Eeg-based emotion recognition with brain network using independent components analysis and granger causality

Dongwei Chen, Wu Fang, Wang Zhen, Haifang Li, Junjie Chen
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引用次数: 15

Abstract

With the continuous development of brain imaging technology, it has become a hot area of neuroscience and information technology to research the human emotion changes, cognitive status and psychiatric disorders. In recent years, any smart device can be used as a terminal sensor in the Internet of Things for information interaction. It will be the new research aspect for Brain-Computer Interface(BCI) to regard the human brain (the most intelligent “device”) as a terminal sensor in the Internet of Things and to construct the network based on the human brains (we name it as Internet of Brains). In this paper, a model of wearable affective computing was proposed for discriminating different emotional states and constructing the Internet of Brains, by means of effective connectivity of EEG-based brain network. Firstly, we proposed a rational emotion-induced psychological experiment to collect the EEG data under different emotional states. Then, Independent Component Analysis (ICA) was used to decompose different independent components based on different emotional states; Granger Causality Analysis (GCA) was utilized to detect the interactive dependencies between each independent component in order to construct the causal connectivity brain network (CCBN); Dynamic characteristics, including causal density and causal flow of the CCBN, were extracted based on Graph Theory. Finally, the corresponding law between characteristics of EEG pattern and “inner” emotional state was discovered to establish affective computing model. Furthermore, the model of wearable affective computing was constructed based on above law with the portable EEG acquisition device, and prototype system of wearable affective computing based on Internet of Brains was achieved for BCI.
基于独立分量分析和格兰杰因果关系的脑网络情感识别
随着脑成像技术的不断发展,对人类情绪变化、认知状态和精神障碍的研究已成为神经科学和信息技术领域的热点。近年来,任何智能设备都可以作为物联网中的终端传感器进行信息交互。将人脑(最智能的“设备”)作为物联网的终端传感器,构建基于人脑的网络(我们称之为脑联网),将是脑机接口(brain - computer Interface, BCI)新的研究方向。本文提出了一种可穿戴式情感计算模型,利用基于脑电图的大脑网络的有效连接,识别不同的情绪状态,构建大脑互联网。首先,我们提出了一种理性情绪诱导心理实验,收集不同情绪状态下的脑电数据。然后,根据不同的情绪状态,采用独立成分分析(ICA)对不同的独立成分进行分解;运用格兰杰因果分析(Granger Causality Analysis, GCA)检测各独立分量之间的交互依赖关系,构建因果连接脑网络(causal connectivity brain network, CCBN);基于图论提取CCBN的动态特征,包括因果密度和因果流。最后,发现脑电模式特征与“内在”情绪状态的对应规律,建立情感计算模型。在此基础上,利用便携式脑电采集装置构建了可穿戴式情感计算模型,实现了基于脑联网的可穿戴式情感计算原型系统。
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