Ibrar Maha, Huang Sheng-Yuan, McCurtain Zachery, Naha Shujon, Crandall David J, Jacobson Stephen C, Skrabalak Sara E
Department of Chemistry, Indiana University, Bloomington, IN 47405, USA.
Department of Computer Science, Indiana University, Bloomington, IN 47405, USA.
Adv Funct Mater. 2024 Oct 8;34(41). doi: 10.1002/adfm.202400842. Epub 2024 Jul 10.
Counterfeit goods are pervasive, being found in products as diverse as textiles and optical media to pharmaceuticals and sensitive electronics. Here, an anti-counterfeit platform is reported in which plasmonic nanoparticles (NPs) are used to create unique image tags that can be authenticated quickly and reliably. Specifically, plasmonic NPs are assembled into periodic arrays of NP clusters by template-assisted self-assembly (TASA), where the light scattering responses from the arrays are analyzed by dark-field optical microscopy. Tag design proved modular as plasmonic NPs with different optical responses can be selected and paired with Templates with different features (e.g., well size, well shape, and number and arrangement of wells in an array), giving access to a variety of color responses and unique images. These images can be differentiated from one another and authenticated by image analysis. Authentication methods based on shallow and deep neural networks are compared, where deep neural networks authenticated TASA tags with higher accuracy. Given the ease of tag fabrication and rapid image analysis, these platforms are ideal for on-the-fly tagging and supply-chain authentication of critical goods.
假冒商品无处不在,在从纺织品、光学介质到药品和敏感电子产品等各种产品中都有发现。在此,报道了一种防伪平台,其中等离子体纳米颗粒(NPs)用于创建独特的图像标签,这些标签可以快速、可靠地进行验证。具体而言,通过模板辅助自组装(TASA)将等离子体纳米颗粒组装成纳米颗粒簇的周期性阵列,通过暗场光学显微镜分析这些阵列的光散射响应。标签设计被证明具有模块化,因为可以选择具有不同光学响应的等离子体纳米颗粒,并与具有不同特征(例如,孔尺寸、孔形状以及阵列中孔的数量和排列)的模板配对,从而获得各种颜色响应和独特图像。这些图像可以相互区分,并通过图像分析进行验证。比较了基于浅层和深层神经网络的验证方法,其中深层神经网络对TASA标签的验证准确率更高。鉴于标签制造的简便性和快速的图像分析,这些平台非常适合对关键商品进行即时标记和供应链验证。