metadata
pretty_name: Learning from label proportions for a visual matrix speller (ERP)
license: cc-by-4.0
tags:
- eeg
- neuroscience
- eegdash
- brain-computer-interface
- pytorch
- visual
- attention
size_categories:
- n<1K
task_categories:
- other
Learning from label proportions for a visual matrix speller (ERP)
Dataset ID: nm000199
Hubner2017
Canonical aliases: Huebner2017
At a glance: EEG · Visual attention · healthy · 13 subjects · 342 recordings · CC-BY-4.0
Load this dataset
This repo is a pointer. The raw EEG data lives at its canonical source (OpenNeuro / NEMAR); EEGDash streams it on demand and returns a PyTorch / braindecode dataset.
# pip install eegdash
from eegdash import EEGDashDataset
ds = EEGDashDataset(dataset="nm000199", cache_dir="./cache")
print(len(ds), "recordings")
You can also load it by canonical alias — these are registered classes in eegdash.dataset:
from eegdash.dataset import Huebner2017
ds = Huebner2017(cache_dir="./cache")
If the dataset has been mirrored to the HF Hub in braindecode's Zarr layout, you can also pull it directly:
from braindecode.datasets import BaseConcatDataset
ds = BaseConcatDataset.pull_from_hub("EEGDash/nm000199")
Dataset metadata
| Subjects | 13 |
| Recordings | 342 |
| Tasks (count) | 1 |
| Channels | 31 (×342) |
| Sampling rate (Hz) | 1000 (×342) |
| Total duration (h) | 16.4 |
| Size on disk | 5.1 GB |
| Recording type | EEG |
| Experimental modality | Visual |
| Paradigm type | Attention |
| Population | Healthy |
| Source | nemar |
| License | CC-BY-4.0 |
Links
- NEMAR: nm000199
- Browse 700+ datasets: EEGDash catalog
- Docs: https://eegdash.org
- Code: https://github.com/eegdash/EEGDash
Auto-generated from dataset_summary.csv and the EEGDash API. Do not edit this file by hand — update the upstream source and re-run scripts/push_metadata_stubs.py.