Identity Documents Authentication based on Forgery Detection of
Guilloche Pattern
- URL: http://arxiv.org/abs/2206.10989v1
- Date: Wed, 22 Jun 2022 11:37:10 GMT
- Title: Identity Documents Authentication based on Forgery Detection of
Guilloche Pattern
- Authors: Musab Al-Ghadi, Zuheng Ming, Petra Gomez-Kr\"amer, Jean-Christophe
Burie
- Abstract summary: An authentication model for identity documents based on forgery detection of guilloche patterns is proposed.
Experiments are conducted in order to analyze and identify the most proper parameters to achieve higher authentication performance.
- Score: 2.606834301724095
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In cases such as digital enrolment via mobile and online services, identity
document verification is critical in order to efficiently detect forgery and
therefore build user trust in the digital world. In this paper, an
authentication model for identity documents based on forgery detection of
guilloche patterns is proposed. The proposed approach is made up of two steps:
feature extraction and similarity measure between a pair of feature vectors of
identity documents. The feature extraction step involves learning the
similarity between a pair of identity documents via a convolutional neural
network (CNN) architecture and ends by extracting highly discriminative
features between them. While, the similarity measure step is applied to decide
if a given identity document is authentic or forged. In this work, these two
steps are combined together to achieve two objectives: (i) extracted features
should have good anticollision (discriminative) capabilities to distinguish
between a pair of identity documents belonging to different classes, (ii)
checking out the conformity of the guilloche pattern of a given identity
document and its similarity to the guilloche pattern of an authentic version of
the same country. Experiments are conducted in order to analyze and identify
the most proper parameters to achieve higher authentication performance. The
experimental results are performed on the MIDV-2020 dataset. The results show
the ability of the proposed approach to extract the relevant characteristics of
the processed pair of identity documents in order to model the guilloche
patterns, and thus distinguish them correctly. The implementation code and the
forged dataset are provided here (https://drive.google.com/id-FDGP-1)
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