复制检测模式的机器学习攻击:$1\乘以1$模式是可克隆的吗?

Roman Chaban, O. Taran, Joakim Tutt, T. Holotyak, Slavi Bonev, S. Voloshynovskiy
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引用次数: 10

摘要

如今,现代经济迫切需要可靠而廉价的保护解决方案,以防止大众市场的产品假冒。拷贝检测模式(CDP)在一些应用中被认为是这样一种解决方案。假设以最小符号尺寸$1 × 1$的工业打印机打印分辨率的最大可实现限制进行打印,CDP不能以足够的精度复制,因此是不可克隆的。在本文中,我们挑战了这一假设,并考虑了一种基于机器学习的针对CDP的复制攻击。基于两台工业打印机样品的实验结果表明,在一定的打印条件下,用于CDP认证的简单检测指标不能可靠地区分真假CDP。因此,面对当前的攻击,需要认真考虑CDP的可克隆性,寻找新的认证技术和CDP优化。
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Machine learning attack on copy detection patterns: are $1\times 1$ patterns cloneable?
Nowadays, the modern economy critically requires reliable yet cheap protection solutions against product counterfeiting for the mass market. Copy detection patterns (CDP) are considered as such a solution in several applications. It is assumed that being printed at the maximum achievable limit of a printing resolution of an industrial printer with the smallest symbol size $1\times 1$, the CDP cannot be copied with sufficient accuracy and thus are unclonable. In this paper, we challenge this hypothesis and consider a copy attack against the CDP based on machine learning. The experimental results based on samples produced on two industrial printers demonstrate that simple detection metrics used in the CDP authentication cannot reliably distinguish the original CDP from their fakes under certain printing conditions. Thus, the paper calls for a need of careful reconsideration of CDP cloneability and search for new authentication techniques and CDP optimization facing the current attack.
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