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Enhancing the Performance of Brain-Computer Interfaces via a Spatially-Aware Framework

Electroencephalography (EEG)-based brain–computer interfaces (BCIs) provide a non-invasive pathway for communication, with the P300 speller being one of the most established paradigms. Despite its practicality, EEG signals present inherent challenges, including low signal-to-noise ratio, high dimens...

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Main Author: Eloraby, Ahmed Ayman
Format: Thesis
Published: AUC Knowledge Fountain 2026
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access_status_str Open Access
author Eloraby, Ahmed Ayman
author_browse Eloraby, Ahmed Ayman
author_facet Eloraby, Ahmed Ayman
author_sort Eloraby, Ahmed Ayman
collection Thesis
description Electroencephalography (EEG)-based brain–computer interfaces (BCIs) provide a non-invasive pathway for communication, with the P300 speller being one of the most established paradigms. Despite its practicality, EEG signals present inherent challenges, including low signal-to-noise ratio, high dimensionality, and limited spatial resolution. These characteristics complicate the extraction of discriminative spatial patterns, which are critical for accurate P300 detection and character-level decoding. This thesis addresses these challenges through the development of AttenPCA-Net, a deep learning framework that integrates spatially-aware processing with dimensionality reduction. Principal Component Analysis (PCA) is employed to reduce redundancy and noise while preserving the most informative components of the EEG signal. To further enhance spatial representation, channel-wise and spatial attention mechanisms, implemented via Squeeze-and- Excitation (SE) and spatial attention modules, are incorporated to adaptively emphasize relevant electrodes and regions, compensating for the limited spatial resolution of EEG. The architecture is extended with a temporal branch based on bidirectional gated recurrent units (GRUs), forming AttenPCA-GRU, to capture sequential dependencies across EEG samples. The proposed models were evaluated on three benchmark P300 speller datasets, including BCI Competition III Dataset II and two additional publicly available datasets. Performance was assessed using character recognition accuracy across varying trial repetitions and compared against baseline and state-of-the-art methods for each dataset. AttenPCA-Net achieved an enhancement of approximately 2% character recognition accuracy compared to state-of-the-art approaches. AttenPCA-GRU demonstrated more consistent performance across all datasets, yielding overall average improvements, most notably on the third dataset, where enhancements reached approximately 4% compared to AttenPCA-Net and 6% compared to baseline methods. Beyond algorithmic contributions, this work also addresses acquisition-related biases by adapting a modified version of the Sevo electrode; an electrode that was developed for improved performance in coarse hair conditions, using the g.tec Unicorn Hybrid Black headset. These developments were integrated into AfroBCI, a custom software platform that we designed to support real-time EEG acquisition and experimentation across multiple sites in Africa. Overall, this work demonstrates that improving BCI performance requires a holistic approach that jointly addresses signal representation, model design, and data acquisition constraints, contributing toward more robust and inclusive EEG-based BCI systems.
format Thesis
id oai:fount.aucegypt.edu:etds-3843
institution American University in Cairo (Egypt)
last_indexed 2026-06-10T12:36:04.810Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from AUC Knowledge Fountain — bepress
publishDate 2026
publishDateRange 2026
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spelling oai:fount.aucegypt.edu:etds-3843 Enhancing the Performance of Brain-Computer Interfaces via a Spatially-Aware Framework Eloraby, Ahmed Ayman Electroencephalography (EEG)-based brain–computer interfaces (BCIs) provide a non-invasive pathway for communication, with the P300 speller being one of the most established paradigms. Despite its practicality, EEG signals present inherent challenges, including low signal-to-noise ratio, high dimensionality, and limited spatial resolution. These characteristics complicate the extraction of discriminative spatial patterns, which are critical for accurate P300 detection and character-level decoding. This thesis addresses these challenges through the development of AttenPCA-Net, a deep learning framework that integrates spatially-aware processing with dimensionality reduction. Principal Component Analysis (PCA) is employed to reduce redundancy and noise while preserving the most informative components of the EEG signal. To further enhance spatial representation, channel-wise and spatial attention mechanisms, implemented via Squeeze-and- Excitation (SE) and spatial attention modules, are incorporated to adaptively emphasize relevant electrodes and regions, compensating for the limited spatial resolution of EEG. The architecture is extended with a temporal branch based on bidirectional gated recurrent units (GRUs), forming AttenPCA-GRU, to capture sequential dependencies across EEG samples. The proposed models were evaluated on three benchmark P300 speller datasets, including BCI Competition III Dataset II and two additional publicly available datasets. Performance was assessed using character recognition accuracy across varying trial repetitions and compared against baseline and state-of-the-art methods for each dataset. AttenPCA-Net achieved an enhancement of approximately 2% character recognition accuracy compared to state-of-the-art approaches. AttenPCA-GRU demonstrated more consistent performance across all datasets, yielding overall average improvements, most notably on the third dataset, where enhancements reached approximately 4% compared to AttenPCA-Net and 6% compared to baseline methods. Beyond algorithmic contributions, this work also addresses acquisition-related biases by adapting a modified version of the Sevo electrode; an electrode that was developed for improved performance in coarse hair conditions, using the g.tec Unicorn Hybrid Black headset. These developments were integrated into AfroBCI, a custom software platform that we designed to support real-time EEG acquisition and experimentation across multiple sites in Africa. Overall, this work demonstrates that improving BCI performance requires a holistic approach that jointly addresses signal representation, model design, and data acquisition constraints, contributing toward more robust and inclusive EEG-based BCI systems. 2026-06-11T07:00:00Z thesis application/pdf https://fount.aucegypt.edu/etds/2780 https://fount.aucegypt.edu/context/etds/article/3843/viewcontent/ahmed_ayman_eloraby_thesis.pdf Theses and Dissertations AUC Knowledge Fountain Brain Computer Interface (BCI) P300 Speller Feature Representation Electroencephalogram (EEG) Principal Component Analysis (PCA) Deep Learning Spatiotemporal Characteristics Gated Recurrent Unit (GRU) Attention and Biases in EEG Bioelectrical and Neuroengineering
spellingShingle Brain Computer Interface (BCI)
P300 Speller
Feature Representation
Electroencephalogram (EEG)
Principal Component Analysis (PCA)
Deep Learning
Spatiotemporal Characteristics
Gated Recurrent Unit (GRU)
Attention
and Biases in EEG
Bioelectrical and Neuroengineering
Eloraby, Ahmed Ayman
Enhancing the Performance of Brain-Computer Interfaces via a Spatially-Aware Framework
title Enhancing the Performance of Brain-Computer Interfaces via a Spatially-Aware Framework
title_full Enhancing the Performance of Brain-Computer Interfaces via a Spatially-Aware Framework
title_fullStr Enhancing the Performance of Brain-Computer Interfaces via a Spatially-Aware Framework
title_full_unstemmed Enhancing the Performance of Brain-Computer Interfaces via a Spatially-Aware Framework
title_short Enhancing the Performance of Brain-Computer Interfaces via a Spatially-Aware Framework
title_sort enhancing the performance of brain computer interfaces via a spatially aware framework
topic Brain Computer Interface (BCI)
P300 Speller
Feature Representation
Electroencephalogram (EEG)
Principal Component Analysis (PCA)
Deep Learning
Spatiotemporal Characteristics
Gated Recurrent Unit (GRU)
Attention
and Biases in EEG
Bioelectrical and Neuroengineering
url https://fount.aucegypt.edu/etds/2780
https://fount.aucegypt.edu/context/etds/article/3843/viewcontent/ahmed_ayman_eloraby_thesis.pdf
work_keys_str_mv AT elorabyahmedayman enhancingtheperformanceofbraincomputerinterfacesviaaspatiallyawareframework