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Zuhaib Saadat

FAST · 2025 · 21i-0946
Email
Phone
LinkedIn
GitHub

Academic

Program
BSCS
CGPA
Year
2025
Education
FAST NUCES
Address
Islamabad
DOB

Career

Current role
Target role
Skills
Microsoft Azure, Ultralytics, Matlab, Raspberry Pi, ROS2, Python, Visual Studio, Open CV, YOLOv11, RTAB Mapping, Azure Digital Twins, Azure Maps

Verbatim text

The exact text the LLM saw on the page (or the booklet text from the old import). This is what powers semantic search.
Cloud-Vision Based Road Fault Detection 
Using Yololl And RTAB-Mapping 
This project aims to develop an advanced road fault detection system leveraging cloud-based 
computer vision and mapping techniques. The lack of automated road monitoring solutions leads to 
infrastructure deterioration, vehicle damage, and safety risks. Our system utilizes YOLOv11 for real-
time road defect detection and RTAB Mapping for precise spatial localization. The detected faults 
are processed and stored in the cloud, where they can be accessed through a dedicated web 
application. The web app visualizes road conditions using Azure Maps and provides real-time alerts, 
enabling authorities to monitor and respond efficiently. By integrating cloud computing, the system 
ensures scalability, remote accessibility, and real-time analytics to improve road maintenance and 
safety. 
Super vis or: Or. Muhammad Tariq 
Ablltract 
en automated road 
SLAM to detect e nd map 
YOLOll for object detection en 
reconstruction. the system capture 
LIOAR. GPS. IMU. a nd a camera mounted o 
collected date is processed end uploaded to Az 
Azure Digital Twins. enabling reel- time monitoring. v 
a nd automated a le rts for proactive maintena nce. 
I Block Diagram 
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Azure 
Technology Used: 
Microsoft Azure, Ultralytics, Matlab, 
Raspberry Pi , ROS2 , Python , Visual Studio , 
Open CV 
Supervisor Name: 
Dr. Muhammad Tariq 
Group Members: 
Abdullah Naghman {21i-0905) 
Zuhaib Saadat {21i-0946) 
llqa Shahid (21i-0958) 
FAST NUCES ISLAMABAD CAMPUS

AI enrichment

Zuhaib Saadat is a BSCS graduate from FAST NUCES who developed a cloud-based road fault detection system using YOLOv11 and RTAB-Mapping. The project involved integrating computer vision with Azure services for real-time monitoring and spatial localization.
Skills (AI)
["Python", "Computer Vision", "YOLOv11", "RTAB-Mapping", "Microsoft Azure", "OpenCV", "ROS2", "Raspberry Pi", "Matlab"]
Status: ai_done
Provenance
Source file: FAST School of Electrical Engineering - Graduate Directory 2025.pdf
From job #18 page 45
Created: 1778169257