YasinEnigma/EEG-Emotion-Detection
Emotion detection of subject using EEG data and deep learning models
This project helps researchers and practitioners in human-computer interaction or medical fields analyze emotional states from brainwave data. By inputting raw EEG signals, it determines the subject's underlying emotion. This is for professionals who need an objective, hard-to-fake measure of emotional responses for research or practical applications.
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Use this if you need to automatically identify a person's emotional state using their brain activity, for applications like smart interfaces or clinical assessments.
Not ideal if you need to detect emotions from facial expressions or vocal tone, as this project specifically uses EEG data.
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Sep 06, 2022
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