Innovative EEG Signal Analysis Project Overview

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Explore Pedro Henrique da Rocha Garrit's weekly presentation on utilizing EDFbrowser and MATLAB for EEG signal montages and analysis. Discover the accomplishments, including creating a montage file and MATLAB program, as well as future plans for wavelet-based feature extraction in EEG signal processing.

  • EEG signals
  • Signal analysis
  • EDFbrowser
  • MATLAB program
  • Wavelet-based feature extraction

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  1. Weekly Presentation Pedro Henrique da Rocha Garrit Date:05/15/2015

  2. GOALS: Use EDFbrowser to monitor and perform montages on .EDF files content. Write a program in MatLab to perform the same operations. Fig .1 EDFbrowser displaying an example file with a montage applied to it

  3. ACOMPLISHIMENTS: Successfully created a montage file (.mtg) for EDFbrowser. A MatLab program analogue to EDFbrowser was created. Used EDFbrowser to validate the results shown by the MatLab program. Fig .2 EDFbrowser analogue program created on MatlLab displaying the same waveforms shown in Fig.1

  4. PLANS: Implement the feature extraction for EEG signals using wavelet based on the paper: "A new algorithm for wavelet-based heart rate variability analysis."

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