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# EEG Classifier based on DEAP database |
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## This repo only include code to proceed DEAP data, no data from DEAP contained! |
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For access of DEAP dataset, please sign EULA and send a request to DEAP team: http://www.eecs.qmul.ac.uk/mmv/datasets/deap/download.html |
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## Dependency |
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* python >= 3.5 |
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* numpy |
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* pyEEG: https://github.com/forrestbao/pyeeg, need manual fix of source code, refers to issue: https://github.com/forrestbao/pyeeg/issues/26 |
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* scikit-learn |
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* tensorflow-gpu |
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## ERD/ERS analysis |
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Fast Fourier Transformation: |
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* Windows size = 2 sec |
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* Windows step = 0.125 sec |
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## Model attempted |
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* Support Vector Machine |
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* Adaboost |
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* Random Forest |
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* Artificial neural network |
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## Best AC rate of Classification on Arousal, Valence, Domaince, Like dimension |
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* Arousal/Not: 82.6% |
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* Valence/Not: 83.6% |
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* Domaince/Not: 81.9% |
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* Like/Not: 85.1% |