The Bulletin of The Korean Astronomical Society (천문학회보)
- Volume 44 Issue 1
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- Pages.54.2-54.2
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- 2019
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- 1226-2692(pISSN)
Denoise of Astronomical Images with Deep Learning
- Park, Youngjun (School of Space Research, Kyung Hee University) ;
- Choi, Yun-Young (Department of Astronomy and Space Science, Kyung Hee University) ;
- Moon, Yong-Jae (School of Space Research, Kyung Hee University) ;
- Park, Eunsu (School of Space Research, Kyung Hee University) ;
- Lim, Beomdu (School of Space Research, Kyung Hee University) ;
- Kim, Taeyoung (School of Space Research, Kyung Hee University)
- Published : 2019.04.10
Abstract
Removing noise which occurs inevitably when taking image data has been a big concern. There is a way to raise signal-to-noise ratio and it is regarded as the only way, image stacking. Image stacking is averaging or just adding all pixel values of multiple pictures taken of a specific area. Its performance and reliability are unquestioned, but its weaknesses are also evident. Object with fast proper motion can be vanished, and most of all, it takes too long time. So if we can handle single shot image well and achieve similar performance, we can overcome those weaknesses. Recent developments in deep learning have enabled things that were not possible with former algorithm-based programming. One of the things is generating data with more information from data with less information. As a part of that, we reproduced stacked image from single shot image using a kind of deep learning, conditional generative adversarial network (cGAN). r-band camcol2 south data were used from SDSS Stripe 82 data. From all fields, image data which is stacked with only 22 individual images and, as a pair of stacked image, single pass data which were included in all stacked image were used. All used fields are cut in
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