Deep learning system that interprets brain signals from EEG/fMRI to control devices, predict neurological disorders, and enable brain-computer interfaces.
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Updated
Nov 7, 2025 - Python
Deep learning system that interprets brain signals from EEG/fMRI to control devices, predict neurological disorders, and enable brain-computer interfaces.
Real-time EEG analysis and audio stimulation system that detects REM sleep and uses targeted sound frequencies to induce and enhance lucid dreaming experiences.
EEG-based motor imagery classification using 7 ML models across 3 evaluation protocols. BCI Competition IV Dataset 2a (Graz). Pipeline: filtering, Bandpower, CSP, PCA, GridSearchCV. Best: Linear SVM 51.35% (4-class). FSTM Mini-Project.
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