Emotion Detection Based on EEG Signal Processing by Body Sensor 5G Networks Using Deep Learning Architectures

S. Mansouri, S. Chabchoub
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Abstract

Emotion recognition is the automatic detection of a person’s emotional state through his or her non-physiological or physiological signals. The EEG-related technique was an effectual system, which is typically employed for recognizing feelings in real time. Artificial Intelligence (AI) can be a developing research field which had rapid growth particularly to constitute a bridge between technology and its implementation in solving real-time issues particularly those relevant to the healthcare domain. This study develops a new deep learning-based emotion detection based on EEG signal processing, named DLED-EEGSP technique. The presented DLED-EEGSP technique identifies the distinct kinds of emotions based on the sensors and EEG signals. To perform this, the presented DLED-EEGSP technique exploits multi-head attention based long short-term memory (MHA-LSTM) method for emotion recognition. The MHALSTM model recognizes the emotion states based on the higher order cross feature samples. The experimental result analysis of the DLED-EEGSP technique is investigated on a series of data. A wide-ranging simulation results reported the supremacy of the DLED-EEGSP technique over other existing models.
基于深度学习架构的身体传感器5G网络脑电信号处理情感检测
情绪识别是通过人的非生理或生理信号对人的情绪状态进行自动检测。脑电图相关技术是一个有效的系统,通常用于实时识别情绪。人工智能(AI)是一个发展迅速的研究领域,特别是在解决实时问题(特别是与医疗保健领域相关的问题)方面,它构成了技术与其实施之间的桥梁。本研究提出了一种新的基于深度学习的基于脑电信号处理的情绪检测技术,称为led - eegsp技术。提出的led - eegsp技术基于传感器和脑电图信号识别不同类型的情绪。为此,提出的led - eegsp技术利用基于多头注意的长短期记忆(MHA-LSTM)方法进行情绪识别。MHALSTM模型基于高阶交叉特征样本识别情绪状态。利用一系列实验数据对led - eegsp技术的实验结果进行了分析。广泛的模拟结果报告了led - eegsp技术优于其他现有模型的优势。
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