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dc.contributor.advisorNahim, Nabuat Zaman
dc.contributor.advisorReza, Tanzim
dc.contributor.authorTanvir, Farhan
dc.contributor.authorRahman, Tanjilur
dc.contributor.authorKamal, S M Arfa
dc.contributor.authorHassan, Mahmudul
dc.contributor.authorNazia, Nowshin
dc.date.accessioned2024-10-01T08:47:24Z
dc.date.available2024-10-01T08:47:24Z
dc.date.copyright©2024
dc.date.issued2024-05
dc.identifier.otherID 22241051
dc.identifier.otherID 19101033
dc.identifier.otherID 22341062
dc.identifier.otherID 23341137
dc.identifier.otherID 19201093
dc.identifier.urihttp://hdl.handle.net/10361/24267
dc.descriptionThis thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2024.en_US
dc.descriptionCataloged from PDF version of thesis.
dc.descriptionIncludes bibliographical references (pages 46-48).
dc.description.abstractIn this thesis, for classification of sleep stages, we use deep learning techniques with the help of data from fMRI and EEG. The ConvLSTM models are applied for the fMRI data. The data for the EEG is worked on with the LSTM and Bidirectional LSTM. This can hence be seen as a work of optimizing the accuracy, the precision, and the generalizability of all these models with one another. The baselines for all these different types of data are built up using initial models. The LSTM baseline model has given an accuracy of 78.69% on testing for sleep staging with W (Wake), NREM-1, NREM-2, and NREM-3 using EEG data, which is highly effective with such data resolution in time. Meanwhile, the Bidirectional LSTM model performs better preprocessing for the temporal aspect and hence yields, on average, 80.60% accuracy for general classification on the same stages. This would make it a model that can capture the dynamic nature of the EEG data across these particular stages. In contrast, processed fMRI data starts with a 76.82% testing accuracy, while performance is readjusted based on the feature extraction spatial-temporal settings adopted in their ConvLSTM configurations to classify sleep stages W, NREM-1, NREM-2, and NREM-3, with special attention to the role of model configuration. These results show that functionalities of tailored deep learning play the most basic role in the high complexity domain of sleep stage classification. These findings are prerequisite for the future development of this area.en_US
dc.description.statementofresponsibilityFarhan Tanvir
dc.description.statementofresponsibilityTanjilur Rahman
dc.description.statementofresponsibilityS M Arfa Kamal
dc.description.statementofresponsibilityMahmudul Hassan
dc.description.statementofresponsibilityNowshin Nazia
dc.format.extent57 pages
dc.language.isoenen_US
dc.publisherBrac Universityen_US
dc.rightsBrac University theses are protected by copyright. They may be viewed from this source for any purpose, but reproduction or distribution in any format is prohibited without written permission.
dc.subjectfMRI dataen_US
dc.subjectDeep learningen_US
dc.subjectSleep stage detectionen_US
dc.subjectConvLSTM modelen_US
dc.subjectLSTMen_US
dc.subjectEEG dataen_US
dc.subject.lcshSignal processing--Digital techniques.
dc.subject.lcshMachine learning.
dc.subject.lcshElectroencephalography.
dc.titleDeep learning approaches to EEG and fMRI data: a comparative study for sleep stage classificationen_US
dc.typeThesisen_US
dc.contributor.departmentDepartment of Computer Science and Engineering, Brac University
dc.description.degreeB.Sc. in Computer Science


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