Skip to content

Notebooks and code relating to "Generative feedback explains distinct brain activity codes for seen and mental images"

Notifications You must be signed in to change notification settings

styvesg/imagery-master

Repository files navigation

Generative feedback explains distinct brain activity codes for seen and mental images

Notebooks and code

gabor_fwrf_model_training

A notebook to train the model parameters with k-fold validation for vision and imagery components of the experiment.

Input:

  • Stimuli.h5py
  • Stimuli_metadata.pkl
  • Voxels.h5py
  • Voxels_metadata.pkl

Produces a model parameter file:

  • fwrf_{subject}_{timestamp}_data.pkl

linear_brain_model

Create a linear brain model from a set of structural prescriptions and perform vision and imagery-hypothetized inference from different area and explore its effects.

Produces:

  • Figures

About

Notebooks and code relating to "Generative feedback explains distinct brain activity codes for seen and mental images"

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published