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Exploring adversarial robustness of JPEG AI: methodology, comparison and new methods

18 November 2024
Egor Kovalev
Georgii Bychkov
Khaled Abud
A. Gushchin
Anna Chistyakova
Sergey Lavrushkin
D. Vatolin
Anastasia Antsiferova
    AAML
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Abstract

Adversarial robustness of neural networks is an increasingly important area of research, combining studies on computer vision models, large language models (LLMs), and others. With the release of JPEG AI - the first standard for end-to-end neural image compression (NIC) methods - the question of its robustness has become critically significant. JPEG AI is among the first international, real-world applications of neural-network-based models to be embedded in consumer devices. However, research on NIC robustness has been limited to open-source codecs and a narrow range of attacks. This paper proposes a new methodology for measuring NIC robustness to adversarial attacks. We present the first large-scale evaluation of JPEG AI's robustness, comparing it with other NIC models. Our evaluation results and code are publicly available online (link is hidden for a blind review).

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