Cognitive Systems Platforms using Open Source

  • Patrick Courtney
  • Olivier Michel
  • Angelo Cangelosi
  • Vadim Tikhanoff
  • Giorgio Metta
  • Lorenzo Natale
  • Francesco Nori
  • Serge Kernbach
Chapter

Abstract

This chapter reports to the development of the tools and methodologies that are in development within the EU, with an emphasis on the Open Source approaches with a view to performance analysis and comparison, and to provide an overview of cooperative research and especially on the use of Open platforms.

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Copyright information

© Springer Science+Business Media, LLC 2009

Authors and Affiliations

  • Patrick Courtney
    • 1
  • Olivier Michel
    • 2
  • Angelo Cangelosi
    • 3
  • Vadim Tikhanoff
    • 3
  • Giorgio Metta
    • 4
  • Lorenzo Natale
    • 5
  • Francesco Nori
    • 5
  • Serge Kernbach
    • 6
  1. 1.Perkinelmer, BeaconsfieldBeaconsfieldUK
  2. 2.Cyberbotics Ltd.LausanneSwitzerland
  3. 3.Adaptive Behaviour & Cognition Group, University of PlymouthPlymouthUK
  4. 4.Italian Institute of TechnologyUniversity of GenoaGenoaItaly
  5. 5.Italian Institute of TechnologyGenoaItaly
  6. 6.University of StuttgartStuttgartGermany

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