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Emotion recognition from facial EMG signals using higher order statistics and principal component analysis

机译:使用高阶统计量和主成分分析从面部EMG信号进行情感识别

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摘要

Higher order statistics (HOS) is an efficient feature extraction method used in diverse applications such as bio signal processing, seismic data processing, image processing, sonar, and radar. In this work, we have investigated the application of HOS to derive a set of features from facial electromyography (fEMG) signals for classifying six emotional states (happy, sad, afraid, surprised, disgusted, and neutral). fEMG signals were collected from different types of subjects in a controlled environment using audio-visual (film clips/ video clips) stimuli. Acquired fEMG signals were preprocessed using moving average filter and a set of statistical features were extracted from fEMG signals. Extracted features were mapped into corresponding emotions using k-nearest neighbor classifier. Principal component analysis was utilized to analyze the efficacy of HOS features over conventional statistical features on retaining the emotional information retrieval from fEMG signals. The results of this work indicate an improved mean emotion recognition rate of 69.5% from this proposed methodology to recognize six emotional states.
机译:高阶统计(HOS)是一种高效的特征提取方法,可用于多种应用中,例如生物信号处理,地震数据处理,图像处理,声纳和雷达。在这项工作中,我们调查了居屋应用程序从面部肌电图(fEMG)信号中得出的一组功能,用于对六个情绪状态(快乐,悲伤,恐惧,惊讶,恶心和中性)进行分类。 fEMG信号是在受控环境中使用视听(电影剪辑/视频剪辑)刺激从不同类型的受试者收集的。使用移动平均滤波器对获取的fEMG信号进行预处理,并从fEMG信号中提取出一组统计特征。使用k最近邻分类器将提取的特征映射到相应的情绪中。利用主成分分析来分析居屋功能相对于传统统计功能在保留来自fEMG信号的情感信息方面的功效。这项工作的结果表明,从该提出的方法中识别六个情绪状态的平均情绪识别率提高了69.5%。

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