{"success":true,"database":"eegdash","data":{"_id":"69de6d29897a7725c670234f","dataset_id":"nm000113","associated_paper_doi":null,"authors":["Seong-Whan Lee","Klaus-Robert Müller","José del R. Millán"],"bids_version":"1.7.0","canonical_name":null,"contact_info":null,"contributing_labs":null,"data_processed":false,"dataset_doi":"10.82901/nemar.nm000113","datatypes":["eeg"],"demographics":{"subjects_count":15,"ages":[],"age_min":null,"age_max":null,"age_mean":null,"species":null,"sex_distribution":null,"handedness_distribution":null},"experimental_modalities":null,"external_links":{"source_url":"https://nemar.org/dataexplorer/detail/nm000113","osf_url":null,"github_url":null,"paper_url":null},"funding":[],"ingestion_fingerprint":"60e0fdcc9e0bb5e40003801c32491bdc9f12a0b54cad2d228c3a112b93235b8c","license":"CC-BY-4.0","n_contributing_labs":null,"name":"2020 BCI competition, track 3","readme":"[![DOI](https://img.shields.io/badge/DOI-10.82901%2Fnemar.nm000113-blue)](https://doi.org/10.82901/nemar.nm000113)\n# 2020 BCI competition, track 3\n## Introduction\nThe 2020 BCI Competition Track 3 dataset contains EEG recordings from participants performing imagined speech tasks. This dataset was designed for brain-computer interface research focused on decoding imagined speech from brain signals. The dataset includes recordings from 15 subjects performing five different imagined speech commands: \"Hello\", \"Help me\", \"Stop\", \"Thank you\", and \"Yes\". The data is divided into training, validation, and test sets to facilitate machine learning approaches to imagined speech classification.\n## Overview of the experiment\nParticipants performed imagined speech tasks where they were instructed to mentally articulate five different phrases without producing any audible speech or overt mouth movements. The five imagined speech commands were: \"Hello\", \"Help me\", \"Stop\", \"Thank you\", and \"Yes\". EEG signals were recorded during these mental articulation tasks. The dataset is split into three sets: Training Set (run-00), Validation Set (run-01), and Test Set (run-02). Each recording session contains multiple trials of imagined speech, with each trial corresponding to one of the five command categories. The EEG data was recorded using a multi-channel EEG system, and the exact number of channels and their montage are preserved in the BIDS format.\n## Description of the preprocessing if any\nThe original MATLAB (.mat) files from the BCI Competition have been converted to BIDS-compliant EDF format. For training and validation sets, the data was stored in structured MATLAB arrays with fields for EEG data ('x'), labels ('y'), sampling frequency ('fs'), and channel labels ('clab'). For the test set, the data was stored in HDF5 format and labels were extracted from the Track3_Answer Sheet_Test.xlsx file. The EEG data has been scaled from the original units to Volts (multiplied by 1e-6). The epoched data structure from the original dataset has been concatenated into continuous recordings for BIDS compliance, with annotations marking the onset and duration of each imagined speech trial. Channel names and montage information from the original 'mnt' (montage) structure have been preserved in the BIDS format.\n## Description of the event values if any\nThe events.tsv files contain annotations for each imagined speech trial. Each event has:\n- onset: Time in seconds from the beginning of the recording when the imagined speech trial begins\n- duration: Duration of the trial in seconds (calculated as the number of samples in the epoch divided by the sampling frequency)\n- value: The imagined speech command label, one of: \"Hello\", \"Help me\", \"Stop\", \"Thank you\", or \"Yes\"\n- trial_type: Corresponds to the value field\nThese annotations enable temporal segmentation of the continuous EEG data by imagined speech command type. The labels for the training and validation sets were extracted from the 'y' field in the original MATLAB structures (one-hot encoded vectors converted to class indices). For the test set, labels were obtained from the Track3_Answer Sheet_Test.xlsx file provided with the competition data.\n## Citation\nWhen using this dataset, please cite:\n1. The 2020 BCI Competition Track 3: https://osf.io/pq7vb/overview\n2. Original competition organizers and data collectors (please refer to the competition website for complete citation information)\n**Data curators:**\nPierre Guetschel (BIDS conversion)\nCompetition co-chairs: Seong-Whan Lee, Klaus-Robert Müller, José del R. Millán\n---\n## Automatic report\n*Report automatically generated by `mne_bids.make_report()`.*\n>  The 2020 BCI competition, track 3 dataset was created by Seong-Whan Lee, Klaus-\nRobert Müller, and José del R. Millán and conforms to BIDS version 1.7.0. This\nreport was generated with MNE-BIDS (https://doi.org/10.21105/joss.01896). The\ndataset consists of 15 participants (sex were all unknown; handedness were all\nunknown; ages all unknown) . Data was recorded using an EEG system sampled at\n256.0 Hz with line noise at n/a Hz. There were 45 scans in total. Recording\ndurations ranged from 155.27 to 931.64 seconds (mean = 414.06, std = 365.98),\nfor a total of 18632.64 seconds of data recorded over all scans. For each\ndataset, there were on average 64.0 (std = 0.0) recording channels per scan, out\nof which 64.0 (std = 0.0) were used in analysis (0.0 +/- 0.0 were removed from\nanalysis).","recording_modality":["eeg"],"senior_author":null,"sessions":[],"size_bytes":613843378,"source":"nemar","storage":{"backend":"nemar","base":"s3://nemar/nm000113","raw_key":"dataset_description.json","dep_keys":["README.md","participants.tsv"]},"study_design":null,"study_domain":null,"tasks":["imaginedSpeech"],"timestamps":{"digested_at":"2026-04-30T14:08:33.127889+00:00","dataset_created_at":null,"dataset_modified_at":"2026-03-14T13:40:51Z"},"total_files":45,"author_year":"Lee2020","name_source":"canonical","nchans_counts":[{"val":64,"count":45}],"sfreq_counts":[{"val":256.0,"count":45}],"computed_title":"2020 BCI competition, track 3","stats_computed_at":"2026-05-01T13:49:34.660236+00:00","total_duration_s":18632.63671875}}