VIDEO TRACKING USING SUPPORT VECTOR MACHINE (SVM) FOR VISUAL SERVOING APPLICATION

Visual servoing has been widely used in various sectors such as manufacturing, transportation, health, military, and security. In the security sector such as the use of video surveillance, visual servoing requires the ability to be able to track any arbitrary object specified at the start of trackin...

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Main Author: Oliver Asali, Modestus
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/35663
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:35663
spelling id-itb.:356632019-02-28T11:18:51ZVIDEO TRACKING USING SUPPORT VECTOR MACHINE (SVM) FOR VISUAL SERVOING APPLICATION Oliver Asali, Modestus Indonesia Theses video tracking, visual servoing, machine learning, support vector machine. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/35663 Visual servoing has been widely used in various sectors such as manufacturing, transportation, health, military, and security. In the security sector such as the use of video surveillance, visual servoing requires the ability to be able to track any arbitrary object specified at the start of tracking process on various forms of objects in complex environments and in various lighting conditions. The classical approach in feature extraction, such as using fiducial marker, is not possible in this condition. Instead, the integration of video tracking algorithms can be done to handle the feature extraction process. Video tracking is the process to predict the position of an object’s feature(s) in a sequence of images recorded by the camera continuously. In order to be used in real-time systems such as visual servoing, video tracking must be efficient, high precision, and robust. In addition, visual servoing applications are also required to have the ability to adapt to changes in their environmental situation. For this purpose, we use structured-output tracking with kernels (STRUCK) algorithm. This algorithm is one of the video tracking algorithms that has the ability to learn to adapt to changes in the environment (machine learning) using support vector machine with a relatively low computational load while still maintaining its accuracy. Performance test of tracking algorithm is performed for various conditions such as rotation, scale, illumination changes, occlusion, and also clutter with stable accuracy results. Testing the results of integration with the visual servoing system also shows good performance and can be used for tracking various objects in both indoor and outdoor environments. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Visual servoing has been widely used in various sectors such as manufacturing, transportation, health, military, and security. In the security sector such as the use of video surveillance, visual servoing requires the ability to be able to track any arbitrary object specified at the start of tracking process on various forms of objects in complex environments and in various lighting conditions. The classical approach in feature extraction, such as using fiducial marker, is not possible in this condition. Instead, the integration of video tracking algorithms can be done to handle the feature extraction process. Video tracking is the process to predict the position of an object’s feature(s) in a sequence of images recorded by the camera continuously. In order to be used in real-time systems such as visual servoing, video tracking must be efficient, high precision, and robust. In addition, visual servoing applications are also required to have the ability to adapt to changes in their environmental situation. For this purpose, we use structured-output tracking with kernels (STRUCK) algorithm. This algorithm is one of the video tracking algorithms that has the ability to learn to adapt to changes in the environment (machine learning) using support vector machine with a relatively low computational load while still maintaining its accuracy. Performance test of tracking algorithm is performed for various conditions such as rotation, scale, illumination changes, occlusion, and also clutter with stable accuracy results. Testing the results of integration with the visual servoing system also shows good performance and can be used for tracking various objects in both indoor and outdoor environments.
format Theses
author Oliver Asali, Modestus
spellingShingle Oliver Asali, Modestus
VIDEO TRACKING USING SUPPORT VECTOR MACHINE (SVM) FOR VISUAL SERVOING APPLICATION
author_facet Oliver Asali, Modestus
author_sort Oliver Asali, Modestus
title VIDEO TRACKING USING SUPPORT VECTOR MACHINE (SVM) FOR VISUAL SERVOING APPLICATION
title_short VIDEO TRACKING USING SUPPORT VECTOR MACHINE (SVM) FOR VISUAL SERVOING APPLICATION
title_full VIDEO TRACKING USING SUPPORT VECTOR MACHINE (SVM) FOR VISUAL SERVOING APPLICATION
title_fullStr VIDEO TRACKING USING SUPPORT VECTOR MACHINE (SVM) FOR VISUAL SERVOING APPLICATION
title_full_unstemmed VIDEO TRACKING USING SUPPORT VECTOR MACHINE (SVM) FOR VISUAL SERVOING APPLICATION
title_sort video tracking using support vector machine (svm) for visual servoing application
url https://digilib.itb.ac.id/gdl/view/35663
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