Computer Vision β’ Generative AI β’ Trustworthy & Ethical AI
Iβm an AI/ML practitioner passionate about transforming research ideas into real-world intelligent systems.
My work blends deep learning, image forensics, and human-centric AI, with a strong focus on clarity, reproducibility, and impact.
- π§ Exploring Deep Learning & Applied AI
- π¬ Designing systems aligned with IEEE-style research
- π οΈ Building end-to-end ML pipelines (data β model β UI)
- β¨ Clean code, meaningful experiments, honest evaluation
DeepReveal is a research-oriented deep learning framework designed to identify pixel-wise AI-generated or manipulated regions within images, rather than only giving a global label.
β¨ What makes DeepReveal unique
- π§© Pixel-level localization of AI-generated or tampered content
- π Face-aware region analysis using integrated face detection for focused inspection
- π― Highlights where manipulation occurs, not just whether it exists
- π Interactive Flask-based interface for visual inspection
- π Built with research extensibility and dataset scalability in mind
π Applications:
Digital image forensics β’ Deepfake localization β’ Media authentication β’ Misinformation analysis
πΌοΈ Deepfake Detection Web Application
MobileNetV3-Large + multi-feature extraction for detecting GAN-generated images, deployed with Streamlit. A CNN-based classification system that determines whether an image is real or fake.
Built using MobileNetV3 and deployed with a Streamlit web interface for real-time inference.
- π Trustworthy & explainable AI
- π High-quality datasets & preprocessing
- π Reproducible ML experiments
- π Clear documentation & technical writing
π» GitHub β’ πΌ LinkedIn β’ π§ Email
β If you find my work useful, consider starring a repository β it truly helps!