Ikram Ullah Khan
FAST
· 2022
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i18-0743
Email
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Phone
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LinkedIn
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GitHub
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Academic
Program
BSCS
CGPA
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Year
2022
Education
SEECS
Address
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DOB
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Career
Current role
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Target role
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Skills
MERN Stack, AWS, Raspberry Pi, Amazon Sagemaker, TensorFlow, Python, React, Node.js, Docker, Kubernetes, GitHub
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.
RecogLip – Sentence Level Lip Reading The main motivation of this project is to help the people suffering from diseases like Amyotrophic lateral sclerosis (ALS), Aphasia and Aphonia. The patients suffering from such diseases can move their lips but unfortunately they cannot speak and we cannot listen to them. In order to overcome this issue, we developed a headgear using Raspberry Pie, that will detect the movement of lips and the text will be generated on the screen. Also, the voice will be generated by sound module. In this way, our headgear will help the patients to communicate. Features include: 1. Detection of Lips 2. Generate Text 3. Generate Voice 4. Communication RecogLip Sentence Level Lip Reading Headgear Group Members: Ikram Ullah Khan (i18-0743) Usama Khan (i19-0551) Sobia Noor (i19-0744) Supervisor: Dr. Hammad Majeed Co-Supervisor: Mr. Saad Salman OBJECTIVE A headgear that will help people suffering with certain speech related diseases to communicate. A camera module connected with Raspberry Pi will detect the speech from the movements of lips and a speaker will be used to communicate that output. ARCHITECTURE REAL-TIME VIDEO STREAM FROM HEADGEAR FACE MESH TO DETECT FACE POINTS EXTRACT USEFUL FEATURES AUDIO GENERATED BY SPEAKER MODULE VIDEO TO TEXT PASSING TO MODEL TIMELINE SEP OCT PHASE 1 • A WEB APPLICATION FOR DATA COLLECTION • PREPROCESSING THE DATA • WORKING ON MODEL • BUILDING A RASPBERRY PI HEADGEAR PROTOTYPE NOV DEC PHASE 2 • USING IMAGE PROCESSING TO EXTRACT BETTER FEATURES • TRAINING THE MODEL • OPTIMIZING THE PERFORMANCE AND ACCURACY OF THE MODEL JAN MAR PHASE 3 • RETRAIN THE TUNED MODEL • WORKING ON CI/CD PIPELINE • TESTING ON REAL-TIME APR MAY PHASE 4 • INTEGRATING MODEL THROUGH API'S • BUILDING CI/CD PIPELINE • WORKING ON BONUS FEATURES TOOLS Technology Used: MERN Stack, AWS, Raspberry Pie, Amazon Sagemaker, TensorFlow Supervisor Name: Dr. Hammad Majeed Group Members: Usama Khan (i19 - 0551) Sobia Noor (i19 - 0744) Ikram Ullah Khan (i18 - 0743)
AI enrichment
Ikram Ullah Khan is a BSCS graduate who contributed to a final year project developing a Raspberry Pi-based headgear for real-time lip reading and speech synthesis. The project involved building a MERN stack web application, training TensorFlow models on AWS SageMaker, and integrating hardware with software via APIs.
Skills (AI)
["MERN Stack", "TensorFlow", "AWS", "Amazon SageMaker", "Raspberry Pi", "Computer Vision", "Natural Language Processing", "API Integration", "CI/CD", "Image Processing"]
Status: ai_done
Provenance
Source file: FAST - School of Computing -Graduate Directory-2023.pdfFrom job #14 page 336
Created: 1778140212