Tiny ML in Microcontroller to Classify EEG Signal into Three States

Postgraduate Thesis uoadl:3232254 51 Read counter

Unit:
Κατεύθυνση Smart Telecom and Sensing Networks
(SMARTNET)

Πληροφορική
Deposit date:
2022-09-28
Year:
2022
Author:
Pham-Trong Thuy
Supervisors info:
Van-Tam Nguyen
Head of the COMELEC department - Faculty Co-Founder of Paris AIoT
Télécom Paris - Institut Polytechnique de Paris
Original Title:
Tiny ML in Microcontroller to Classify EEG Signal into Three States
Languages:
English
Translated title:
Tiny ML in Microcontroller to Classify EEG Signal into Three States
Summary:
This thesis investigates how to implement an own-built neural network for electroencephalography signals classification on an STM32L475VG microcontroller unit. The original dataset is analyzed and processed to better understand the brain signals. There is a comparison between three machine learning algorithms (linear support vector machine, extreme gradient boosting, and deep neural network) in three testing paradigms: specific-subject, all-subject, and adaptable to select the most appropriate approach for deploying on the microcontroller. The implementation procedure with detailed notation is presented, and the inference is also performed to feasible observation. Finally, possible improvement solutions are proposed within a clear demonstration.
Main subject category:
Technology - Computer science
Keywords:
electroencephalography, artificial neural network, STM32 microcontroller, SVM, XGBoost
Index:
Yes
Number of index pages:
3
Contains images:
Yes
Number of references:
44
Number of pages:
36
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