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EEG Affective Modelling for Dysphoria Understanding

机译:eeg情感模型患者患有疑虑

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摘要

Dysphoria is a state of dissatisfaction, restlessness or fidgeting. It is a state of feeling unwell in relation to mental and emotional discomfort. If this state is not carefully handled, it may lead to depression, anxiety, and stress. To date, 21-item instruments of Depression, Anxiety and Stress Scale (DASS) is employed to measure dysphoria. Although DASS provides a quantitative assessment of the human affective state, it is subjected to interpretation. To complicate matters, pre-cursor emotion and pre-emotion of the participants can result in biasness of the DASS report. Hence, a more direct method in measuring human affective state by analyzing the brain pattern is proposed. The approach can also address the dynamic affective state which is needed in detecting dysphoria. Brain waves pattern are collected using the electroencephalogram (EEG) device and used as the input to analyze the underlying emotion. In this paper, relevant features were extracted using Mel-frequency cepstral coefficients (MFCC) and classified with Multi-Layer Perceptron (MLP). The experimental results show potential of differentiating between positive and negative emotion with comparable accuracy. Subsequently, it is envisaged that the proposed model can be extended as a tool that can be used to measure stress and anxiety in work places and education institutions.
机译:困难是一种不满,不安或诱惑的状态。这是一种感觉不适与心理和情绪不适的关系。如果没有仔细处理这种状态,它可能导致抑郁,焦虑和压力。迄今为止,使用21项抑郁症,焦虑和压力量表(DASS)来测量困难。尽管DAS提供了对人类情感状态的定量评估,但它受到解释。复杂化的事项,游客前的情感和参与者的前情感可能导致DASS报告的偏见。因此,提出了一种通过分析脑模式来测量人类情感状态的更直接的方法。该方法还可以解决检测患有困难时所需的动态情感状态。使用脑电图(EEG)设备收集脑波图案,并用作分析潜在情绪的输入。在本文中,使用熔融频率谱系数(MFCC)提取相关特征,并用多层Perceptron(MLP)分类。实验结果表明,以可比的准确性区分积极和负面情绪。随后,设想所提出的模型可以作为一种工具扩展,可以用于测量工作场所和教育机构中的压力和焦虑。

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