Brain-Inspired Computing 4th International Workshop, BrainComp 2019, Cetraro, Italy, July 15-19, 2019, Revised Selected Papers /

This open access book constitutes revised selected papers from the 4th International Workshop on Brain-Inspired Computing, BrainComp 2019, held in Cetraro, Italy, in July 2019. The 11 papers presented in this volume were carefully reviewed and selected for inclusion in this book. They deal with rese...

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Bibliographic Details
Corporate Author: SpringerLink (Online service)
Other Authors: Amunts, Katrin (Editor), Grandinetti, Lucio (Editor), Lippert, Thomas (Editor), Petkov, Nicolai (Editor)
Format: Electronic eBook
Language:English
Published: Cham : Springer International Publishing : Imprint: Springer, 2021.
Edition:1st ed. 2021.
Series:Theoretical Computer Science and General Issues, 12339
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Online Access:Link to Metadata
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Table of Contents:
  • Machine Learning and Deep learning approaches in human brain mapping
  • A high-resolution model of the human entorhinal cortex in the 'BigBrain'- use case for machine learning and 3D analyses
  • Deep learning-supported cytoarchitectonic mapping of the human lateral geniculate body in the BigBrain
  • Brain modelling and simulation
  • Computational modelling of cerebellar magnetic stimulation: the effect of washout?
  • Usage and scaling of an open-source spiking multi-area model of the monkey cortex
  • Exascale compute and data infrastructures for neuroscience and applications
  • Modular supercomputing for neuroscience
  • Fenix: Distributed e-Infrastructure Services for EBRAINS
  • Independent component analysis for noise and artifact removal in three-dimensional Polarized Light Imaging
  • Exascale artificial and natural neural architectures
  • Brain-inspired algorithms for processing of visual data
  • An hybrid attention-based system for the prediction of facial attributes
  • The statistical physics of learning revisited: Typical learning curves in model scenarios
  • Emotion mining: from unimodal to multimodal approaches
  • .