School of Electronic Information, Wuhan University, Wuhan 430072, China.
School of Mathematics and Physics, Wuhan Institute of Technology, Wuhan 430079, China.
Sensors (Basel). 2020 Nov 5;20(21):6305. doi: 10.3390/s20216305.
With the rapid development of information technology and the widespread use of the Internet, QR codes are widely used in all walks of life and have a profound impact on people's work and life. However, the QR code itself is likely to be printed and forged, which will cause serious economic losses and criminal offenses. Therefore, it is of great significance to identify the printer source of QR code. A method of printer source identification for scanned QR Code image blocks based on convolutional neural network (PSINet) is proposed, which innovatively introduces a bottleneck residual block (BRB). We give a detailed theoretical discussion and experimental analysis of PSINet in terms of network input, the first convolution layer design based on residual structure, and the overall architecture of the proposed convolution neural network (CNN). Experimental results show that the proposed PSINet in this paper can obtain extremely excellent printer source identification performance, the accuracy of printer source identification of QR code on eight printers can reach 99.82%, which is not only better than LeNet and AlexNet widely used in the field of digital image forensics, but also exceeds state-of-the-art deep learning methods in the field of printer source identification.
随着信息技术的飞速发展和互联网的广泛应用,二维码广泛应用于各行各业,对人们的工作和生活产生了深远的影响。然而,二维码本身很可能被打印和伪造,这将导致严重的经济损失和刑事犯罪。因此,识别二维码的打印机来源具有重要意义。提出了一种基于卷积神经网络(PSINet)的扫描 QR 码图像块的打印机源识别方法,该方法创新性地引入了瓶颈残差块(BRB)。我们从网络输入、基于残差结构的第一层卷积设计和所提出的卷积神经网络(CNN)的整体架构等方面,对 PSINet 进行了详细的理论讨论和实验分析。实验结果表明,本文提出的 PSINet 可以获得非常优秀的打印机源识别性能,对八台打印机的 QR 码打印机源识别准确率可达 99.82%,不仅优于数字图像取证领域广泛使用的 LeNet 和 AlexNet,而且超过了打印机源识别领域的最新深度学习方法。