Selvaraj Jerritta, Murugappan Murugappan, Wan Khairunizam, Yaacob Sazali
Biomed Tech (Berl). 2014 Jun;59(3):241-9. doi: 10.1515/bmt-2013-0118.
Emotional intelligence is one of the key research areas in human-computer interaction. This paper reports the development of an emotion recognition system using facial electromyogram (EMG) signals focusing the ambiguity on the frequency ranges used by different research works. The six emotional states (happiness, sadness, fear, surprise, disgust, and neutral) were elicited in 60 subjects using audio visual stimuli. Statistical features were extracted from the signals at high, medium, low, and very low frequency levels. They were then classified using four classifiers - naïve Bayes, regression tree, K-nearest neighbor, and fuzzy K-nearest neighbor, and the performance of the system at the different frequency levels were studied using three metrics, namely, % accuracy, sensitivity, and specificity. The post hoc tests in analysis of variance (ANOVA) indicate that the features contain significant emotional information at the very low-frequency range (<0.08 Hz). Similarly, the performance metrics of the classifiers also ensure better recognition rate at very low-frequency range. Though this range of frequency has not been used by researchers, the results of this work indicate that it should not be ignored. Further investigation of the very low frequency range to identify emotional information is still in progress.
情商是人机交互中的关键研究领域之一。本文报告了一种利用面部肌电图(EMG)信号开发的情感识别系统,该系统聚焦于不同研究工作所使用频率范围的模糊性。使用视听刺激在60名受试者中诱发六种情绪状态(快乐、悲伤、恐惧、惊讶、厌恶和中性)。从高、中、低和极低频率水平的信号中提取统计特征。然后使用四种分类器——朴素贝叶斯、回归树、K近邻和模糊K近邻进行分类,并使用三种指标(即准确率、灵敏度和特异性)研究系统在不同频率水平下的性能。方差分析(ANOVA)中的事后检验表明,这些特征在极低频率范围(<0.08 Hz)包含显著的情感信息。同样,分类器的性能指标在极低频率范围也确保了更好的识别率。尽管研究人员尚未使用这个频率范围,但这项工作的结果表明它不应被忽视。对极低频率范围进行进一步研究以识别情感信息的工作仍在进行中。