Journal article 986 views
Visual Form 2001
Lecture notes in computer science
Swansea University Author:
Matt Roach
Full text not available from this repository: check for access using links below.
DOI (Published version): 10.1007/3-540-45129-3
Abstract
This paper considers camera motion extraction with application to automatic video classification. Video motion is subdivided into 3 components, one of which, camera motion, is considered here. The extraction of the camera motion is based on correlation. Both subjective and objective measures of the...
Published in: | Lecture notes in computer science |
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ISBN: | 978-3-540-42120-7 978-3-540-45129-7 |
Published: |
2001
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URI: | https://cronfa.swan.ac.uk/Record/cronfa39133 |
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2018-03-22T05:12:36Z |
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2018-03-21T20:19:45.3853079 v2 39133 2018-03-21 Visual Form 2001 9722c301d5bbdc96e967cdc629290fec 0000-0002-1486-5537 Matt Roach Matt Roach true false 2018-03-21 MACS This paper considers camera motion extraction with application to automatic video classification. Video motion is subdivided into 3 components, one of which, camera motion, is considered here. The extraction of the camera motion is based on correlation. Both subjective and objective measures of the performance of the camera motion extraction are presented. This approach is shown to be simple but efficient and effective. This form is separated and extracted as a discriminant for video classification. In a simple classification experiment it is shown that sport and non-sport videos can be classified with an identification rate of 80%. The system is shown to be able to verify the genre of a short sequence (only 12 seconds), for sport and non-sport, with a false acceptance rate of 10% on arbitrarily chosen test sequences. Journal Article Lecture notes in computer science 978-3-540-42120-7 978-3-540-45129-7 31 5 2001 2001-05-31 10.1007/3-540-45129-3 COLLEGE NANME Mathematics and Computer Science School COLLEGE CODE MACS Swansea University 2018-03-21T20:19:45.3853079 2018-03-21T20:19:45.1824859 Faculty of Science and Engineering School of Mathematics and Computer Science - Computer Science Martin-Granel Pierre 1 Roach Matthew 2 Mason John 3 Matt Roach 0000-0002-1486-5537 4 |
title |
Visual Form 2001 |
spellingShingle |
Visual Form 2001 Matt Roach |
title_short |
Visual Form 2001 |
title_full |
Visual Form 2001 |
title_fullStr |
Visual Form 2001 |
title_full_unstemmed |
Visual Form 2001 |
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Visual Form 2001 |
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9722c301d5bbdc96e967cdc629290fec |
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9722c301d5bbdc96e967cdc629290fec_***_Matt Roach |
author |
Matt Roach |
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Martin-Granel Pierre Roach Matthew Mason John Matt Roach |
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Journal article |
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Lecture notes in computer science |
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2001 |
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Swansea University |
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978-3-540-42120-7 978-3-540-45129-7 |
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10.1007/3-540-45129-3 |
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Faculty of Science and Engineering |
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Faculty of Science and Engineering |
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facultyofscienceandengineering |
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Faculty of Science and Engineering |
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School of Mathematics and Computer Science - Computer Science{{{_:::_}}}Faculty of Science and Engineering{{{_:::_}}}School of Mathematics and Computer Science - Computer Science |
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description |
This paper considers camera motion extraction with application to automatic video classification. Video motion is subdivided into 3 components, one of which, camera motion, is considered here. The extraction of the camera motion is based on correlation. Both subjective and objective measures of the performance of the camera motion extraction are presented. This approach is shown to be simple but efficient and effective. This form is separated and extracted as a discriminant for video classification. In a simple classification experiment it is shown that sport and non-sport videos can be classified with an identification rate of 80%. The system is shown to be able to verify the genre of a short sequence (only 12 seconds), for sport and non-sport, with a false acceptance rate of 10% on arbitrarily chosen test sequences. |
published_date |
2001-05-31T09:19:27Z |
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1827104219352530944 |
score |
11.055543 |