130K Real vs Fake Face Dataset

130K Real vs Fake Face Dataset

Datasets

130K Real vs Fake Face Dataset

File

130K Real vs Fake Face Dataset

Use Case

Image Classification

Description

Download the 130K Real vs Fake Face Dataset for AI deepfake detection, face recognition, and ML research. Train smarter AI models today!

130K Real vs Fake Face Dataset

Description:

The 130K Real vs Fake Face Dataset is a high-quality collection of real and AI-generated facial images. It is designed for deepfake detection, face recognition, and machine learning applications in computer vision.

This dataset consists of:

  • 70,000 Real Faces (FFHQ Dataset)
  • 60,000 AI-Generated Faces (Flux1.pro, Flux1.dev, SDXL)

Dataset Overview

Feature

Real Face Images (FFHQ)

Synthetic Face Images (AI-Generated)

Quantity

70,000

60,000

Resolution

256×256 pixels

1024×1024 pixels

Source

Flickr-Faces-HQ (FFHQ)

Flux1.pro, Flux1.dev, SDXL

Diversity

Age, ethnicity, poses

AI-generated variations

Use Cases

Face recognition, bias analysis

Deepfake detection, AI testing

Dataset Breakdown

  1. Real Face Images (FFHQ Subset)
  • Quantity: 70,000 images
  • Resolution: 256×256 pixels
  • Features:
    • High-quality real-world facial images
    • Diverse in age, ethnicity, gender, and pose
    • Suitable for facial recognition, age estimation, and AI bias detection
  1. Synthetic Face Images (AI-Generated)
  • Quantity: 60,000 high-resolution synthetic images
  • Resolution: 1024×1024 pixels
  • Features:
    • Created using Flux1.pro, Flux1.dev, and SDXL (Stable Diffusion XL)
    • High-resolution, realistic AI-generated facial images
    • Perfect for deepfake detection and AI-generated content research

Key Advantages of This Dataset

  • Perfect for AI & ML Training – Train deep learning models to distinguish real vs fake faces.
  • Supports Deepfake Detection Research – Enhance security against AI-generated face fraud.
  • High-Resolution AI Faces – 1024×1024 synthetic images improve training accuracy.
  • Diverse & Balanced Data – Includes real and fake faces for unbiased AI development.
  • Ideal for Computer Vision & AI Ethics – Study synthetic media and its impact on real-world applications.

Applications of the 130K Real vs Fake Face Dataset

  • Deepfake Detection: Build AI models to detect manipulated images.
  • Facial Recognition: Improve identity verification and security systems.
  • AI Ethics Research: Study biases in synthetic media generation.
  • Computer Vision Projects: Enhance image classification and facial authentication.
  • Adversarial Machine Learning: Test AI robustness against fake images.

Why Choose This Dataset?

This dataset is ideal for researchers, AI developers, and security experts working on face authentication, deepfake prevention, and AI-generated media detection.

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