Artificial Intelligence
Post-Doctoral Fellowships
Argentina
When deep learning meets image registration
A computer vision technique inspired by the biological brain
The class of deep-learning models Dr. Enzo Ferrante aims to apply to image registration are called deep convolutional neural networks (CNNs). As the term “neural network” suggests, these computational models are inspired by biological brains and can perform complex feats of intelligence, while using little pre-processing compared to other machine learning algorithms. Still, to reduce the amount of image data necessary for training such a network, Dr. Enzo Ferrante intends to incorporate some prior-knowledge into the CNN-based image registration model. His idea is to go beyond simple visual observations and introduce context coming from prior knowledge such as anatomy.
Images can contain hidden information crucial to environmental and life danger. In this sense, accurate registration algorithms are essential in supporting Earth and medical scientists in their studies involving image aggregation and comparison. Research on diseases that remain largely mysterious, like Alzheimer for instance, could greatly benefit from the gains in terms of accuracy and computational time aimed in Dr. Enzo Ferrante’s project. Similarly, his innovative image registration methods and toolboxes will likely contribute to a better image-based understanding of Climate change and its consequences on the Earth’s surface.
Enzo
FERRANTE
Institution
Universidad Nacional del Litoral
Country
Argentina
Nationality
Argentinian
Related articles
Artificial Intelligence
AXA Chair
United Kingdom
Explainable AI for healthcare: enabling a revolution
Developing technologies that we can trust: a new paradigm for AI As these limitations have become increasingly apparent, AI experts... Read more
Thomas
LUKASIEWICZ
University of Oxford
Artificial Intelligence
Joint Research Initiative
Belgium
Fairness in AI: ending bias and discrimination
Garbage in, garbage out: how to ensure fairness-aware machine learning? When measuring fairness, a natural preliminary question to ask is... Read more
Toon
CALDERS
University of Antwerp
Artificial Intelligence
Joint Research Initiative
Belgium
Fulfilling the potential of AI: towards explainable deep learning
“In its approach of explainable AI, the project will investigate the use of instance-based explanations (explaining the model for one... Read more
David
MARTENS