | https://pypi.org/project/opencv-python/ (accessed on 1 December 2023). |
6 | https://pypi.org/project/scikit-image/ (accessed on 1 December 2023). |
7 | https://www.starnetastro.com (accessed on 1 December 2023). |
8 | https://docs.opencv.org/4.x/da/d0c/tutorial_bounding_rects_circles.html (accessed on 1 December 2023). |
9 | https://github.com/WongKinYiu/yolov7/releases/download/v0.1/yolov7.pt (accessed on 1 December 2023). |
References
- Parker, G. Making Beautiful Deep-Sky Images; Springer: Berlin/Heidelberg, Germany, 2007. [Google Scholar]
- Parisot, O.; Bruneau, P.; Hitzelberger, P.; Krebs, G.; Destruel, C. Improving accessibility for deep sky observation. ERCIM News 2022, 130. Available online: https://ercim-news.ercim.eu/en130/special/improving-accessibility-for-deep-sky-observation (accessed on 1 December 2023).
- Varela Perez, A.M. The increasing effects of light pollution on professional and amateur astronomy. Science 2023, 380, 1136–1140. [Google Scholar] [CrossRef] [PubMed]
- Woodhouse, C. Image Calibration and Stacking: Two strategies that go hand-in-hand to remove mean errors and reduce the noise level in the final image. In The Astrophotography Manual; Routledge: London, UK, 2017; pp. 203–212. [Google Scholar]
- Drechsler, M.; Strottner, X.; Sainty, Y.; Fesen, R.A.; Kimeswenger, S.; Shull, J.M.; Falls, B.; Vergnes, C.; Martino, N.; Walker, S. Discovery of Extensive [O iii] Emission Near M31. Res. Notes Aas 2023, 7, 1. [Google Scholar] [CrossRef]
- Peluso, D.O.; Esposito, T.M.; Marchis, F.; Dalba, P.A.; Sgro, L.; Megowan-Romanowicz, C.; Pennypacker, C.; Carter, B.; Wright, D.; Avsar, A.M.; et al. The Unistellar Exoplanet Campaign: Citizen Science Results and Inherent Education Opportunities. Publ. Astron. Soc. Pac. 2023, 135, 015001. [Google Scholar] [CrossRef]
- Perley, D.; Gal-Yam, A.; Irani, I.; Zimmerman, E. LT Classification of SN 2023ixf as a Type II Supernova in M101. Transient Name Serv. Astronote 2023, 119, 1. [Google Scholar]
- Lang, D.; Hogg, D.W.; Mierle, K.; Blanton, M.; Roweis, S. Astrometry. net: Blind astrometric calibration of arbitrary astronomical images. Astron. J. 2010, 139, 1782. [Google Scholar] [CrossRef]
- Zheng, C.; Pulido, J.; Thorman, P.; Hamann, B. An improved method for object detection in astronomical images. Mon. Not. R. Astron. Soc. 2015, 451, 4445–4459. [Google Scholar] [CrossRef]
- González, R.; Muñoz, R.; Hernández, C. Galaxy detection and identification using deep learning and data augmentation. Astron. Comput. 2018, 25, 103–109. [Google Scholar] [CrossRef]
- Jiang, Y.; Tang, Y.; Ying, C. Finding a Needle in a Haystack: Faint and Small Space Object Detection in 16-Bit Astronomical Images Using a Deep Learning-Based Approach. Electronics 2023, 12, 4820. [Google Scholar] [CrossRef]
- Priyanka. Megacosm1 Dataset. 2022. Available online: https://universe.roboflow.com/priyanka-1uoyf/megacosm1 (accessed on 1 December 2023).
- Nayan, A.A.; Saha, J.; Mahmud, K.R.; Al Azad, A.K.; Kibria, M.G. Detection of objects from noisy images. In Proceedings of the 2020 2nd International Conference on Sustainable Technologies for Industry 4.0 (STI), Dhaka, Bangladesh, 19–20 December 2020; IEEE: Piscataway, NJ, USA, 2020; pp. 1–6. [Google Scholar]
- Wang, C.Y.; Bochkovskiy, A.; Liao, H.Y.M. YOLOv7: Trainable bag-of-freebies sets new state-of-the-art for real-time object detectors. arXiv 2022, arXiv:2207.02696. [Google Scholar]
- Skalski, P. Make Sense. 2019. Available online: https://github.com/SkalskiP/make-sense/ (accessed on 1 December 2023).
- Steinicke, W. Observing and Cataloguing Nebulae and Star Clusters: From Herschel to Dreyer’s New General Catalogue; Cambridge University Press: Cambridge, UK, 2010. [Google Scholar]
- Saponara, S.; Elhanashi, A. Impact of image resizing on deep learning detectors for training time and model performance. In Proceedings of the International Conference on Applications in Electronics Pervading Industry, Environment and Society, 21–22 September 2021; Springer: Berlin/Heidelberg, Germany, 2021; pp. 10–17. [Google Scholar]
- Terven, J.; Córdova-Esparza, D.M.; Romero-González, J.A. A Comprehensive Review of YOLO Architectures in Computer Vision: From YOLOv1 to YOLOv8 and YOLO-NAS. Mach. Learn. Knowl. Extr. 2023, 5, 1680–1716. [Google Scholar] [CrossRef]
Catalogue | List of Targets |
---|---|
Messier | M1, M10, M100, M101, M102, M103, M104, M105, M106, M107, M108, M109, M11, M110, M12, M13, M14, M15, M16, M17, M18, M19, M2, M20, M21, M22, M23, M24, M25, M26, M27, M29, M3, M31, M33, M34, M35, M36, M37, M38, M39, M4, M41, M42, M44, M45, M46, M47, M48, M49, M5, M50, M51, M52, M53, M56, M57, M58, M59, M61, M62, M63, M64, M65, M67, M68, M71, M72, M74, M76, M77, M78, M8, M80, M81, M82, M83, M85, M86, M87, M9, M92, M94, M95, M96, M97, |
New General Catalogue | NGC1023, NGC1027, NGC1055, NGC1245, NGC1275, NGC1333, NGC1342, NGC147, NGC1491, NGC1499, NGC1502, NGC1579, NGC1746, NGC1788, NGC185, NGC188, NGC1909, NGC1931, NGC1961, NGC1977, NGC2022, NGC2024, NGC2169, NGC2170, NGC2174, NGC2244, NGC225, NGC2261, NGC2264, NGC2282, NGC2359, NGC2360, NGC2371, NGC2392, NGC2403, NGC2419, NGC2420, NGC246, NGC2506, NGC2539, NGC2683, NGC281, NGC2841, NGC2903, NGC2946, NGC3077, NGC3115, NGC3190, NGC3344, NGC3628, NGC40, NGC4038, NGC4244, NGC4314, NGC4395, NGC4490, NGC4535, NGC4559, NGC4565, NGC457, NGC4631, NGC488, NGC4889, NGC5466, NGC5566, NGC559, NGC5907, NGC6144, NGC6210, NGC6229, NGC6342, NGC6537, NGC654, NGC6543, NGC663, NGC6633, NGC672, NGC6760, NGC6781, NGC6822, NGC6823, NGC6826, NGC6883, NGC6888, NGC6891, NGC6894, NGC6905, NGC6914, NGC6928, NGC6934, NGC6946, NGC6960, NGC6979, NGC6992, NGC7000, NGC7006, NGC7008, NGC7009, NGC7023, NGC7048, NGC7129, NGC7209, NGC7217, NGC7293, NGC7318, NGC7331, NGC7380, NGC7479, NGC752, NGC7606, NGC7635, NGC7640, NGC7662, NGC772, NGC7789, NGC7814, NGC7822, NGC864, NGC877, NGC884, NGC891, NGC925 |
Index Catalogue | IC10, IC1318, IC1396, IC1795, IC1805, IC1848, IC2177, IC342, IC348, IC405, IC410, IC417, IC434, IC443, IC4592, IC4756, IC4955, IC5070, IC5146, IC59 |
Sharpless | Sh2-101, Sh2-129, Sh2-155, Sh2-188, Sh2-216 |
Abell | Abell24, Abell39 |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2024 by the author. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Parisot, O. DeepSpaceYoloDataset: Annotated Astronomical Images Captured with Smart Telescopes. Data 2024, 9, 12. https://doi.org/10.3390/data9010012
Parisot O. DeepSpaceYoloDataset: Annotated Astronomical Images Captured with Smart Telescopes. Data. 2024; 9(1):12. https://doi.org/10.3390/data9010012
Chicago/Turabian StyleParisot, Olivier. 2024. "DeepSpaceYoloDataset: Annotated Astronomical Images Captured with Smart Telescopes" Data 9, no. 1: 12. https://doi.org/10.3390/data9010012