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 Computer Vision-based Crowd Monitoring System on NVIDIA Jetson GPU using High-Level GPU Coder
نظام مراقبة الحشود المستند إلى رؤية الكمبيوتر في الوقت الفعلي على وحدة معالجة الرسومات NVIDIA Jetson باستخدام وحدة تشفير GPU عالية المستوى
Subject
:
Faculty of Engineering
Document Language
:
Arabic
Abstract
:
Crowd monitoring in Saudi Arabia is an essential task, especially in the Two Holy Mosques and the holy sites. During this scientific research, crowd flow monitoring system was designed and developed using image analysis of live CCTV camera feed in these places. The system automatically monitors crowd flow such as collecting similar flow patterns in regions i.e. segmenting the crowd based on the flow which in turn is calculated using object displacement calculations made at the pixel and object level. Various computer vision-based algorithms have been proposed in the literature for visual flow estimation that high-level algorithms use to build a larger picture of crowd movement patterns. The Lucas-Kanade and Horn-Schunck methods were used. It is widely known that pixel-level accurate optical flow with reasonable accuracy requires tremendous computational power. Furthermore, the algorithm should further estimate crowd flow patterns by aggregating the motion vectors obtained by optical flow. So, the overall system is computationally expensive and requires a lot of computing power. To achieve this, we will move this task to a GPU that can handle vector computations much more quickly than CPUs. For this purpose, we intend to use a MATLAB GPU encoder to implement the optimization algorithm for optical flow. This development environment is suitable for rapid algorithm deployment on GPU hardware. The solution that was developed to help the current crowd management system in the holy places and will not only enhance the local capabilities of the Kingdom towards solutions for crowd management in the holy places but also serve the development plan in the Kingdom. Moreover, the portability of the solution developed on the embedded GPU will allow it to be installed quickly in temporary security locations as well.
Supervisor
:
Dr. Muhammad Ahmad Bilal
Thesis Type
:
Master Thesis
Publishing Year
:
1444 AH
2022 AD
Added Date
:
Tuesday, February 21, 2023
Researchers
Researcher Name (Arabic)
Researcher Name (English)
Researcher Type
Dr Grade
Email
بندر حنش القرني
Al-Qarni, Bander
Researcher
Master
Files
File Name
Type
Description
49003.pdf
pdf
Back To Researches Page