STATE MACHINE DESIGN AND IMPLEMENTATION FOR COMBINING OBJECT TRACKING METHOD: HUMAN CASE STUDY

Since the Viola and Jones' method on real-time face detection was proposed in 2001, numerous works for object detection, person recognition, and object tracking have been published by papers and journals. Each method has its own strong points and drawbacks. For this thesis will focus to buil...

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Main Author: Maria Teresa R Kinasih, Fabiola
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/36571
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:36571
spelling id-itb.:365712019-03-13T14:38:26ZSTATE MACHINE DESIGN AND IMPLEMENTATION FOR COMBINING OBJECT TRACKING METHOD: HUMAN CASE STUDY Maria Teresa R Kinasih, Fabiola Indonesia Theses person detection, person recognition, speed (in frame per seconds), state machine, tracker. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/36571 Since the Viola and Jones' method on real-time face detection was proposed in 2001, numerous works for object detection, person recognition, and object tracking have been published by papers and journals. Each method has its own strong points and drawbacks. For this thesis will focus to build a system with a goal to track the specific object of interest, in this case, person, it is beneficial to combine those methods using state machine in order to harness the tracker promptness while maintaining the ability to distinguish the object of interest with the other object and backgrounds. Several methods that are considered to be combined are: Face Recognition which is a derivation works from Dlib machine learning toolkit, Face Detection which employed convolutional neural network with Mobilenet-SSD architecture, kernelized correlation filter based object tracker, and a primitive object tracker based on color filter. The FSM implemented in this paper is able to meet the goal with a considerable performance for indoor settings. System performance is between 8-30 frame per seconds, depends on which method that is currently being run, while being able to recognize the object. Coordinate point accuration is about 93-100% for horizontal coordinate and 97-100% for vertical coordinat. No false positive yielded when testing, while false negative could happen for under exposure frame captured. The false negative rate for indoor settings is recorded at 5-10%. 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 Since the Viola and Jones' method on real-time face detection was proposed in 2001, numerous works for object detection, person recognition, and object tracking have been published by papers and journals. Each method has its own strong points and drawbacks. For this thesis will focus to build a system with a goal to track the specific object of interest, in this case, person, it is beneficial to combine those methods using state machine in order to harness the tracker promptness while maintaining the ability to distinguish the object of interest with the other object and backgrounds. Several methods that are considered to be combined are: Face Recognition which is a derivation works from Dlib machine learning toolkit, Face Detection which employed convolutional neural network with Mobilenet-SSD architecture, kernelized correlation filter based object tracker, and a primitive object tracker based on color filter. The FSM implemented in this paper is able to meet the goal with a considerable performance for indoor settings. System performance is between 8-30 frame per seconds, depends on which method that is currently being run, while being able to recognize the object. Coordinate point accuration is about 93-100% for horizontal coordinate and 97-100% for vertical coordinat. No false positive yielded when testing, while false negative could happen for under exposure frame captured. The false negative rate for indoor settings is recorded at 5-10%.
format Theses
author Maria Teresa R Kinasih, Fabiola
spellingShingle Maria Teresa R Kinasih, Fabiola
STATE MACHINE DESIGN AND IMPLEMENTATION FOR COMBINING OBJECT TRACKING METHOD: HUMAN CASE STUDY
author_facet Maria Teresa R Kinasih, Fabiola
author_sort Maria Teresa R Kinasih, Fabiola
title STATE MACHINE DESIGN AND IMPLEMENTATION FOR COMBINING OBJECT TRACKING METHOD: HUMAN CASE STUDY
title_short STATE MACHINE DESIGN AND IMPLEMENTATION FOR COMBINING OBJECT TRACKING METHOD: HUMAN CASE STUDY
title_full STATE MACHINE DESIGN AND IMPLEMENTATION FOR COMBINING OBJECT TRACKING METHOD: HUMAN CASE STUDY
title_fullStr STATE MACHINE DESIGN AND IMPLEMENTATION FOR COMBINING OBJECT TRACKING METHOD: HUMAN CASE STUDY
title_full_unstemmed STATE MACHINE DESIGN AND IMPLEMENTATION FOR COMBINING OBJECT TRACKING METHOD: HUMAN CASE STUDY
title_sort state machine design and implementation for combining object tracking method: human case study
url https://digilib.itb.ac.id/gdl/view/36571
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