📞 Need Help or Want the Code?
If you need full code, documentation, or mentorship on this project, feel free to contact us at
📞 +91 8088605682 (Includes whatsapp)(100% Guaranteed Response)
🌐 VISIT US : https://smartaitechnologies.com/
🔍 Deepfake Detection Project Using Deep Learning | Full Overview
🌟 What’s in this video?
💡 Introduction to Deepfakes: We explain what deepfakes are and discuss both the dangers ⚠️ and potential benefits ✅ of this technology.
🔬 Deep Learning for Deepfake Detection: Dive into how we used deep learning to detect fake videos, highlighting the importance of accurate detection in today's digital world.
🌐 Research and Model Development
We analyzed several IEEE papers 📄, studied different proposed systems, and identified key research gaps 🧠.
Then, we introduced our own models, including popular architectures like:
EfficientNet
ResNet50
VGG16 & VGGFace
MobileNet
🎛️ Advanced Techniques
Image Augmentation 🖼️: We enhanced image data by applying filters like Gaussian noise removal to improve our model’s performance.
💻 Web App for Video Detection
We built a web app 🖥️ that takes any video as input 🎬 and predicts whether it’s real or fake by analyzing each frame individually!
📊 Results: Tested with sample videos, and our model showed impressive accuracy in predicting deepfakes!
📞 Need Help or Want the Code?
If you need full code, documentation, or mentorship on this project, feel free to contact us at 8088605682. We’ll provide:
💻 Working Code
📚 Documentation
🧑🏫 Classes & Mentorship if you're stuck or want to improve this project further.
Deepfake Detection Using Deep Learning | Full Project Overview
In this video, we explore the concept of deepfakes, discussing both the dangers and potential benefits of this technology. We then dive deep into how deep learning techniques can be leveraged to detect deepfakes in videos.
Our approach is based on extensive research, where we studied multiple IEEE papers, identified research gaps, and proposed a robust model using architectures like EfficientNet, ResNet50, VGG16, VGGFace, and MobileNet. To enhance our model's performance, we applied image augmentation, including Gaussian noise removal, to improve accuracy.
We've also developed a web application that takes videos as input and predicts whether the content is real or fake by analyzing each frame. Through testing with sample videos, our model showed impressive accuracy in detecting deepfakes.
If you're interested in accessing the full working code, documentation, or if you need mentorship or classes to improve or understand this project better, feel free to reach out to us at 80886056**. We're happy to provide guidance and support!