Emotion Detection from EEG Signals Using Machine Deep Learning Models.

IF 3.8 3区 医学 Q2 ENGINEERING, BIOMEDICAL
João Vitor Marques Rabelo Fernandes, Auzuir Ripardo de Alexandria, João Alexandre Lobo Marques, Débora Ferreira de Assis, Pedro Crosara Motta, Bruno Riccelli Dos Santos Silva
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引用次数: 0

Abstract

Detecting emotions is a growing field aiming to comprehend and interpret human emotions from various data sources, including text, voice, and physiological signals. Electroencephalogram (EEG) is a unique and promising approach among these sources. EEG is a non-invasive monitoring technique that records the brain's electrical activity through electrodes placed on the scalp's surface. It is used in clinical and research contexts to explore how the human brain responds to emotions and cognitive stimuli. Recently, its use has gained interest in real-time emotion detection, offering a direct approach independent of facial expressions or voice. This is particularly useful in resource-limited scenarios, such as brain-computer interfaces supporting mental health. The objective of this work is to evaluate the classification of emotions (positive, negative, and neutral) in EEG signals using machine learning and deep learning, focusing on Graph Convolutional Neural Networks (GCNN), based on the analysis of critical attributes of the EEG signal (Differential Entropy (DE), Power Spectral Density (PSD), Differential Asymmetry (DASM), Rational Asymmetry (RASM), Asymmetry (ASM), Differential Causality (DCAU)). The electroencephalography dataset used in the research was the public SEED dataset (SJTU Emotion EEG Dataset), obtained through auditory and visual stimuli in segments from Chinese emotional movies. The experiment employed to evaluate the model results was "subject-dependent". In this method, the Deep Neural Network (DNN) achieved an accuracy of 86.08%, surpassing SVM, albeit with significant processing time due to the optimization characteristics inherent to the algorithm. The GCNN algorithm achieved an average accuracy of 89.97% in the subject-dependent experiment. This work contributes to emotion detection in EEG, emphasizing the effectiveness of different models and underscoring the importance of selecting appropriate features and the ethical use of these technologies in practical applications. The GCNN emerges as the most promising methodology for future research.

利用机器深度学习模型从脑电图信号中检测情感。
情绪检测是一个不断发展的领域,旨在从文本、语音和生理信号等各种数据源中理解和解读人类情绪。在这些数据源中,脑电图(EEG)是一种独特而有前途的方法。脑电图是一种非侵入性监测技术,通过放置在头皮表面的电极记录大脑的电活动。它被用于临床和研究领域,以探索人脑如何对情绪和认知刺激做出反应。最近,它在实时情绪检测方面的应用引起了人们的兴趣,因为它提供了一种独立于面部表情或声音的直接方法。这在资源有限的情况下尤其有用,比如支持心理健康的脑机接口。这项工作的目的是在分析脑电信号关键属性(差分熵(DE)、功率谱密度(PSD)、差分不对称性(DASM)、理性不对称性(RASM)、不对称性(ASM)、差分因果性(DCAU))的基础上,利用机器学习和深度学习评估脑电信号中的情绪(积极、消极和中性)分类,重点是图卷积神经网络(GCNN)。研究中使用的脑电图数据集是公开的 SEED 数据集(上海交通大学情感脑电图数据集),通过中国情感电影片段中的听觉和视觉刺激获得。评估模型结果的实验采用的是 "主体依赖 "法。在这种方法中,深度神经网络(DNN)的准确率达到了 86.08%,超过了 SVM,尽管由于该算法固有的优化特性,需要大量的处理时间。GCNN 算法在受试者依赖性实验中取得了 89.97% 的平均准确率。这项工作有助于脑电图中的情绪检测,强调了不同模型的有效性,突出了选择适当特征的重要性以及在实际应用中使用这些技术的道德性。GCNN 是未来最有前途的研究方法。
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来源期刊
Bioengineering
Bioengineering Chemical Engineering-Bioengineering
CiteScore
4.00
自引率
8.70%
发文量
661
期刊介绍: Aims Bioengineering (ISSN 2306-5354) provides an advanced forum for the science and technology of bioengineering. It publishes original research papers, comprehensive reviews, communications and case reports. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. All aspects of bioengineering are welcomed from theoretical concepts to education and applications. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. There are, in addition, four key features of this Journal: ● We are introducing a new concept in scientific and technical publications “The Translational Case Report in Bioengineering”. It is a descriptive explanatory analysis of a transformative or translational event. Understanding that the goal of bioengineering scholarship is to advance towards a transformative or clinical solution to an identified transformative/clinical need, the translational case report is used to explore causation in order to find underlying principles that may guide other similar transformative/translational undertakings. ● Manuscripts regarding research proposals and research ideas will be particularly welcomed. ● Electronic files and software regarding the full details of the calculation and experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material. ● We also accept manuscripts communicating to a broader audience with regard to research projects financed with public funds. Scope ● Bionics and biological cybernetics: implantology; bio–abio interfaces ● Bioelectronics: wearable electronics; implantable electronics; “more than Moore” electronics; bioelectronics devices ● Bioprocess and biosystems engineering and applications: bioprocess design; biocatalysis; bioseparation and bioreactors; bioinformatics; bioenergy; etc. ● Biomolecular, cellular and tissue engineering and applications: tissue engineering; chromosome engineering; embryo engineering; cellular, molecular and synthetic biology; metabolic engineering; bio-nanotechnology; micro/nano technologies; genetic engineering; transgenic technology ● Biomedical engineering and applications: biomechatronics; biomedical electronics; biomechanics; biomaterials; biomimetics; biomedical diagnostics; biomedical therapy; biomedical devices; sensors and circuits; biomedical imaging and medical information systems; implants and regenerative medicine; neurotechnology; clinical engineering; rehabilitation engineering ● Biochemical engineering and applications: metabolic pathway engineering; modeling and simulation ● Translational bioengineering
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