Raw and processed data for "Bayesian Learning from Multi-Way EEG Feedback for Robot Navigation and Target Identification"
收藏DataCite Commons2024-02-14 更新2024-07-13 收录
下载链接:
https://orda.shef.ac.uk/articles/dataset/Raw_and_processed_data_for_Bayesian_Learning_from_Multi-Way_EEG_Feedback_for_Robot_Navigation_and_Target_Identification_/23556273
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资源简介:
The contents of each file is described in README.txt and below:
<em>easy.zip</em> - Raw EEG recordings.
<em>concatNumStepsToCTI</em> - Concatenated data showing all numbers of steps to Correct Target Identifications.
<em>multiwayMultifiltClassified_CV_p*.mat - </em>Classified movement action data, including pre-processed training and test sets, cross-validation contingency tables, test data contingency tables, and feature selection information.
<em>GClassified_CV_p*.mat</em> - Classified target identification action data, including pre-processed training and test sets, cross-validation contingency tables, test data contingency tables, and feature selection information.
<em>full_MTCI_MNS_tables.mat -</em>Tables containing average PTCI and MNS results for each participant at each stringency level of the Bayesian Inference strategy.
<em>rand_react_B0pt1_B0pt9_tables.mat - </em>Tables containing average PTCI and MNS results for the random strategy, and each participant with the react strategy and Bayesian Inference at stringency of 0.1 and 0.9.
<em>stepCountData.zip - </em>Zipped directory containing step counts for all runs of all participants on small and large grids using all strategies.
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This work has been approved by the Automatic Control and Systems Engineering ethics committee, ethics reference number: 022698. This work was supported by the Engineering and Physical Sciences Research Council (EPSRC) Doctoral training partnership.
提供机构:
The University of Sheffield
创建时间:
2023-06-23



