假货与真货的问题:显微镜和机器学习的拯救

Ashlesh Sharma, Vidyuth Srinivasan, Vishal Kanchan, L. Subramanian
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引用次数: 24

摘要

假冒实物商品是一个全球性问题,占世界贸易的近7%。虽然有各种各样的公开技术,如全息图和专门的条形码,以及隐蔽技术,如标签和puf,但由于各种因素——可克隆性、成本或采用障碍,这些解决方案对假冒市场的影响有限。在本文中,我们引入了一种新的机制,该机制在物理对象的微观图像上使用机器学习算法来区分同一产品的正品和假冒版本。我们系统的基本原理源于这样一种理念,即正品或一类产品(对应于同一大产品线)的微观特征表现出内在的相似性,可用于将这些产品与相应的假冒产品区分开来。我们系统的关键组成部分是一个与移动设备兼容的广角显微镜设备,使用户能够轻松捕获大面积物理对象的显微图像。基于捕获的显微图像,我们展示了使用机器学习算法(ConvNets和bag of words),可以生成一个高度准确的分类引擎,用于将产品的正品版本与假冒产品分开;这一属性也适用于在市场上观察到的“超级假货”,这些假货不容易被人眼识别出来。我们描述了利用移动设备、便携式硬件和基于云的对象验证生态系统的端到端物理认证系统的设计。我们使用一个包含300万张图像的大型数据集来评估我们的系统,这些图像涉及各种物体和材料,如织物、皮革、药丸、电子产品、玩具和鞋子。分类准确率超过98%,我们展示了我们的系统如何与手机一起验证日常物品的真实性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Fake vs Real Goods Problem: Microscopy and Machine Learning to the Rescue
Counterfeiting of physical goods is a global problem amounting to nearly 7% of world trade. While there have been a variety of overt technologies like holograms and specialized barcodes and covert technologies like taggants and PUFs, these solutions have had a limited impact on the counterfeit market due to a variety of factors - clonability, cost or adoption barriers. In this paper, we introduce a new mechanism that uses machine learning algorithms on microscopic images of physical objects to distinguish between genuine and counterfeit versions of the same product. The underlying principle of our system stems from the idea that microscopic characteristics in a genuine product or a class of products (corresponding to the same larger product line), exhibit inherent similarities that can be used to distinguish these products from their corresponding counterfeit versions. A key building block for our system is a wide-angle microscopy device compatible with a mobile device that enables a user to easily capture the microscopic image of a large area of a physical object. Based on the captured microscopic images, we show that using machine learning algorithms (ConvNets and bag of words), one can generate a highly accurate classification engine for separating the genuine versions of a product from the counterfeit ones; this property also holds for "super-fake" counterfeits observed in the marketplace that are not easily discernible from the human eye. We describe the design of an end-to-end physical authentication system leveraging mobile devices, portable hardware and a cloud-based object verification ecosystem. We evaluate our system using a large dataset of 3 million images across various objects and materials such as fabrics, leather, pills, electronics, toys and shoes. The classification accuracy is more than 98% and we show how our system works with a cellphone to verify the authenticity of everyday objects.
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