Inicio  /  Algorithms  /  Vol: 16 Par: 3 (2023)  /  Artículo
ARTÍCULO
TITULO

Implementing Deep Convolutional Neural Networks for QR Code-Based Printed Source Identification

Min-Jen Tsai    
Ya-Chu Lee and Te-Ming Chen    

Resumen

QR codes (short for Quick Response codes) were originally developed for use in the automotive industry to track factory inventories and logistics, but their popularity has expanded significantly in the past few years due to the widespread applications of smartphones and mobile phone cameras. QR codes can be used for a variety of purposes, including tracking inventory, advertising, electronic ticketing, and mobile payments. Although they are convenient and widely used to store and share information, their accessibility also means they might be forged easily. Digital forensics can be used to recognize direct links of printed documents, including QR codes, which is important for the investigation of forged documents and the prosecution of forgers. The process involves using optical mechanisms to identify the relationship between source printers and the duplicates. Techniques regarding computer vision and machine learning, such as convolutional neural networks (CNNs), can be implemented to study and summarize statistical features in order to improve identification accuracy. This study implemented AlexNet, DenseNet201, GoogleNet, MobileNetv2, ResNet, VGG16, and other Pretrained CNN models for evaluating their abilities to predict the source printer of QR codes with a high level of accuracy. Among them, the customized CNN model demonstrated better results in identifying printed sources of grayscale and color QR codes with less computational power and training time.

 Artículos similares

       
 
Suping Wang, Ligu Zhu, Lei Shi, Hao Mo and Songfu Tan    
Cross-modal retrieval aims to elucidate information fusion, imitate human learning, and advance the field. Although previous reviews have primarily focused on binary and real-value coding methods, there is a scarcity of techniques grounded in deep repres... ver más
Revista: Applied Sciences

 
Sepideh Kilani, Seyedeh Nadia Aghili and Mircea Hulea    
A new approach is introduced to address the subject dependency problem in P300-based brain-computer interfaces (BCI) by using transfer learning. The occurrence of P300, an event-related potential, is primarily associated with changes in natural neuron ac... ver más
Revista: Applied Sciences

 
Dongbeom Kim, Hyemin Kim and Chulmin Jun    
The growing concerns over road safety and the increasing popularity of two-wheeled vehicles highlight the need to address aggressive driving behaviors in this context. Understanding and detecting such behaviors can significantly contribute to rider safet... ver más
Revista: Applied Sciences

 
Vasily Kostyumov     Pág. 11 - 20
Deep learning has received a lot of attention from the scientific community in recent years due to excellent results in various areas of tasks, including computer vision. For example, in the problem of image classification, some authors even announced th... ver más

 
Ali Salimian, Evan Haine, Cova Pardo-Sanchez, Abul Hasnath and Hari Upadhyaya    
The spectral emission data from the plasma glow of various sputtering targets containing indium oxide, zinc oxide, and tin oxide were obtained. The plasma was generated at various power and chamber pressures. These spectral data were then converted into ... ver más
Revista: Coatings