Hybrid AI for knowledge representation and model-based medical image understanding

Image understanding benefits from the modeling of knowledge about both the scene observed and the objects it contains as well as their relationships. Prof. Isabelle Bloch shows in her talk the contribution of hybrid artificial intelligence, combining different types of formalisms and methods, and combining knowledge with data. Knowledge representation may rely on symbolic and qualitative approaches, as well as semi-qualitative ones to account for their imprecision or vagueness. Structural information can be modeled in several formalisms, such as graphs, ontologies, logical knowledge bases, or neural networks, on which reasoning will be based. The problem of image understanding is then expressed as a problem of spatial reasoning. These approaches will be illustrated with examples in medical imaging, illustrating the usefulness of combining several approaches.

Tuesday, 06-08-2021, 05.00 p.m. – 06.00 p.m., virtual event

More details at: http://www.i-aida.org/ai-lectures/.

This is an event of I-AIDA – International Artificial Intelligence Doctoral Academy.