Dataset for article entitled "An empirical evaluation of methodologies used for emotion recognition via EEG signals"

The data is split into two parts according to the two experiments described within the article. The dataset includes movies and python codes for classifying emotions from experiment 1, and EEG and ERP measurements from experiment 2 along with associated code for analyzing those data.

Experiment 1 tests the validity of the SEED dataset collated by Zheng, Dong, & Lu (2014) and, subsequently, our own stimuli. The objective was to test whether previous literature using such datasets as the aformentioned dataset by Zheng et al. is purportedly classifying between emotions based on emotion-related signals of interest and/or non-emotional ‘noise’.

Experiment 2 used stimuli that have been well-validated within the psychological literature as reliably evoking specific embodiments of emotions within the viewer, namely the NimStim face and ADFES-BIV datasets with the objective of classifying a person's emotional status using EEG.

All data was processed and analyses run in MATLAB or Python. All datasets used are included within the folders accompanied by the MATLAB or Python scripts for collating separable matrices and running the action.

Keywords:
EEG, emotion, classification, affect, methods
Subjects:
Mathematical sciences
Psychology

Cite this dataset as:
Hinvest, N., Ashwin, C., Carter, F., Hook, J., Smith, L., Stothart, G., 2022. Dataset for article entitled "An empirical evaluation of methodologies used for emotion recognition via EEG signals". Bath: University of Bath Research Data Archive. Available from: https://doi.org/10.15125/BATH-00899.

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Data

Shared Brain Data.zip
application/zip (1GB)
Creative Commons: Attribution 4.0

The dataset includes movies and python codes for classifying emotions from experiment 1, and EEG and ERP measurements from experiment 2 along with associated code for analyzing those data

Creators

Neal Hinvest
University of Bath

Chris Ashwin
University of Bath

Felix Carter
University of Bath

James Hook
University of Bath

Contributors

University of Bath
Rights Holder

Documentation

Technical details and requirements:

Running the scripts requires MATLAB and Python 3 (with packages imageio, matplotlib, myknn, NumPy, pylab, SciPy, sklearn).

Documentation Files

A Guide to the Datasets.docx
application/vnd.openxmlformats-officedocument.wordprocessingml.document (15kB)
Creative Commons: Attribution 4.0

Funders

Publication details

Publication date: 30 January 2022
by: University of Bath

Version: 1

DOI: https://doi.org/10.15125/BATH-00899

URL for this record: https://researchdata.bath.ac.uk/id/eprint/899

Related papers and books

Hinvest, N. S., Ashwin, C., Carter, F., Hook, J., Smith, L. G.E., and Stothart, G., 2022. An Empirical Evaluation of Methodologies Used for Emotion Recognition via EEG Signals. Social Neuroscience, 17(1), 1-12. Available from: https://doi.org/10.1080/17470919.2022.2029558.

Contact information

Please contact the Research Data Service in the first instance for all matters concerning this item.

Contact person: Neal Hinvest

Departments:

Faculty of Humanities & Social Sciences
Psychology

Faculty of Science
Mathematical Sciences