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A Method of Emotion Recognition Based on ECG Signal

机译:一种基于ECG信号的情感识别方法

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Emotion recognition from electrocardiography (ECG) signal has become an important research topic in the field of affective computing. In the current work, ECG signals from multiple subjects were collected when film clips shown to them, and then feature sets were extracted from precise location of P-QRS-T wave by continuous wavelet transform (CWT). Hybrid particle swarm optimization (HPSO) was utilized for feature selection, whose discrimination criteria was the correct rate of fisher classifier and the number of features selected. For recognizing two emotions of joy and sadness, effective features and better recognition rate were obviously obtained. Experimental results indicate that the features that acquired from experimental simulation can represent the changes of emotions, HPSO and fisher classifier are effective ways for emotion recognition.
机译:来自心电图(ECG)信号的情感识别已成为情感计算领域的重要研究主题。在当前的工作中,当向它们所示的胶片剪辑时收集来自多个受试者的ECG信号,然后通过连续小波变换(CWT)从P-QRS-T波的精确位置提取特征集。混合粒子群优化(HPSO)用于特征选择,其歧视标准是Fisher分类器的正确速率以及所选的功能数量。为了认识到两个快乐和悲伤的情绪,显然获得了有效的特征和更好的识别率。实验结果表明,从实验模拟中获取的特征可以代表情绪,HPSO和Fisher分类器的变化是情感认可的有效方式。

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