A shallow residual neural network to predict the visual cortex response

Open Access
Authors
Publication date 27-06-2019
Event The Algonauts Challenge 2019
Number of pages 3
Publisher Amsterdam: Universiteit van Amsterdam
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Understanding how the visual cortex of the human brain really works is still an open problem for science today. A better understanding of natural intelligence could also benefit object-recognition algorithms based on convolutional neural networks. In this paper we demonstrate the asset of using a shallow residual neural network for this task. The benefit of this approach is that earlier stages of the network can be accurately trained, which allows us to add more layers at the earlier stage. With this additional layer the prediction of the visual brain activity improves from 10.4% (block 1) to 15.53% (last fully connected layer). By training the network for more than 10 epochs this improvement can become even larger.
Document type Report
Note Paper proposal submitted for Algonauts 2019 Challenge model building report.
Language English
Published at https://arxiv.org/abs/1906.11578
Other links http://algonauts.csail.mit.edu/challenge.html
Downloads
AlgonautsChallenge2019 (Submitted manuscript)
Permalink to this page
Back