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- authors:
- -
- firstname: Lu
- lastname: Wang-Nöth
- affiliation: brainboost GmbH, Augsburgerstraße 4, 80337 Munich, Germany; Institute for Applied Computer Science, Bundeswehr University Munich, Werner-Heisenberg-Weg 39, 85579 Neubiberg, Germany
- id: 'ORCID:0009-0002-7443-121X'
- -
- firstname: Phillip
- lastname: Heiler
- affiliation: brainboost GmbH, Augsburgerstraße 4, 80337 Munich, Germany
- -
- firstname: Hai
- lastname: Huang
- affiliation: Institute for Applied Computer Science, Bundeswehr University Munich, Werner-Heisenberg-Weg 39, 85579 Neubiberg, Germany
- id: 'ORCID:0000-0001-8745-8142'
- -
- firstname: Daniel
- lastname: Lichtenstern
- affiliation: brainboost GmbH, Augsburgerstraße 4, 80337 Munich, Germany
- -
- firstname: Alexandra
- lastname: Reichenbach
- affiliation: Center for Machine Learning, Heilbronn University, Max-Planck-Str. 39, 74081 Heilbronn, Germany
- id: 'ORCID:0000-0003-4199-3005'
- -
- firstname: Luis
- lastname: Flacke
- affiliation: brainboost GmbH, Augsburgerstraße 4, 80337 Munich, Germany
- -
- firstname: Linus
- lastname: Maisch
- affiliation: brainboost GmbH, Augsburgerstraße 4, 80337 Munich, Germany
- -
- firstname: Helmut
- lastname: Mayer
- affiliation: Institute for Applied Computer Science, Bundeswehr University Munich, Werner-Heisenberg-Weg 39, 85579 Neubiberg, Germany
- id: 'ORCID:0000-0002-9439-2695'
-
-
- title: 'How Many Data are Enough? Optimization of Data Collection for Artifact Detection in EEG Recordings'
- description: "
- This dataset, used for EMG artifact detection in EEG recordings, contains both artifact-contaminated
- signals and resting-state eyes-open (EO) signals. It includes 932 numpy files of EEG recordings from seven subjects,
- consisting of 664 artifact-containing epochs and 268 EO epochs.\n Each subject (identified by a subjectID ranging
- from 5 to 11; note that subjects 1 to 4 are not included in this dataset) participated in seven isometric contraction
- artifact tasks, each lasting 5 seconds and repeated 10 times, as well as five continuous movement tasks, each lasting
- 10 seconds and repeated 5 times. This results in 95 artifact-containing epochs per subject, with the exception of
- subject 7, who had one less repetition for the \"kh_a\" artifact task. \n
- Additionally, each subject provided EO recordings as well, which were segmented into alternating 10-second and
- 5-second epochs without overlap. On average, each subject contributed 38 ± 7 EO epochs. \n
- Epochs were extracted from the original EDF files for each subject. All subjects, except subject 5, had one EDF
- file containing all the necessary epochs. For subject 5, the epochs were spread across two EDF files. Each numpy
- file represents a single epoch.\n
- "
- keywords:
- - Neuroscience
- - EEG
- - EMG
- - Artifact Detection
- - Data Collection Optimization
- license:
- name: 'Creative Commons CC0 1.0 Public Domain Dedication'
- url: 'https://creativecommons.org/publicdomain/zero/1.0/'
- funding:
- - 'Federal Ministry for Economic Affairs and Climate Action of Germany, ZIM KK5211501BM0'
- references:
- -
- id: 'doi:tba'
- reftype: IsSupplementTo
- citation: Lu Wang-Nöth, Philipp Heiler, Hai Huang, Daniel Lichtenstern, Alexandra Reichenbach, Luis Flacke, Linus Maisch, Helmut Mayer: How Many Data are Enough? Optimization of Data Collection for Artifact Detection in EEG Recordings. Journal of Neural Engineering. To be submitted.
- resourcetype: Dataset
- templateversion: 1.2
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