Zain Ul Abidin
FAST
· 2016
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19I-0538
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
2016
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
Python, Pytorch, TensorFlow, React, Node, Next Js, Docker, Kubernetes, OpenCV, Keras, JS
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.
UMASK (DEEP FAKE DETECTION SYSTEM) Unmask is a web based deep fake video detection system designed to detect the forged and real videos. Here the users can provide the image or a video to the model and it classifies it as real or fake. The number of frames can be selected by the user for the given input. To get an overall view of how deep fakes work we give an option to the user of creating a deep fake video too, for creating a deep fake video the face image which needs to be swapped should be provided and it will be automatically swapped with the real face present in the video. The web app features include: - The subscription plans are provided to the user to use the premium features. Premium features cost may vary according to the length and fps rate of the video provided. - Realtime results are provided for the videos with the confidence percentage in predicting the results. - Feature Maps are generated by the system to give an overall view of how the system ended up in getting the results. - Profile of users are maintained where they can get analysis of their activity on our website and the subscription model they have taken. UNMASK Detecting Deep Fake videos as real or forged Iterations 1 FACE DETECTION AND CROPPING 2 FEATURE EXTRACTION (RES NEXT) 3 VIDEO CLASSIFICATION (LSTM) 4 MODEL INTEGRATION AND WEB APPLICATION WORK FLOW Data Collection Spliting Data Uploading Video Spliting Video in to frames Pre-processing Loading Trained Model Model Export Model Training Prediction Real/Forge Team Members: 19I-2016 Bilal Saeed Malik 19I-0538 Zain Ul Abidin 19I-2155 Bilal Ali Supervisor: Mr. Shams Farooq Co-supervisor: Mr. Bilal Khalid Dar Technology Stack OpenCV Keras JS Technology Used: Python, Pytorch, TensorFlow, React, Node, Next Js, Docker, Kubernets Supervisor Name: Mr. Shams Farooq Group Members: Bilal Saeed Malik (19I - 2016) Zain Ul Abidin (19I - 0538) Bilal Ali (19I - 2155)
AI enrichment
Zain Ul Abidin is a BSCS graduate who contributed to a university project developing a web-based deep fake detection system using Python, TensorFlow, and React. The project involved video processing, feature extraction with ResNeXt, and classification using LSTM models, deployed with Docker and Kubernetes.
Skills (AI)
["Python", "TensorFlow", "PyTorch", "React", "Node.js", "Next.js", "OpenCV", "Docker", "Kubernetes", "Deep Learning", "Video Processing", "ResNeXt", "LSTM"]
Status: ai_done
Provenance
Source file: FAST - School of Computing -Graduate Directory-2023.pdfFrom job #14 page 301
Created: 1778112745