DESIGN AND IMPLEMENTATION PEOPLE COUNTING SYSTEM USING DETECTION AND TRACK DEEP LEARNING BASED

The importance of statistic object counting in human behavior analysis drives efficiency improvement in the data collection process. Main problem that happened is manual counting by human efforts. Manual counting can be caused into low accuracy as a result of human limitations. This research stud...

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Main Author: Cahyadi, Nanang
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/64380
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:64380
spelling id-itb.:643802022-05-19T08:57:07ZDESIGN AND IMPLEMENTATION PEOPLE COUNTING SYSTEM USING DETECTION AND TRACK DEEP LEARNING BASED Cahyadi, Nanang Indonesia Theses dataset, YOLOV4, DeepSORT, counting object, bidirection INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/64380 The importance of statistic object counting in human behavior analysis drives efficiency improvement in the data collection process. Main problem that happened is manual counting by human efforts. Manual counting can be caused into low accuracy as a result of human limitations. This research study people counting system built by detection and track approach by deep learning based that aims to automate counting process by analyze recorded CCTV video that prioritize good accuracy. The research is done by build human detector with its dataset, then integrate track module and counting method. Building human detector includes images gathering and object annotating for 4000 images that contains 2000 that from extracted CCTV video and taken from Open Image Dataset V6 for the rest. Those images feed into YOLOV4 and reach mAP 92.62%. The integration process is carried out the module using DeepSORT for the trajectory of the detected object movement is obtained. Then the counting method used is to register the movement of objects seen from the difference in the location of the detected trajectory with the location of the last detected object. The method will give the results of counting objects that come out and enter in the video. In order to get optimal results, tuning is done in the DeepSORT parameter and the counting method. The system is tested using the CCTV video that is owned where the scenario being tested is that the movement of humans in the video is two-way, the F-score value for counting objects that come out and enter is 100% and 85%, respectively. 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 The importance of statistic object counting in human behavior analysis drives efficiency improvement in the data collection process. Main problem that happened is manual counting by human efforts. Manual counting can be caused into low accuracy as a result of human limitations. This research study people counting system built by detection and track approach by deep learning based that aims to automate counting process by analyze recorded CCTV video that prioritize good accuracy. The research is done by build human detector with its dataset, then integrate track module and counting method. Building human detector includes images gathering and object annotating for 4000 images that contains 2000 that from extracted CCTV video and taken from Open Image Dataset V6 for the rest. Those images feed into YOLOV4 and reach mAP 92.62%. The integration process is carried out the module using DeepSORT for the trajectory of the detected object movement is obtained. Then the counting method used is to register the movement of objects seen from the difference in the location of the detected trajectory with the location of the last detected object. The method will give the results of counting objects that come out and enter in the video. In order to get optimal results, tuning is done in the DeepSORT parameter and the counting method. The system is tested using the CCTV video that is owned where the scenario being tested is that the movement of humans in the video is two-way, the F-score value for counting objects that come out and enter is 100% and 85%, respectively.
format Theses
author Cahyadi, Nanang
spellingShingle Cahyadi, Nanang
DESIGN AND IMPLEMENTATION PEOPLE COUNTING SYSTEM USING DETECTION AND TRACK DEEP LEARNING BASED
author_facet Cahyadi, Nanang
author_sort Cahyadi, Nanang
title DESIGN AND IMPLEMENTATION PEOPLE COUNTING SYSTEM USING DETECTION AND TRACK DEEP LEARNING BASED
title_short DESIGN AND IMPLEMENTATION PEOPLE COUNTING SYSTEM USING DETECTION AND TRACK DEEP LEARNING BASED
title_full DESIGN AND IMPLEMENTATION PEOPLE COUNTING SYSTEM USING DETECTION AND TRACK DEEP LEARNING BASED
title_fullStr DESIGN AND IMPLEMENTATION PEOPLE COUNTING SYSTEM USING DETECTION AND TRACK DEEP LEARNING BASED
title_full_unstemmed DESIGN AND IMPLEMENTATION PEOPLE COUNTING SYSTEM USING DETECTION AND TRACK DEEP LEARNING BASED
title_sort design and implementation people counting system using detection and track deep learning based
url https://digilib.itb.ac.id/gdl/view/64380
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