Research Article

EEG Feature Extraction and Data Augmentation in Emotion Recognition

Table 7

Comparison of proposed work with similar work on SVM classifier.

ModelFeaturesNO. Augmented dataClassification typeMean accuracySTDArousalValence
M.AccSTDM.AccSTD

Proposed model344 extracted features0Binary64.3%% 2.360.1%% 5.2
Proposed model344 extracted features2 real dataBinary68.2%%4.764.3%%4.8
Proposed model344 extracted featuresReal data + 5000Binary62.4%% 3.859.6%% 3.1
[1]DE0Categorical45.4%8.2%
[1]DE5000Categorical48.9%8.4%
[1]PSD0Categorical42.7%9.6%
[1]PSD5000Categorical45.0%8.9%