Copy detection patterns (CDP) are recent technologies for protecting products from counterfeiting. However, in contrast to traditional copy fakes, deep learning-based fakes have shown to be hardly distinguishable from originals by traditional authentication systems. Systems based on classical supervised learning and digital templates assume knowledge of fake CDP at training time and cannot generalize to unseen types of fakes. Authentication based on printed copies of originals is an alternative that yields better results even for unseen fakes and simple authentication metrics but comes at the impractical cost of acquisition and storage of printed copies. In this work, to overcome these shortcomings, we design a machine learning (ML) based authentication system that only requires digital templates and printed original CDP for training, whereas authentication is based solely on digital templates, which are used to estimate original printed codes. The obtained results show that the proposed system can efficiently authenticate original and detect fake CDP by accurately locating the anomalies in the fake CDP. The empirical evaluation of the authentication system under investigation is performed on the original and ML-based fakes CDP printed on two industrial printers.
翻译:复制检测模式(CDP)是保护产品免遭假冒的最新技术。然而,与传统仿冒相比,深层次的学习假冒与传统认证系统原版几乎无法区分。基于古典监督的学习和数字模板的系统假定在培训时会了解假冒的CPDP,无法概括为无形的假冒。基于印刷版原件的认证是一种可产生更好结果的替代方法,即使对看不见的假冒和简单的认证度量度标准而言也是如此,但获取和储存印刷本的成本不切实际。在这项工作中,我们设计了一个基于机器的学习(ML)认证系统,仅要求数字模板和印刷的原版CDP用于培训,而认证仅以数字模板为基础,用于估计原始打印代码。获得的结果显示,拟议的系统能够有效地验证原版并检测假的CDP,精确定位假的CDP中的异常点。正在调查的认证系统的经验评价是在两家工业打印机上打印的原版和基于ML的伪造CDP。