Main Page
Deanship
The Dean
Dean's Word
Curriculum Vitae
Contact the Dean
Vision and Mission
Organizational Structure
Vice- Deanship
Vice- Dean
KAU Graduate Studies
Research Services & Courses
Research Services Unit
Important Research for Society
Deanship's Services
FAQs
Research
Staff Directory
Files
Favorite Websites
Deanship Access Map
Graduate Studies Awards
Deanship's Staff
Staff Directory
Files
Researches
Contact us
عربي
English
About
Admission
Academic
Research and Innovations
University Life
E-Services
Search
Deanship of Graduate Studies
Document Details
Document Type
:
Thesis
Document Title
:
REAL-TIME MOVING TARGETS COUNTING IN SURVEILLANCE SYSTEMS
العد اللحظي للاهداف المتحركة في انظمة المراقبة
Subject
:
Faculty of Engineering
Document Language
:
Arabic
Abstract
:
An object detection system is being generally used to analyze and describe the moving objects. Moving object detection and video tracking system captures events from the data of the surveillance system. The goal of this thesis is to apply object detection and recognition in real time processing. All video scenes contain identifiable objects using object detection technology. There are various types of sensed objects such as vehicles, people, animals and other moving objects. It is very difficult to detect and count moving objects in any video captured by the surveillance system. Pedestrian tracking used by top-level applications to find the object location and shapes for each frame. To overcome the current challenge of surveillance data, we have worked on the drawbacks of existing technology and made the module to find out relevant data with detailed & accurate information. We have used the method based on artificial intelligence technology based on time-frame and programmed in Matlab for detecting the detailed information regarding the moving objects in the video. Which provides more accurate and relevant information hence, will be handful for the surveillance purpose like to study the case took place in public place, boarder and other sensitive area.
Supervisor
:
Dr. Amjad Hajjar
Thesis Type
:
Master Thesis
Publishing Year
:
1444 AH
2022 AD
Added Date
:
Sunday, February 19, 2023
Researchers
Researcher Name (Arabic)
Researcher Name (English)
Researcher Type
Dr Grade
Email
أحمد صقر
Sacor, Ahmad
Researcher
Master
Files
File Name
Type
Description
48982.pdf
pdf
Back To Researches Page