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Analysis of emotional condition based on electrocardiogram signals

机译:基于心电图信号的情绪状况分析

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Emotion is a mental condition that appears spontaneously based on self-conscious effort and usually followed by physiological changes. Emotion is especially caused by stimulation. The related information with emotional condition by someone is communicated to all body through ECG. Therefore, it is important to conduct a research in analysis of emotion based on the measurement of ECG. Data emotion was categorised according to the stimulation that had been given to the subject by using video and music as long as ECG recorded. ICA method analysis with FastICA algorithm could be developed to obtain emotion feature. Feature classification was based on statistical approach from the independent component with higher of kurtosis value. The proposed method in classification was based on decision tree using Random Forest algorithm. The classification result shows that the emotional recognition based on ECG signals can be well implemented by system. The developed method successfully classifies the emotional condition from ECG signals. The method achieves the accuracy of 92.2% for identification of neutral emotion, 93.9% for negative emotion and 92.1% for positive emotion. The value of ICSI is obtained about 81.2% for neutral conditions, 88.3% for negative emotions and 85.1% for positive emotions, it means that the system is successfully to classify individually and effective for overall.
机译:情绪是一种精神状况,基于自我意识的努力自发,通常是生理变化。情绪尤其由刺激引起的。有人通过ECG沟通有情绪状况的相关信息。因此,重要的是在基于ECG测量的基础上进行情感分析研究。数据情绪根据通过记录的ECG使用视频和音乐给予对象的刺激进行了分类。可以开发使用FastICA算法的ICA方法分析以获得情感功能。特征分类是基于独立组分的统计方法,具有较高的Kurttosis值。分类中的提出方法基于使用随机林算法的决策树。分类结果表明,基于ECG信号的情绪识别可以通过系统充分实现。开发方法成功地将情绪状况从ECG信号进行了分类。该方法可实现92.2%的准确性,用于鉴定中性情绪,93.9%,对于负面情绪为92.1%。获得ICSI的价值约为81.2%的中性条件,负面情绪的88.3%,积极情绪的85.1%,这意味着该系统成功地分类,对整体进行单独和有效分类。

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