The document presents a study on recognizing emotional states using EEG signals, leveraging time-frequency analysis and SVM classifiers. The proposed method achieves an accuracy of 92.36% on the DEAP dataset, outperforming existing approaches by addressing issues related to biased emotion detection methods. The methodology includes data preprocessing, feature extraction, and classification processes to enhance the efficiency of emotion recognition.