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EEG-based automatic emotion recognition: Feature extraction, selection and classification methods

机译:基于脑电图的自动情感识别:特征提取,选择和分类方法

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Automatic emotion recognition is an interdisciplinary research field which deals with the algorithmic detection of human affect, e.g. anger or sadness, from a variety of sources, such as speech or facial gestures. Apart from the obvious usage for industry applications in human-robot interaction, acquiring the emotional state of a person automatically also is of great potential for the health domain, especially in psychology and psychiatry. Here, evaluation of human emotion is often done using oral feedback or questionnaires during doctor-patient sessions. However, this can be perceived as intrusive by the patient. Furthermore, the evaluation can only be done in a noncontinuous manner, e.g. once a week during therapy sessions. In contrast, using automatic emotion detection, the affect state of a person can be evaluated in a continuous non-intrusive manner, for example to detect early on-sets of depression. An additional benefit of automatic emotion recognition is the objectivity of such an approach, which is not influenced by the perception of the patient and the doctor. To reach the goal of objectivity, it is important, that the source of the emotion is not easily manipulable, e.g. as in the speech modality. To circumvent this caveat, novel approaches in emotion detection research the potential of using physiological measures, such as galvanic skin sensors or pulse meters. In this paper we outline a way of detecting emotion from brain waves, i.e., EEG data. While EEG allows for a continuous, real-time automatic emotion recognition, it furthermore has the charm of measuring the affect close to the point of emergence: the brain. Using EEG data for emotion detection is nevertheless a challenging task: Which features, EEG channel locations and frequency bands are best suited for is an issue of ongoing research. In this paper we evaluate the use of state of the art feature extraction, feature selection and classification algorithms for EEG emotion classification using data from the de facto standard dataset, DEAP. Moreover, we present results that help choose methods to enhance classification performance while simultaneously reducing computational complexity.
机译:自动情感识别是一个跨学科的研究领域,涉及对人类情感(例如人类情感)的算法检测。各种来源的愤怒或悲伤,例如言语或面部手势。除了工业应用在人机交互中的明显用途外,自动获取人的情绪状态在健康领域也具有巨大潜力,尤其是在心理学和精神病学方面。在这里,人们的情绪评估通常是在医患会议期间使用口头反馈或问卷进行的。然而,这可以被患者认为是侵入性的。此外,评估只能以不连续的方式进行,例如在治疗期间每周一次。相反,使用自动情感检测,可以以连续的非侵入性方式评估人的情感状态,例如以检测抑郁的早期发作。自动情感识别的另一个好处是这种方法的客观性,不受患者和医生的感知影响。为了达到客观的目的,重要的是,情感的来源不易操纵,例如如言语形式。为了避免这种警告,情绪检测中的新方法研究了使用生理措施(例如皮肤电传感器或脉搏计)的潜力。在本文中,我们概述了一种从脑电波即EEG数据中检测情绪的方法。尽管EEG可以连续,实时地自动进行情感识别,但它还有一种魅力,可以在接近出现点的地方测量影响:大脑。然而,使用EEG数据进行情绪检测仍然是一项艰巨的任务:哪些功能,EEG通道位置和频段最适合是一个正在进行的研究问题。在本文中,我们使用来自事实上的标准数据集DEAP的数据,评估了对脑电信号情感分类的最新特征提取,特征选择和分类算法的使用。此外,我们提出的结果有助于选择方法来增强分类性能,同时降低计算复杂度。

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