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dc.contributor.authorTowner, Martin
dc.contributor.authorCupak, Martin
dc.contributor.authorDeshayes, Jean
dc.contributor.authorHowie, Robert
dc.contributor.authorHartig, Ben
dc.contributor.authorPaxman, Jonathan
dc.contributor.authorSansom, Eleanor
dc.contributor.authorDevillepoix, Hadrien
dc.contributor.authorJansen-Sturgeon, Trent
dc.contributor.authorBland, Philip
dc.date.accessioned2023-01-31T05:08:30Z
dc.date.available2023-01-31T05:08:30Z
dc.date.issued2020
dc.identifier.citationTowner, M.C. and Cupak, M. and Deshayes, J. and Howie, R.M. and Hartig, B.A.D. and Paxman, J. and Sansom, E.K. et al. 2020. Fireball streak detection with minimal CPU processing requirements for the Desert Fireball Network data processing pipeline. Publications of the Astronomical Society of Australia. 37: e008.
dc.identifier.urihttp://hdl.handle.net/20.500.11937/90267
dc.identifier.doi10.1017/pasa.2019.48
dc.description.abstract

The detection of fireballs streaks in astronomical imagery can be carried out by a variety of methods. The Desert Fireball Network uses a network of cameras to track and triangulate incoming fireballs to recover meteorites with orbits and to build a fireball orbital dataset. Fireball detection is done on-board camera, but due to the design constraints imposed by remote deployment, the cameras are limited in processing power and time. We describe the processing software used for fireball detection under these constrained circumstances. Two different approaches were compared: (1) A single-layer neural network with 10 hidden units that were trained using manually selected fireballs and (2) a more traditional computational approach based on cascading steps of increasing complexity, whereby computationally simple filters are used to discard uninteresting portions of the images, allowing for more computationally expensive analysis of the remainder. Both approaches allowed a full night's worth of data (over a thousand 36-megapixel images) to be processed each day using a low-power single-board computer. We distinguish between large (likely meteorite-dropping) fireballs and smaller fainter ones (typical 'shooting stars'). Traditional processing and neural network algorithms both performed well on large fireballs within an approximately 30 000-image dataset, with a true positive detection rate of 96% and 100%, respectively, but the neural network was significantly more successful at smaller fireballs, with rates of 67% and 82%, respectively. However, this improved success came at a cost of significantly more false positives for the neural network results, and additionally the neural network does not produce precise fireball coordinates within an image (as it classifies). Simple consideration of the network geometry indicates that overall detection rate for triangulated large fireballs is calculated to be better than 99.7% and 99.9%, by ensuring that there are multiple double-station opportunities to detect any one fireball. As such, both algorithms are considered sufficient for meteor-dropping fireball event detection, with some consideration of the acceptable number of false positives compared to sensitivity.

dc.languageEnglish
dc.publisherCAMBRIDGE UNIV PRESS
dc.subjectScience & Technology
dc.subjectPhysical Sciences
dc.subjectAstronomy & Astrophysics
dc.subjectHough transform
dc.subjectimage processing
dc.subjectastronomy
dc.subjectMETEORITE
dc.subjectLINES
dc.subjectORBIT
dc.titleFireball streak detection with minimal CPU processing requirements for the Desert Fireball Network data processing pipeline
dc.typeJournal Article
dcterms.source.volume37
dcterms.source.issn1323-3580
dcterms.source.titlePublications of the Astronomical Society of Australia
dc.date.updated2023-01-31T05:08:26Z
curtin.departmentSchool of Earth and Planetary Sciences (EPS)
curtin.departmentSchool of Elec Eng, Comp and Math Sci (EECMS)
curtin.departmentSchool of Civil and Mechanical Engineering
curtin.accessStatusFulltext not available
curtin.facultyFaculty of Science and Engineering
curtin.contributor.orcidSansom, Eleanor [0000-0003-2702-673X]
curtin.contributor.orcidTowner, Martin [0000-0002-8240-4150]
curtin.contributor.orcidHowie, Robert [0000-0002-5864-105X]
curtin.contributor.orcidPaxman, Jonathan [0000-0002-5671-9992]
curtin.contributor.orcidDevillepoix, Hadrien [0000-0001-9226-1870]
curtin.contributor.orcidBland, Philip [0000-0002-4681-7898]
curtin.contributor.orcidCupak, Martin [0000-0003-2193-0867]
curtin.contributor.researcheridBland, Philip [M-9392-2018]
curtin.identifier.article-numbere008
dcterms.source.eissn1448-6083
curtin.contributor.scopusauthoridSansom, Eleanor [56460192900]
curtin.contributor.scopusauthoridTowner, Martin [6602160346]
curtin.contributor.scopusauthoridHowie, Robert [56459760200]
curtin.contributor.scopusauthoridPaxman, Jonathan [24725318500]
curtin.contributor.scopusauthoridDevillepoix, Hadrien [56703315600]
curtin.contributor.scopusauthoridBland, Philip [7005534334]
curtin.contributor.scopusauthoridCupak, Martin [56460108800]


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