ColinConwell / DeepNSDLinks
Code for the deep neural network modeling of a large-scale fMRI dataset.
☆27Updated 4 months ago
Alternatives and similar repositories for DeepNSD
Users that are interested in DeepNSD are comparing it to the libraries listed below
Sorting:
- Code and analysis of the NSD large scale fMRI dataset☆30Updated last year
- Feature extraction, dimensionality reduction, model benchmarking.☆33Updated 11 months ago
- Code related to analyzing the Natural Scenes Dataset☆44Updated 9 months ago
- ☆17Updated 5 years ago
- Voxelwise Encoding Model tutorials from the Gallant lab.☆83Updated 4 months ago
- ConvRNN Model Zoo: ImageNet pre-trained convolutional recurrent neural networks☆33Updated last year
- Code from paper "Natural language supervision with a large and diverse dataset builds better models of human high-level visual cortex"☆22Updated last year
- Code related to the Natural Scenes Dataset data paper☆64Updated 5 months ago
- ☆84Updated last week
- Starter code for the BOLDMoments fMRI video dataset☆16Updated last year
- THINGS-data: A multimodal collection of large-scale datasets for investigating object representations in brain and behavior☆51Updated last year
- Code and analysis for the paper: The feature-weighted receptive field: an interpretable encoding model for complex feature spaces☆12Updated 7 years ago
- Data and code for the Algonauts Project 2025 challenge.☆55Updated last month
- python package to access the data of the NSD (natural scenes dataset) fMRI project☆48Updated 9 months ago
- Python library for Representational Similarity Analysis☆216Updated 3 weeks ago
- A toolbox for accurate single-trial estimates in fMRI time-series data☆124Updated last month
- Trained encoding models to generate in silico neural responses for arbitrary stimuli.☆28Updated last week
- Code accompanying data release of natural language listening fMRI data (LeBel et al.)☆64Updated last year
- Recurrent convolutional neural networks for object recognition☆18Updated 4 years ago
- Code for Neural Population Control