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Liveness Detection Replay Dataset (3K+ Attacks, 1.5K People)

Liveness detection dataset of Replay attacks performed on Mobile devices. This dataset consists of 1,500 individuals who provided selfies, followed by 3,000 replay display attacks executed across 15 different mobile devices. These attacks are captured from a diverse range of devices, spanning low, medium, and high-end mobile phones, providing extensive variation in screen types, lighting, and environmental conditions

Full version of the dataset is available for commercial usage. Leave a request on our website Axonlabs to purchase the dataset 💰

For feedback and additional sample requests, please contact us!

Real Life Selfies

  • Each person provided one selfie.
  • Selfies are at least 720p quality.
  • Faces are clear with no filters.

Replay Display Attacks

  • The dataset includes 5,000+ replay attacks.
  • The attacks vary in lighting, devices, and screens.
  • Videos last at least 12 seconds.
  • Cameras move slowly, showing attacks from various angles.

Key Features

  • Selfies: Over 1,000 individuals shared selfies, balanced in terms of gender and ethnicity.
  • Replay Display Attacks: More than 5,000 replay display attacks crafted from these selfies, providing a diverse set of attack types.

Potential Use Cases

This dataset is ideal for training and evaluating models for:

  • Liveness Detection: Helping to distinguish between real selfies and spoof attempts (replay attacks).
  • Anti-Spoofing: Enhancing security in biometric systems and preventing fake or spoofed face recognition attempts.
  • Biometric Authentication: Improving facial recognition security systems.
  • Machine Learning and Deep Learning: Assisting researchers in building robust liveness detection models.

Keywords

  • Display attacks
  • Antispoofing
  • Liveness Detection
  • Spoof Detection
  • Facial Recognition
  • Biometric Authentication
  • Security Systems
  • AI Dataset
  • Replay Attack Dataset
  • Anti-Spoofing Technology
  • Facial Biometrics
  • Machine Learning Dataset
  • Deep Learning

Contact and Feedback

We welcome your feedback! Feel free to reach out to us and share your experience with this dataset. If you're interested, you can also receive additional samples for free! 😊 Visit us at Axonlabs to request a full version of the dataset for commercial usage.

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