Effectively Learning Moiré QR Code Decryption from Simulated Data

Yu Lu, Hao Pan, Feitong Tan, Yi-Chao Chen, Jiadi Yu, Jinghai He, Guangtao Xue
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Abstract

Moiré QR Code is a secure encrypted QR code system that can protect the user’s QR code displayed on the screen from being accessed by attackers. However, conventional decryption methods based on image processing techniques suffer from intensive computation and significant decryption latency in practical mobile applications. In this work, we propose a deep learning-based Moiré QR code decryption framework and achieve an excellent decryption performance. Considering the sensitivity of the Moiré phenomenon, collecting training data in the real world is extremely labor and material intensive. To overcome this issue, we develop a physical screen-imaging Moiré simulation methodology to generate a synthetic dataset that covers the entire Moiré-visible area. Extensive experiments show that the proposed decryption network can achieve a low decryption latency (0.02 seconds) and a high decryption rate (98.8%), compared with the previous decryption method with decryption latency (5.4 seconds) and decryption rate (98.6%).
从模拟数据中有效学习moir二维码解密
moir二维码是一种安全的加密二维码系统,可以保护用户在屏幕上显示的二维码不被攻击者访问。然而,传统的基于图像处理技术的解密方法在实际的移动应用中存在计算量大、解密延迟大的问题。在这项工作中,我们提出了一个基于深度学习的moir QR码解密框架,并取得了出色的解密性能。考虑到moir现象的敏感性,在现实世界中收集训练数据是非常劳动和材料密集的。为了克服这个问题,我们开发了一种物理屏幕成像moir模拟方法来生成覆盖整个moir可见区域的合成数据集。大量实验表明,与之前解密延迟(5.4秒)和解密率(98.6%)的解密方法相比,本文提出的解密网络具有较低的解密延迟(0.02秒)和较高的解密率(98.8%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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