Title of article :
Exploring Deep Learning and Transfer Learning for Colonic Polyp Classification
Author/Authors :
Ribeiro, Eduardo Department of Computer Sciences - University of Salzburg - Salzburg, Austria , Uhl, Andreas Department of Computer Sciences - University of Salzburg - Salzburg, Austria , Wimmer, Georg Department of Computer Sciences - University of Salzburg - Salzburg, Austria , Häfner, Michael St. Elisabeth Hospital - Vienna, Austria
Abstract :
Recently, Deep Learning, especially through Convolutional Neural Networks (CNNs) has been widely used to enable the extraction
of highly representative features. This is done among the network layers by filtering, selecting, and using these features in the last
fully connected layers for pattern classification. However, CNN training for automated endoscopic image classification still provides
a challenge due to the lack of large and publicly available annotated databases. In this work we explore Deep Learning for the automated classification of colonic polyps using different configurations for training CNNs from scratch (or full training) and distinct
architectures of pretrained CNNs tested on 8-HD-endoscopic image databases acquired using different modalities. We compare our
results with some commonly used features for colonic polyp classification and the good results suggest that features learned by CNNs
trained from scratch and the “off-the-shelf” CNNs features can be highly relevant for automated classification of colonic polyps.
Moreover, we also show that the combination of classical features and “off-the-shelf” CNNs features can be a good approach to
further improve the results.
Keywords :
Classification , CNN , 8-HD-endoscopic , full training
Journal title :
Computational and Mathematical Methods in Medicine