Published January 22, 2024 | Version v1
Dataset Restricted

GaFaR

  • 1. ROR icon Idiap Research Institute

Description

Description

This dataset includes the reconstructed face images from facial templates extracted from face images of the MOBIO dataset using template inversion methods proposed in the following paper, including GaFaR, GaFaR+GS, and GaFaR+CO. In addition, as described in the paper, the reconstructed face images were used for practical presentation attacks. To this end, each of the reconstructed face images was printed on a typical paper or shown by a digital tablet (Apple iPad Pro) and presented in front of a camera. The captured image by the camera can then be used as input to the face recognition system. The cameras of three different mobile devices were used for capturing images in this dataset, including Apple iPhone 12, Xiaomi Redmi 9 A, and Samsung Galaxy S9. In addition to the proposed face reconstruction methods, reconstructed face images by two other methods from literature are used for presentation attacks using replay from iPad and captured by iPhone 12 camera.

You can find more information about the dataset (including source code of reconstructing face images) on the project page: https://www.idiap.ch/paper/gafar/

 

Reference

If you're using this dataset, please cite the following publication

  @article{tpami2023ti3d,
    author    = {Hatef Otroshi Shahreza and S{\'e}bastien Marcel},
    title     = {Comprehensive Vulnerability Evaluation of Face Recognition Systems to Template Inversion Attacks Via 3D Face Reconstruction},
    journal   = {IEEE Transactions on Pattern Analysis and Machine Intelligence},
    year      = {2023},
    volume={45},
    number={12},
    pages={14248-14265},
    doi={10.1109/TPAMI.2023.3312123}
  }

Files

Restricted

The record is publicly accessible, but files are restricted to users with access.

Request access

If you would like to request access to these files, please fill out the form below.

You need to satisfy these conditions in order for this request to be accepted:

We will provide an End-User License Agreement. The use of the dataset is strictly restricted to non-commercial research.

Please provide us the following information about the authorized signatory (MUST hold a permanent position):

  • Full name
  • Name of organization
  • Position / job title
  • Academic / email address
  • URL where we can verify the information details

Only valid academic email addresses from the same organization as the signatory are accepted for the online request. All online requests coming from generic email providers such as gmail will be rejected.

You are currently not logged in. Do you have an account? Log in here

Additional details

Related works

Is derived from
Dataset: 10.34777/njmc-9v31 (DOI)
Is described by
Conference paper: 10.1109/TPAMI.2023.3312123 (DOI)

Funding

TReSPAsS-ETN – TRaining in Secure and PrivAcy-preserving biometricS 860813
European Commission