Deep learning for classification of noisy QR codes
Leygonie, Rebecca, Lobry, Sylvain, ), null, (LIPADE), Laurent Wendling
–arXiv.org Artificial Intelligence
We wish to define the limits of a classical classification model based on deep learning when applied to abstract images, which do not represent visually identifiable objects.QR codes (Quick Response codes) fall into this category of abstract images: one bit corresponding to one encoded character, QR codes were not designed to be decoded manually. To understand the limitations of a deep learning-based model for abstract image classification, we train an image classification model on QR codes generated from information obtained when reading a health pass. We compare a classification model with a classical (deterministic) decoding method in the presence of noise. This study allows us to conclude that a model based on deep learning can be relevant for the understanding of abstract images.
arXiv.org Artificial Intelligence
Jul-20-2023