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nm000323
Lee2019-ERP
nemar
https://openneuro.org/datasets/nm000323
10.1093/gigascience/giz002
GPL-3.0
{ "library": "eegdash", "class": "EEGDashDataset", "kwargs": { "dataset": "nm000323" } }
https://huggingface.co/spaces/EEGDash/catalog
huggingface-space/scripts/push_metadata_stubs.py

Lee2019-ERP

Dataset ID: nm000323

Lee2019_ERP

Canonical aliases: OpenBMI_ERP · OpenBMI_P300

At a glance: EEG · Visual attention · healthy · 54 subjects · 216 recordings · GPL-3.0

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="nm000323", 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 OpenBMI_ERP
ds = OpenBMI_ERP(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/nm000323")

Dataset metadata

Subjects 54
Recordings 216
Tasks (count) 1
Channels 66 (×216)
Sampling rate (Hz) 1000 (×216)
Total duration (h) 58.1
Size on disk 38.6 GB
Recording type EEG
Experimental modality Visual
Paradigm type Attention
Population Healthy
Source nemar
License GPL-3.0

Links


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.

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