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M.M. (Matthias) Brucklacher

PhD candidate
Faculteit der Natuurwetenschappen, Wiskunde en Informatica
Swammerdam Institute for Life Sciences

Bezoekadres
  • Science Park 904
  • Kamernummer: C4.104
Postadres
  • Postbus 94246
    1090 GE Amsterdam
Social media
  • Research topics

    I am using computational neural network models to study visual perception. While the models and tasks to be solved are similar to those used in Machine Learning, the learning rules are constrained to be biologically plausible. Taking inspiration from the brain, the predictive coding framework describes visual perception as a generative process, in which top-down signals in the cortex reconstruct activity patterns in earlier areas. From this basis, my research diverges into the following branches:

    1. Self-supervised learning of transformation-invariant representations: How can the brain simultaneously learn representations that are invariant to transformations (rotating, scaling, lateral shifts) AND a generative model to reconstruct partially occluded inputs from these representations?
    2. Self-supervised representation learning on complex images (Master thesis project of Robin Weiler).
    3. Implementation of predictive coding networks in dynamic, spiking neural networks (in collaboration with Kwangjun Lee).
    4. Integration of predictive motor-feedback with visual perception (in collaboration with Giovanni Pezzulo).
  • Publicaties

    2023

    This list of publications is extracted from the UvA-Current Research Information System. Questions? Ask the library or the Pure staff of your faculty / institute. Log in to Pure to edit your publications. Log in to Personal Page Publication Selection tool to manage the visibility of your publications on this list.
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