A Conversational Brain-Artificial Intelligence Interface
收藏Zenodo2025-06-05 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.15599286
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资源简介:
Dataset for the paper "A Conversational Brain-Artificial Intelligence Interface". (arXiv: https://arxiv.org/abs/2402.15011)
Five subjects were recorded: subject1, subject2, subject3, subject4, and subject5.
For each subject, the following files are provided:
subjectX.eeg, subjectX.vhdr, subjectX.vmrk
the raw EEG recordings of the experiment
subjectX_info.json, subjectX_trials.json
logs of events throughout the experiment
subjectX_model.keras
the model used during the training of the classifier
subjectX_model_refitted.keras
the classifiers refitted on all data recorded during the training, used during the experiment to decode cVEP selections
subjectX_train_test_data.zip
a zip, containing the exact windows of data used to train and test the cVEP classifier
To analyze the raw data, information from the logs needs to be integrated, as it contains the selections of the subject.
The following triggers/markers are used in the EEG data:
experiment_start
100
rs_open_start
200
rs_open_end
201
rs_closed_start
210
rs_closed_end
211
calibration_block_start
110
calibration_block_end
111
training_start
120
new_block_train
129
training_end
121
evaluation_start
130
new_block_eval
139
evaluation_end
131
accucary_eval_block_start
140
accucary_eval_block_end
141
experiment_end
101
trial_start
1
rec_audio_start
2
rec_audio_end
3
stim_start
4
stim_end
5
stim_new_rep
6
audio_start
7
audio_end
8
trial_end
9
The most important markers for analysis are stim_start and stim_end, as these denote the start and end of the cVEP flashing.
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Zenodo创建时间:
2025-06-05



