Effective Image Differencing with Convolutional Neural Networks for Real-time Transient Hunting
Monthly Notices of the Royal Astronomical Society, 2017
Abstract: Large sky surveys are increasingly relying on image subtraction pipelines for real-time (and archival) transient detection. In this process one has to contend with varying point-spread function (PSF) and small brightness variations in many sources, as well as artefacts resulting from saturated stars and, in general, matching errors. Very often the differencing is done with a reference image that is deeper than individual images and the attendant difference in noise characteristics can also lead to artefacts. We present here a deep-learning approach to transient detection that encapsulates all the steps of a traditional image-subtraction pipeline -- image registration, background subtraction, noise removal, PSF matching and subtraction -- in a single real-time convolutional network. Once trained, the method works lightening-fast and, given that it performs multiple steps in one go, the time saved and false positives eliminated for multi-CCD surveys like Zwicky Transient Facility and Large Synoptic Survey Telescope will be immense, as millions of subtractions will be needed per night.
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Material (network architecture, trained model, some code) available on the GitHub page.
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@Article{Sed17, author = "Nima Sedaghat and Ashish Mahabal", title = "Effective Image Differencing with Convolutional Neural Networks for Real-time Transient Hunting", journal = "Monthly Notices of the Royal Astronomical Society", month = " ", year = "2017", url = "http://lmbweb.informatik.uni-freiburg.de/Publications/2017/Sed17" }