Automated object counting with multiple user-defined criteria

Automated object counting applications track, identify and count objects in a bounded image region while providing fast and objective results with minimum errors. A majority of the systems developed, however, utilize a fixed design which limits their adaptability to new types of objects. This paper...

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Main Authors: Apolonio, Daniel Rene T., Cruz, Marc Francis G., Sia, Jackson N., Wong, Eugene W., Ilao, Joel P.
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Published: Animo Repository 2007
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/6928
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Institution: De La Salle University
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-77022022-09-21T07:10:58Z Automated object counting with multiple user-defined criteria Apolonio, Daniel Rene T. Cruz, Marc Francis G. Sia, Jackson N. Wong, Eugene W. Ilao, Joel P. Automated object counting applications track, identify and count objects in a bounded image region while providing fast and objective results with minimum errors. A majority of the systems developed, however, utilize a fixed design which limits their adaptability to new types of objects. This paper describes algorithms that can be used for automated object counting systems based on user-selected attributes. The attributes include color, size, shape, orientation and texture, where for each selected attribute, the user can vary the similarity level. The system developed is able to locate, identify and count objects in the input image. The system is also capable of separating touching objects prior to counting. Object detection is100% accurate for input images containing similar objects and98.89% in the case of different objects. The system is able to correctly detect an object through its boundary provided that the contrast between the object and background is high. It can be seen through the performance test on real-world objects that the numerical techniques used for object comparison through the user-defined criteria agree with the manual method of classifying and counting. 2007-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/6928 Faculty Research Work Animo Repository Digital counters Computer vision Image processing—Digital techniques Computer Sciences
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Digital counters
Computer vision
Image processing—Digital techniques
Computer Sciences
spellingShingle Digital counters
Computer vision
Image processing—Digital techniques
Computer Sciences
Apolonio, Daniel Rene T.
Cruz, Marc Francis G.
Sia, Jackson N.
Wong, Eugene W.
Ilao, Joel P.
Automated object counting with multiple user-defined criteria
description Automated object counting applications track, identify and count objects in a bounded image region while providing fast and objective results with minimum errors. A majority of the systems developed, however, utilize a fixed design which limits their adaptability to new types of objects. This paper describes algorithms that can be used for automated object counting systems based on user-selected attributes. The attributes include color, size, shape, orientation and texture, where for each selected attribute, the user can vary the similarity level. The system developed is able to locate, identify and count objects in the input image. The system is also capable of separating touching objects prior to counting. Object detection is100% accurate for input images containing similar objects and98.89% in the case of different objects. The system is able to correctly detect an object through its boundary provided that the contrast between the object and background is high. It can be seen through the performance test on real-world objects that the numerical techniques used for object comparison through the user-defined criteria agree with the manual method of classifying and counting.
format text
author Apolonio, Daniel Rene T.
Cruz, Marc Francis G.
Sia, Jackson N.
Wong, Eugene W.
Ilao, Joel P.
author_facet Apolonio, Daniel Rene T.
Cruz, Marc Francis G.
Sia, Jackson N.
Wong, Eugene W.
Ilao, Joel P.
author_sort Apolonio, Daniel Rene T.
title Automated object counting with multiple user-defined criteria
title_short Automated object counting with multiple user-defined criteria
title_full Automated object counting with multiple user-defined criteria
title_fullStr Automated object counting with multiple user-defined criteria
title_full_unstemmed Automated object counting with multiple user-defined criteria
title_sort automated object counting with multiple user-defined criteria
publisher Animo Repository
publishDate 2007
url https://animorepository.dlsu.edu.ph/faculty_research/6928
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