Benchmarking Vision Transformers for Image Classification in Digital Pathology
Défense de mémoire - Arioti Valentin
Date : 19/06/2023 10:15 - 19/06/2023 12:15
Lieu : Salle académique
Orateur(s) : Arioti Valentin
Organisateur(s) : Isabelle Daelman
Experts in digital pathology use artificial intelligence to help them
detect disease in images of biological tissue. Convolutional Neural Networks
(CNNs) are commonly used for this purpose. In this master thesis, we evaluate a
new architecture, Vision Transformer (ViT), by comparing them with CNNs. ViTs
have recently appeared in image recognition and have shown promising results.
We test their applicability in digital pathology by empirically comparing the
two models on a diverse set of biomedical images. The results indicate that
both models achieve similar performances, suggesting that they can both be considered
as potential choices for disease detection. These findings underline the
interest in further exploring the use of ViTs in digital pathology.
Keywords : digital pathology, vision transformer, convolutional neural network
Contact :
Isabelle Daelman
-
isabelle.daelman@unamur.be
Télecharger :
vCal