Syeda Ramen Bukhari
FAST
· 2021
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i17 - 0086
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Academic
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Year
2021
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Skills
Deep learning, Computer vision, IOT, Android development
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RARroad is a computer vision based system that will assist the driver as road awareness is added in the rover using deep learning algorithms implemented on Raspberry Pi. The RAR system will detect and recognize traffic signs in real-time. The system will send its output to the mobile application that will generate alerts to inform the driver and then arduino will change the rover behavior according to the sign caught. It will significantly increase driver safety and road awareness. The objectives of RARroad are: 1. Create a lane following the rover. 2. Create an AI-based system that enables traffic sign detection and recognition in real-time. 3. Create an “Alert Generation System” using an android application that alerts and notifies the drivers whenever a traffic sign appears. Create an IOT based system that will change the rover behavior according to the sign caught. Technology Used: Deep learning, Computer vision, IOT, Android development. Supervisor Name: Dr. Adnan Tariq Group Members: Syeda Ramen Bukhari (i17 - 0086)
AI enrichment
Syeda Ramen Bukhari is a student who contributed to the RARroad project, a computer vision-based system for real-time traffic sign detection and rover control. The project utilized deep learning, IoT, and Android development to enhance driver safety and road awareness.
Skills (AI)
["Computer Vision", "Deep Learning", "IoT", "Android Development", "Traffic Sign Detection", "Raspberry Pi", "Arduino"]
Status: ai_done
Provenance
Source file: Graduate Directory FAST School of Computing 2021 (1st Final) (1).pdfFrom job #24 page 227
Created: 1778144136