Autonomous target detection using segmented correlation method and tracking via mean shift algorithm
An autonomous, efficient and effective object tracking algorithm was required to autonomously identify and track incoming targets. Then controlling a pan-tilt mounted with the sensing camera to accommodate the target within the camera's field of view and controlling a weapon mounted on the seco...
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my.utm.456232017-09-04T04:58:51Z http://eprints.utm.my/id/eprint/45623/ Autonomous target detection using segmented correlation method and tracking via mean shift algorithm K., Kamal An autonomous, efficient and effective object tracking algorithm was required to autonomously identify and track incoming targets. Then controlling a pan-tilt mounted with the sensing camera to accommodate the target within the camera's field of view and controlling a weapon mounted on the second mechanical pan tilt to lock the target and follow it efficiently and accurately. A hybrid algorithm is derived that is a combination of an intruder identification and localization technique derived from the normalized cross correlation method. Spatial and dimensional parameters of the target are autonomously retrieved from segmented correlation method, which are then used as the input parameters for the mean shift algorithm. 2011 Conference or Workshop Item PeerReviewed K., Kamal (2011) Autonomous target detection using segmented correlation method and tracking via mean shift algorithm. In: 4th International Conference on Mechatronics (ICOM), 17-19 May 2011, Kuala Lumpur, Malaysia. http://dx.doi.org/10.1109/ICOM.2011.5937148 |
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An autonomous, efficient and effective object tracking algorithm was required to autonomously identify and track incoming targets. Then controlling a pan-tilt mounted with the sensing camera to accommodate the target within the camera's field of view and controlling a weapon mounted on the second mechanical pan tilt to lock the target and follow it efficiently and accurately. A hybrid algorithm is derived that is a combination of an intruder identification and localization technique derived from the normalized cross correlation method. Spatial and dimensional parameters of the target are autonomously retrieved from segmented correlation method, which are then used as the input parameters for the mean shift algorithm. |
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Conference or Workshop Item |
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K., Kamal |
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K., Kamal Autonomous target detection using segmented correlation method and tracking via mean shift algorithm |
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K., Kamal |
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K., Kamal |
title |
Autonomous target detection using segmented correlation method and tracking via mean shift algorithm |
title_short |
Autonomous target detection using segmented correlation method and tracking via mean shift algorithm |
title_full |
Autonomous target detection using segmented correlation method and tracking via mean shift algorithm |
title_fullStr |
Autonomous target detection using segmented correlation method and tracking via mean shift algorithm |
title_full_unstemmed |
Autonomous target detection using segmented correlation method and tracking via mean shift algorithm |
title_sort |
autonomous target detection using segmented correlation method and tracking via mean shift algorithm |
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2011 |
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http://eprints.utm.my/id/eprint/45623/ http://dx.doi.org/10.1109/ICOM.2011.5937148 |
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