CVLGOct 28, 2022

Digital twins of physical printing-imaging channel

arXiv:2210.17420v111 citationsh-index: 15
Originality Incremental advance
AI Analysis

This addresses anti-counterfeiting for secure printing applications, but it is incremental as it generalizes existing architectures.

The paper tackles modeling a printing-imaging channel using a digital twin based on an information-theoretic Turbo framework for anti-counterfeiting with copy detection patterns, demonstrating performance comparisons with state-of-the-art methods like CycleGAN.

In this paper, we address the problem of modeling a printing-imaging channel built on a machine learning approach a.k.a. digital twin for anti-counterfeiting applications based on copy detection patterns (CDP). The digital twin is formulated on an information-theoretic framework called Turbo that uses variational approximations of mutual information developed for both encoder and decoder in a two-directional information passage. The proposed model generalizes several state-of-the-art architectures such as adversarial autoencoder (AAE), CycleGAN and adversarial latent space autoencoder (ALAE). This model can be applied to any type of printing and imaging and it only requires training data consisting of digital templates or artworks that are sent to a printing device and data acquired by an imaging device. Moreover, these data can be paired, unpaired or hybrid paired-unpaired which makes the proposed architecture very flexible and scalable to many practical setups. We demonstrate the impact of various architectural factors, metrics and discriminators on the overall system performance in the task of generation/prediction of printed CDP from their digital counterparts and vice versa. We also compare the proposed system with several state-of-the-art methods used for image-to-image translation applications.

Foundations

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