Big universe, big data: machine learning and image analysis for astronomy
Publikation: Bidrag til tidsskrift › Tidsskriftartikel › fagfællebedømt
Standard
Big universe, big data : machine learning and image analysis for astronomy. / Kremer, Jan; Stensbo-Smidt, Kristoffer; Gieseke, Fabian Cristian; Pedersen, Kim Steenstrup; Igel, Christian.
I: IEEE Intelligent Systems, Bind 32, Nr. 2, 2017, s. 16-22.Publikation: Bidrag til tidsskrift › Tidsskriftartikel › fagfællebedømt
Harvard
APA
Vancouver
Author
Bibtex
}
RIS
TY - JOUR
T1 - Big universe, big data
T2 - machine learning and image analysis for astronomy
AU - Kremer, Jan
AU - Stensbo-Smidt, Kristoffer
AU - Gieseke, Fabian Cristian
AU - Pedersen, Kim Steenstrup
AU - Igel, Christian
PY - 2017
Y1 - 2017
N2 - Astrophysics and cosmology are rich with data. The advent of wide-area digital cameras on large aperture telescopes has led to ever more ambitious surveys of the sky. Data volumes of entire surveys a decade ago can now be acquired in a single night and real-time analysis is often desired. Thus, modern astronomy requires big data know-how, in particular it demands highly efficient machine learning and image analysis algorithms. But scalability is not the only challenge: Astronomy applications touch several current machine learning research questions, such as learning from biased data and dealing with label and measurement noise. We argue that this makes astronomy a great domain for computer science research, as it pushes the boundaries of data analysis. In the following, we will present this exciting application area for data scientists. We will focus on exemplary results, discuss main challenges, and highlight some recent methodological advancements in machine learning and image analysis triggered by astronomical applications.
AB - Astrophysics and cosmology are rich with data. The advent of wide-area digital cameras on large aperture telescopes has led to ever more ambitious surveys of the sky. Data volumes of entire surveys a decade ago can now be acquired in a single night and real-time analysis is often desired. Thus, modern astronomy requires big data know-how, in particular it demands highly efficient machine learning and image analysis algorithms. But scalability is not the only challenge: Astronomy applications touch several current machine learning research questions, such as learning from biased data and dealing with label and measurement noise. We argue that this makes astronomy a great domain for computer science research, as it pushes the boundaries of data analysis. In the following, we will present this exciting application area for data scientists. We will focus on exemplary results, discuss main challenges, and highlight some recent methodological advancements in machine learning and image analysis triggered by astronomical applications.
KW - Faculty of Science
KW - Big Data
KW - Astronomy
KW - Machine Learning
KW - Computer Vision
U2 - 10.1109/MIS.2017.40
DO - 10.1109/MIS.2017.40
M3 - Journal article
VL - 32
SP - 16
EP - 22
JO - IEEE Intelligent Systems
JF - IEEE Intelligent Systems
SN - 1541-1672
IS - 2
ER -
ID: 167219728