Please use this identifier to cite or link to this item: https://hdl.handle.net/10316/101064
Title: CodeFace: A Deep Learning Printer-Proof Steganography for Face Portraits
Authors: Shadmand, Farhad 
Medvedev, Iurii 
Gonçalves, Nuno 
Keywords: Steganography; machine-readable travel documents; deep neural network; hiding message into images
Issue Date: 2021
Serial title, monograph or event: IEEE Access
Volume: 9
Abstract: Identity Documents (IDs) containing a facial portrait constitute a prominent form of personal identi cation. Photograph substitution in of cial documents (a genuine photo replaced by a non-genuine photo) or originally fraudulent documents with an arbitrary photograph are well known attacks, but unfortunately still ef cient ways of misleading the national authorities in in-person identi cation processes. Therefore, in order to con rm that the identity document holds a validated photo, a novel face image steganography technique to encode secret messages in facial portraits and then decode these hidden messages from physically printed facial photos of Identity Documents (IDs) and Machine-Readable Travel Documents (MRTDs), is addressed in this paper. The encoded face image looks like the original image to a naked eye. Our architecture is called CodeFace. CodeFace comprises a deep neural network that learns an encoding and decoding algorithm to robustly include several types of image perturbations caused by image compression, digital transfer, printer devices, environmental lighting and digital cameras. The appearance of the encoded facial photo is preserved by minimizing the distance of the facial features between the encoded and original facial image and also through a new network architecture to improve the data restoration for small images. Extensive experiments were performed with real printed documents and smartphone cameras. The results obtained demonstrate high robustness in the decoding of hidden messages in physical polycarbonate and PVC cards, as well as the stability of the method for encoding messages up to a size of 120 bits.
URI: https://hdl.handle.net/10316/101064
ISSN: 2169-3536
DOI: 10.1109/ACCESS.2021.3132581
Rights: openAccess
Appears in Collections:I&D ISR - Artigos em Revistas Internacionais

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