57 research outputs found
Survey of Gravitationally lensed Objects in HSC Imaging (SuGOHI) X. Strong Lens Finding in The HSC-SSP using Convolutional Neural Networks
We apply a novel model based on convolutional neural networks (CNNs) to
identify gravitationally-lensed galaxies in multi-band imaging of the Hyper
Suprime Cam Subaru Strategic Program (HSC-SSP) Survey. The trained model is
applied to a parent sample of 2 350 061 galaxies selected from the 800
deg Wide area of the HSC-SSP Public Data Release 2. The galaxies in HSC
Wide are selected based on stringent pre-selection criteria, such as multiband
magnitudes, stellar mass, star formation rate, extendedness limit, photometric
redshift range, etc. Initially, the CNNs provide a total of 20 241 cutouts with
a score greater than 0.9, but this number is subsequently reduced to 1 522
cutouts by removing definite non-lenses for further inspection by human eyes.
We discover 43 definite and 269 probable lenses, of which 97 are completely
new. In addition, out of 880 potential lenses, we recovered 289 known systems
in the literature. We identify 143 candidates from the known systems that had
higher confidence in previous searches. Our model can also recover 285
candidate galaxy-scale lenses from the Survey of Gravitationally lensed Objects
in HSC Imaging (SuGOHI), where a single foreground galaxy acts as the
deflector. Even though group-scale and cluster-scale lens systems were not
included in the training, a sample of 32 SuGOHI-c (i.e., group/cluster-scale
systems) lens candidates was retrieved. Our discoveries will be useful for
ongoing and planned spectroscopic surveys, such as the Subaru Prime Focus
Spectrograph project, to measure lens and source redshifts in order to enable
detailed lens modelling.Comment: Submitted to MNRAS, 16 pages, 13 figures. Comments welcom
A Bayesian Approach to Strong Lens Finding in the Era of Wide-area Surveys
The arrival of the Vera C. Rubin Observatory's Legacy Survey of Space and
Time (LSST), Euclid-Wide and Roman wide area sensitive surveys will herald a
new era in strong lens science in which the number of strong lenses known is
expected to rise from to . However,
current lens-finding methods still require time-consuming follow-up visual
inspection by strong-lens experts to remove false positives which is only set
to increase with these surveys. In this work we demonstrate a range of methods
to produce calibrated probabilities to help determine the veracity of any given
lens candidate. To do this we use the classifications from citizen science and
multiple neural networks for galaxies selected from the Hyper Suprime-Cam (HSC)
survey. Our methodology is not restricted to particular classifier types and
could be applied to any strong lens classifier which produces quantitative
scores. Using these calibrated probabilities, we generate an ensemble
classifier, combining citizen science and neural network lens finders. We find
such an ensemble can provide improved classification over the individual
classifiers. We find a false positive rate of can be achieved with a
completeness of , compared to for the best individual classifier.
Given the large number of galaxy-galaxy strong lenses anticipated in LSST, such
improvement would still produce significant numbers of false positives, in
which case using calibrated probabilities will be essential for population
analysis of large populations of lenses.Comment: Submitted to MNRAS, 14 pages, 9 figures. Comments welcom
Lensed quasar search via time variability with the HSC transient survey
Gravitationally lensed quasars are useful for studying astrophysics and
cosmology, and enlarging the sample size of lensed quasars is important for
multiple studies. In this work, we develop a lens search algorithm for
four-image (quad) lensed quasars based on their time variability. In the
development of the lens search algorithm, we constructed a pipeline simulating
multi-epoch images of lensed quasars in cadenced surveys, accounting for quasar
variabilities, quasar hosts, lens galaxies, and the PSF variation. Applying the
simulation pipeline to the Hyper Suprime-Cam (HSC) transient survey, we
generated HSC-like difference images of the mock lensed quasars from Oguri &
Marshall's lens catalog. We further developed a lens search algorithm that
picks out variable objects as lensed quasar candidates based on their spatial
extent in the difference images. We tested our lens search algorithm with the
mock lensed quasars and variable objects from the HSC transient survey. Using
difference images from multiple epochs, our lens search algorithm achieves a
high true-positive rate (TPR) of 90.1% and a low false-positive rate (FPR) of
2.3% for the bright quads with wide separation. With a preselection of the
number of blobs in the difference image, we obtain a TPR of 97.6% and a FPR of
2.6% for the bright quads with wide separation. Even when difference images are
only available in one single epoch, our lens search algorithm can still detect
the bright quads with wide separation at high TPR of 97.6% and low FPR of 2.4%
in the optimal seeing scenario, and at TPR of and FPR of in
typical scenarios. Therefore, our lens search algorithm is promising and is
applicable to ongoing and upcoming cadenced surveys, particularly the HSC
transient survey and the Rubin Observatory Legacy Survey of Space and Time, for
finding new lensed quasar systems. [abridged]Comment: 15 pages, 11 figure
First Data Release of the Hyper Suprime-Cam Subaru Strategic Program
The Hyper Suprime-Cam Subaru Strategic Program (HSC-SSP) is a three-layered
imaging survey aimed at addressing some of the most outstanding questions in
astronomy today, including the nature of dark matter and dark energy. The
survey has been awarded 300 nights of observing time at the Subaru Telescope
and it started in March 2014. This paper presents the first public data release
of HSC-SSP. This release includes data taken in the first 1.7 years of
observations (61.5 nights) and each of the Wide, Deep, and UltraDeep layers
covers about 108, 26, and 4 square degrees down to depths of i~26.4, ~26.5, and
~27.0 mag, respectively (5sigma for point sources). All the layers are observed
in five broad bands (grizy), and the Deep and UltraDeep layers are observed in
narrow bands as well. We achieve an impressive image quality of 0.6 arcsec in
the i-band in the Wide layer. We show that we achieve 1-2 per cent PSF
photometry (rms) both internally and externally (against Pan-STARRS1), and ~10
mas and 40 mas internal and external astrometric accuracy, respectively. Both
the calibrated images and catalogs are made available to the community through
dedicated user interfaces and database servers. In addition to the pipeline
products, we also provide value-added products such as photometric redshifts
and a collection of public spectroscopic redshifts. Detailed descriptions of
all the data can be found online. The data release website is
https://hsc-release.mtk.nao.ac.jp/.Comment: 34 pages, 20 figures, 7 tables, moderate revision, accepted for
publication in PAS
The Hyper Suprime-Cam SSP survey: Overview and survey design
Hyper Suprime-Cam (HSC) is a wide-field imaging camera on the prime focus of the 8.2-m Subaru telescope on the summit of Mauna Kea in Hawaii. A team of scientists from Japan, Taiwan, and Princeton University is using HSC to carry out a 300-night multi-band imaging survey of the high-latitude sky. The survey includes three layers: the Wide layer will cover 1400 deg2 in five broad bands (grizy), with a 5 σ point-source depth of r ≈ 26. The Deep layer covers a total of 26 deg2 in four fields, going roughly a magnitude fainter, while the UltraDeep layer goes almost a magnitude fainter still in two pointings of HSC (a total of 3.5 deg2). Here we describe the instrument, the science goals of the survey, and the survey strategy and data processing. This paper serves as an introduction to a special issue of the Publications of the Astronomical Society of Japan, which includes a large number of technical and scientific papers describing results from the early phases of this survey
HOLISMOKES
We carry out a search for strong-lens systems containing high-redshift lens galaxies with the goal of extending strong-lensing-assisted galaxy evolutionary studies to earlier cosmic time. Two strong-lens classifiers are constructed from a deep residual network and trained with datasets of different lens-redshift and brightness distributions. We classify a sample of 5 356 628 pre-selected objects from the Wide-layer fields in the second public data release of the Hyper Suprime-Cam Subaru Strategic Program (HSC-SSP) by applying the two classifiers to their HSC gri-filter cutouts. Cutting off at thresholds that correspond to a false positive rate of 10−3 on our test set, the two classifiers identify 5468 and 6119 strong-lens candidates. Visually inspecting the cutouts of those candidates results in 735 grade-A or B strong-lens candidates in total, of which 277 candidates are discovered for the first time. This is the single largest set of galaxy-scale strong-lens candidates discovered with HSC data to date, and nearly half of it (331/735) contains lens galaxies with photometric redshifts above 0.6. Our discoveries will serve as a valuable target list for ongoing and scheduled spectroscopic surveys such as the Dark Energy Spectroscopic Instrument, the Subaru Prime Focus Spectrograph project, and the Maunakea Spectroscopic Explorer
Systematic comparison of neural networks used in discovering strong gravitational lenses
International audienceEfficient algorithms are being developed to search for strong gravitational lens systems owing to increasing large imaging surveys. Neural networks have been successfully used to discover galaxy-scale lens systems in imaging surveys such as the Kilo Degree Survey, Hyper-Suprime Cam (HSC) Survey and Dark Energy Survey over the last few years. Thus, it has become imperative to understand how some of these networks compare, their strengths and the role of the training datasets as most of the networks make use of supervised learning algorithms. In this work, we present the first-of-its-kind systematic comparison and benchmarking of networks from four teams that have analysed the HSC Survey data. Each team has designed their training samples and developed neural networks independently but coordinated apriori in reserving specific datasets strictly for test purposes. The test sample consists of mock lenses, real (candidate) lenses and real non-lenses gathered from various sources to benchmark and characterise the performance of each of the network. While each team's network performed much better on their own constructed test samples compared to those from others, all networks performed comparable on the test sample with real (candidate) lenses and non-lenses. We also investigate the impact of swapping the training samples amongst the teams while retaining the same network architecture. We find that this resulted in improved performance for some networks. These results have direct implications on measures to be taken for lens searches with upcoming imaging surveys such as the Rubin-Legacy Survey of Space and Time, Roman and Euclid
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