Skip to content

Latest commit

 

History

History
36 lines (27 loc) · 1.75 KB

README.md

File metadata and controls

36 lines (27 loc) · 1.75 KB

Fake-image-detection

Introduction

Deep fake images have become a growing concern in today's digital age. This project aims to develop a machine learning model to accurately classify real and fake images using convolutional neural networks (CNNs). The goal is to detect manipulations in images and distinguish between authentic and altered content.

Features

  • Binary Classification: Classifies images as either real or fake.
  • Pre-trained Model: Utilizes the VGG16 model to improve performance.
  • Transfer Learning: Adds custom layers to fine-tune the pre-trained model for the dataset.

Dataset

The dataset consists of images stored in two categories:

Real: Images that are authentic. Fake: Images that are generated/manipulated to create deep fakes. The dataset is split into training, validation, and testing sets for model evaluation.

Model Architecture

The model uses the VGG16 architecture with added layers for classification:

Input Layer: Pre-trained VGG16 layers. Custom Layers: Additional Dense, Dropout, and Activation layers for fine-tuning. Output Layer: Sigmoid activation function for binary classification.

Results

Accuracy: Achieved an accuracy of around 85% using the VGG16 model after fine-tuning. Loss: The final model showed minimal loss on the validation set.

Technologies Used

Python: Core programming language. TensorFlow/Keras: For building and training the deep learning model.

Future Work

Improve Model Accuracy: Experiment with other pre-trained models (ResNet, EfficientNet) to boost performance. More Azure Services: Utilize Azure Face API and AI Language Services to add further layers of detection and analysis. Real-time Deepfake Detection: Implement real-time detection of deep fakes in video streams.