5 results on '"Coleman Krawczyk"'
Search Results
2. Galaxy Zoo: 3D-crowdsourced bar, spiral, and foreground star masks for MaNGA target galaxies
- Author
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Matthew A. Bershady, Shoaib Shamsi, Karen L. Masters, Anne-Marie Weijmans, Michael R. Merrifield, Chris Lintott, Alexander Todd, Coleman Krawczyk, Sandor Kruk, Brian Cherinka, Dhanesh Krishnarao, Brooke Simmons, Kevin Bundy, Renbin Yan, Rebecca Lane, Daniel Finnegan, David R. Law, Amelia Fraser-McKelvie, University of St Andrews. School of Physics and Astronomy, and University of St Andrews. Centre for Contemporary Art
- Subjects
media_common.quotation_subject ,structure [Galaxies] ,Data analysis ,FOS: Physical sciences ,Astrophysics::Cosmology and Extragalactic Astrophysics ,Surveys ,Data cube ,Observatory ,QB Astronomy ,Spiral ,QC ,Astrophysics::Galaxy Astrophysics ,media_common ,QB ,Physics ,spiral [Galaxies] ,Spiral galaxy ,Star formation ,Astronomy ,Astronomy and Astrophysics ,DAS ,Astrophysics - Astrophysics of Galaxies ,Galaxy ,Stars ,QC Physics ,Sky ,Space and Planetary Science ,Astrophysics of Galaxies (astro-ph.GA) - Abstract
The challenge of consistent identification of internal structure in galaxies - in particular disc galaxy components like spiral arms, bars, and bulges - has hindered our ability to study the physical impact of such structure across large samples. In this paper we present Galaxy Zoo: 3D (GZ: 3D) a crowdsourcing project built on the Zooniverse platform which we used to create spatial pixel (spaxel) maps that identify galaxy centres, foreground stars, galactic bars and spiral arms for 29831 galaxies which were potential targets of the MaNGA survey (Mapping Nearby Galaxies at Apache Point Observatory, part of the fourth phase of the Sloan Digital Sky Surveys or SDSS-IV), including nearly all of the 10,010 galaxies ultimately observed. Our crowd-sourced visual identification of asymmetric, internal structures provides valuable insight on the evolutionary role of non-axisymmetric processes that is otherwise lost when MaNGA data cubes are azimuthally averaged. We present the publicly available GZ:3D catalog alongside validation tests and example use cases. These data may in the future provide a useful training set for automated identification of spiral arm features. As an illustration, we use the spiral masks in a sample of 825 galaxies to measure the enhancement of star formation spatially linked to spiral arms, which we measure to be a factor of three over the background disc, and how this enhancement increases with radius., Comment: 13 pages, 9 figures. MNRAS accepted
- Published
- 2022
3. Galaxy Zoo DECaLS: Detailed visual morphology measurements from volunteers and deep learning for 314 000 galaxies
- Author
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Mike Walmsley, Chris Lintott, Tobias Géron, Sandor Kruk, Coleman Krawczyk, Kyle W Willett, Steven Bamford, Lee S Kelvin, Lucy Fortson, Yarin Gal, William Keel, Karen L Masters, Vihang Mehta, Brooke D Simmons, Rebecca Smethurst, Lewis Smith, Elisabeth M Baeten, and Christine Macmillan
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FOS: Computer and information sciences ,Computer Vision and Pattern Recognition (cs.CV) ,Computer Science - Computer Vision and Pattern Recognition ,FOS: Physical sciences ,Astrophysics ,Astrophysics::Cosmology and Extragalactic Astrophysics ,01 natural sciences ,Convolutional neural network ,Footprint ,bar [galaxies] ,0103 physical sciences ,data analysis [methods] ,010303 astronomy & astrophysics ,Astrophysics::Galaxy Astrophysics ,Physics ,Spiral galaxy ,010308 nuclear & particles physics ,business.industry ,interactions [galaxies] ,Deep learning ,Astronomy and Astrophysics ,Astrophysics - Astrophysics of Galaxies ,Galaxy ,Space and Planetary Science ,Feature (computer vision) ,Astrophysics of Galaxies (astro-ph.GA) ,Artificial intelligence ,business ,general [galaxies] - Abstract
We present Galaxy Zoo DECaLS: detailed visual morphological classifications for Dark Energy Camera Legacy Survey images of galaxies within the SDSS DR8 footprint. Deeper DECaLS images (r=23.6 vs. r=22.2 from SDSS) reveal spiral arms, weak bars, and tidal features not previously visible in SDSS imaging. To best exploit the greater depth of DECaLS images, volunteers select from a new set of answers designed to improve our sensitivity to mergers and bars. Galaxy Zoo volunteers provide 7.5 million individual classifications over 314,000 galaxies. 140,000 galaxies receive at least 30 classifications, sufficient to accurately measure detailed morphology like bars, and the remainder receive approximately 5. All classifications are used to train an ensemble of Bayesian convolutional neural networks (a state-of-the-art deep learning method) to predict posteriors for the detailed morphology of all 314,000 galaxies. When measured against confident volunteer classifications, the networks are approximately 99% accurate on every question. Morphology is a fundamental feature of every galaxy; our human and machine classifications are an accurate and detailed resource for understanding how galaxies evolve., Accepted by MNRAS July '21. Open access DOI below. Data at https://doi.org/10.5281/zenodo.4196266. Code at https://www.github.com/mwalmsley/zoobot. Docs at https://zoobot.readthedocs.io/. Interactive viewer at https://share.streamlit.io/mwalmsley/galaxy-poster/gz_decals_mike_walmsley.py
- Published
- 2022
4. Galaxy Zoo: Clump Scout -- Design and first application of a two-dimensional aggregation tool for citizen science
- Author
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Hugh Dickinson, Dominic Adams, Vihang Mehta, Claudia Scarlata, Lucy Fortson, Stephen Serjeant, Coleman Krawczyk, Sandor Kruk, Chris Lintott, Kameswara Bharadwaj Mantha, Brooke D Simmons, and Mike Walmsley
- Subjects
Space and Planetary Science ,Astrophysics of Galaxies (astro-ph.GA) ,FOS: Physical sciences ,Astronomy and Astrophysics ,Astrophysics - Astrophysics of Galaxies - Abstract
Galaxy Zoo: Clump Scout is a web-based citizen science project designed to identify and spatially locate giant star forming clumps in galaxies that were imaged by the Sloan Digital Sky Survey Legacy Survey. We present a statistically driven software framework that is designed to aggregate two-dimensional annotations of clump locations provided by multiple independent Galaxy Zoo: Clump Scout volunteers and generate a consensus label that identifies the locations of probable clumps within each galaxy. The statistical model our framework is based on allows us to assign false-positive probabilities to each of the clumps we identify, to estimate the skill levels of each of the volunteers who contribute to Galaxy Zoo: Clump Scout and also to quantitatively assess the reliability of the consensus labels that are derived for each subject. We apply our framework to a dataset containing 3,561,454 two-dimensional points, which constitute 1,739,259 annotations of 85,286 distinct subjects provided by 20,999 volunteers. Using this dataset, we identify 128,100 potential clumps distributed among 44,126 galaxies. This dataset can be used to study the prevalence and demographics of giant star forming clumps in low-redshift galaxies. The code for our aggregation software framework is publicly available at: https://github.com/ou-astrophysics/BoxAggregator, Comment: 31 pages, 22 figures. Accepted for publication in Monthly Notices of the Royal Astronomical Society
- Published
- 2022
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5. PyFPT: A Python package for first-passage times
- Author
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Joseph H. P. Jackson, Ian Harry, and Coleman Krawczyk
- Subjects
Automotive Engineering - Published
- 2023
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