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Semantic segmentation by deep learning - MISS 2014 (12)

di Lorenzo Di Silvestro, Mauro Sodano e Agata Ventura

Prof. Antonio Criminisi (Microsoft Research, Cambridge), lecture 2




Prof. Antonio Criminisi (Microsoft Research, Cambridge, UK) was one of the speakers of Medical Imaging Summer School (Sicily, July 28-August 1, 2014), here you can find his lecture 2: "Semantic segmentation by deep learning".

Abstract. I talk about entangled decision forests and their relationship to deep learning. I also demonstrate how geodesic entangled forests have been used for the semantic segmentation of medical and non medical images.

Geodesic decision forests can be thought of as a version of structure-output learning which move the state of the art well beyond Markov random fields.

Shooting: Lorenzo Di Silvestro, Mauro Sodano
Editing and post-production: Lorenzo Di Silvestro, Agata Ventura


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