
Proceedings Paper
Machine vision for airport runway identificationFormat | Member Price | Non-Member Price |
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Paper Abstract
For rigid objects and fixed scenes, current machine vision technology is capable of identifying imagery rapidly and with
specificity over a modest range of camera viewpoints and scene illumination. We applied that capability to the problem
of runway identification using video of sixteen runway approaches at nine locations, subject to two simplifying
assumptions. First, by using approach video from just one of the several possible seasonal variations (no snow cover and
full foliage), we artificially removed one source of scene variation in this study. Secondly, by not using approach video
at dawn and dusk, we limited the study to two illumination variants (day and night). We did allow scene variation due to
atmospheric turbidity by using approach video from rainy and foggy days in some daytime approaches. With suitable
ensemble statistics to account for temporal continuity in video, we observed high location specificity (<90% Bayesian
posterior probability). We also tested repeatability, i.e., identification of a given runway across multiple videos, and
observed robust repeatability only if illumination (day vs. night) was the same and approach visibility was good. Both
specificity and repeatability degraded in poor weather conditions. The results of this simplified study show that
geolocation via real-time comparison of cockpit image sensor video to a database of runway approach imagery is
feasible, as long as the database contains imagery from about the same time of day (complete daylight and nighttime,
excluding dawn and dusk) and the weather is clear at the time of the flight.
Paper Details
Date Published: 20 April 2015
PDF: 15 pages
Proc. SPIE 9477, Optical Pattern Recognition XXVI, 94770G (20 April 2015); doi: 10.1117/12.2177320
Published in SPIE Proceedings Vol. 9477:
Optical Pattern Recognition XXVI
David Casasent; Mohammad S. Alam, Editor(s)
PDF: 15 pages
Proc. SPIE 9477, Optical Pattern Recognition XXVI, 94770G (20 April 2015); doi: 10.1117/12.2177320
Show Author Affiliations
Matthew Schubert, NASA Langley Research Ctr. (United States)
Christopher Newport Univ. (United States)
Andrew J. Moore, NASA Langley Research Ctr. (United States)
Christopher Newport Univ. (United States)
Andrew J. Moore, NASA Langley Research Ctr. (United States)
Chester Dolph, NASA Langley Research Ctr. (United States)
Old Dominion Univ. (United States)
Glenn Woodell, NASA Langley Research Ctr. (United States)
Old Dominion Univ. (United States)
Glenn Woodell, NASA Langley Research Ctr. (United States)
Published in SPIE Proceedings Vol. 9477:
Optical Pattern Recognition XXVI
David Casasent; Mohammad S. Alam, Editor(s)
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