Deep Learning for Image Analysis

Deep learning has achieved formidable results in the image analysis field in recent years, in many cases exceeding human performance. This success opens paths for new applications, entrepreneurship and research, while making the field very competitive.

This course aims at providing the students with the theoretical and practical basis for understanding and using deep learning for image analysis applications.

Lecturers

Fall 2021 edition: MINES ParisTech (MP1523/5)

Practical work

Link for lecturers and teaching assistants:

https://docs.google.com/document/d/1GRvg8eWZNl3X1VJRdFpv1TVZdtJTP7KvSfEE0Dxipd8/edit

Link to download practical sessions and course material:

https://cloud.mines-paristech.fr/index.php/s/hTDBU5aZjijISmd

Timetable

Date Time Classroom Teaching assistant
21/09 13h45 L-218 Tarek Zenati
28/09 13h35 L-213 Mateus Sangalli
05/10 13h45 L-118 Daniel Zyss
12/10 13h45 L-224 Valentin Penaud-Polge
20/10 9h00 L-109 Thomas Langrognet
26/10 13h45 L-109 Martin Bauw
02/11 13h45 L-109 Tristan Lazard
9/11 13h45 L-218

Winter 2020 edition: IASD Master

Invited speakers

  • Vincent Morard (General Electric) : AI for medical images: an industrial point of view
  • Bruno Figliuzzi (CMM, Mines Paris) : Segmentation d'images de rhéologie par réseaux de neurones convolutionnels
  • Sébastien Lefèvre (IRISA) : Deep Learning in Remote Sensing: Challenges and Results
  • Claire-Hélène Demarty (InterDigital) : Deep Learning for post production in movie industry
  • Camille Breuil et Cédric Meurée (aiVision): L'aide au diagnostic chez aiVision: exemple de la rétinopathie diabétique
  • Diego Tuccillo (Instituto de Astrofisica de Canarias): Deep learning applications in Astronomy
  • Martin Bauw (CMM, Mines Paris): détection d'anomalies
  • Valentin Penaud-Polge (CMM, Mines Paris): couches paramétriques

Fall 2020 edition: MINES ParisTech (MP1523/5)

Travaux pratiques

Link to download practical sessions material:

https://filesender.renater.fr/?s=download&token=5e619f45-40cd-4d42-b736-7adb973d5a3b

The following assignments will be available from:

https://tinyurl.com/y3x6andh

Winter 2019 edition: IASD Master

Teaching assistants

  • David Duque
  • Leonardo Gigli
  • Arthur Imbert
  • Tristan Lazard

Fall 2019 Edition: ATHENS MP10

Invited speakers

  • Marc Huertas (Canaries Astrophysics Institute; Observatoire de Paris)
  • Maximilian Jaritz (Valeo.ai)
  • Olivier Moindrot (Owkin)
  • Bogdan Stanciulescu (CAOR, MINES ParisTech)

Teaching assistants

  • Eric Bazan
  • David Duque
  • Leonardo Gigli
  • Arthur Imbert
  • Tristan Lazard

Fall 2018 Edition: ATHENS MP10

Invited speakers

  • Pierre Fillard (Therapixel)
  • Marc Huertas-Company (Canaries Astrophysics Institute; Observatoire de Paris)
  • Bogdan Stanciulescu (CAOR, MINES ParisTech)
  • Pauline Luc (Facebook AI Research)

Teaching assistants

  • Robin Alais
  • Joseph Boyd
  • Leonardo Gigli
  • Peter Naylor
  • Robin Alais
deep/start.txt · Last modified: 2021/10/01 11:05 by edecenciere
CC Attribution-Share Alike 4.0 International
Driven by DokuWiki Recent changes RSS feed Valid CSS Valid XHTML 1.0