Affiliation:
1. Department of Manufacturing and Automation Technology, Faculty of Technology, Technical University in Zvolen, Masarykova 24, 960 01 Zvolen, Slovakia
Abstract
Artificial neural networks can solve various tasks in computer vision, such as image classification, object detection, and general recognition. Our comparative study deals with four types of artificial neural networks—multilayer perceptrons, probabilistic neural networks, radial basis function neural networks, and convolutional neural networks—and investigates their ability to classify 2D matrix codes (Data Matrix codes, QR codes, and Aztec codes) as well as their rotation. The paper presents the basic building blocks of these artificial neural networks and their architecture and compares the classification accuracy of 2D matrix codes under different configurations of these neural networks. A dataset of 3000 synthetic code samples was used to train and test the neural networks. When the neural networks were trained on the full dataset, the convolutional neural network showed its superiority, followed by the RBF neural network and the multilayer perceptron.
Subject
Electrical and Electronic Engineering,Computer Graphics and Computer-Aided Design,Computer Vision and Pattern Recognition,Radiology, Nuclear Medicine and imaging
Reference32 articles.
1. Karrach, L., and Pivarčiová, E. (2022). Location and Recognition of Data Matrix and QR Codes in Images, RAM-Verlag.
2. Karrach, L., Pivarčiová, E., and Božek, P. (2020). Identification of QR Code Perspective Distortion Based on Edge Directions and Edge Projections Analysis. J. Imaging, 6.
3. Improved QR Code Localization Using Boosted Cascade of Weak Classifiers;Acta Cybern.,2015
4. 2D QR Barcode Recognition Using Texture Features and Neural Network;Gaur;Int. J. Res. Advent Technol.,2014
5. Grosz, T., Bodnar, P., Toth, L., and Nyul, L.G. (2014, January 21–24). QR code localization using deep neural networks. Proceedings of the 2014 IEEE International Workshop on Machine Learning for Signal Processing (MLSP), Reims, France.
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