物理不可克隆功能
材料科学
激光器
千分尺
硫系化合物
光电子学
密钥生成
通量
无定形固体
随机性
硫系玻璃
结构着色
纳米技术
光学
计算机科学
钥匙(锁)
物理
光子晶体
化学
计算机安全
有机化学
统计
数学
操作系统
加密
作者
Paloma Martinez,Irène Papagiannouli,D. Descamps,S. Petit,Joël Marthelot,A. Lévy,B. Fabre,Jean‐Baptiste Dory,Nicolas Bernier,Jean‐Yves Raty,Pierre Noé,J. Gaudin
标识
DOI:10.1002/adma.202003032
摘要
Abstract Laser interaction with solids is routinely used for functionalizing materials' surfaces. In most cases, the generation of patterns/structures is the key feature to endow materials with specific properties like hardening, superhydrophobicity, plasmonic color‐enhancement, or dedicated functions like anti‐counterfeiting tags. A way to generate random patterns, by means of generation of wrinkles on surfaces resulting from laser melting of amorphous Ge‐based chalcogenide thin films, is presented. These patterns, similar to fingerprints, are modulations of the surface height by a few tens of nanometers with a sub‐micrometer periodicity. It is shown that the patterns' spatial frequency depends on the melted layer thickness, which can be tuned by varying the impinging laser fluence. The randomness of these patterns makes them an excellent candidate for the generation of physical unclonable function tags (PUF‐tags) for anti‐counterfeiting applications. Two specific ways are tested to identify the obtained PUF‐tag: cross‐correlation procedure or using a neural network. In both cases, it is demonstrated that the PUF‐tag can be compared to a reference image (PUF‐key) and identified with a high recognition ratio on most real application conditions. This paves the way to straightforward non‐deterministic PUF‐tag generation dedicated to small sensitive parts such as, for example, electronic devices/components, jewelry, or watchmak.
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