Evolving EEG signal processing techniques in the age of artificial intelligence

Li Hu, Zhiguo Zhang
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引用次数: 6

Abstract

1 CAS Key Laboratory of Mental Health, Institute of Psychology, Chinese Academy of Sciences, Beijing 100101, China 2 Department of Psychology, University of Chinese Academy of Sciences, Beijing 100049, China 3 School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen 518000, Guangdong, China Electroencephalogram (EEG) is an important technique for measuring population‐level electrical activity arising from the human brain. Due to its exquisite temporal sensitivity and implementation simplicity, EEG has been widely applied to dynamically evaluate the function of the brain. Being responded to a specific sensory, cognitive, or motor event, the changes of EEG signals give rise to evoked potentials (EPs) and event‐related potentials (ERPs), which are highly associated with different brain functions, e.g., perception, emotion, and cognition. These advances make the EEG technique popularly used in various basic and clinical applications. To make full use of the EEG technique, signal processing and machine learning methods are crucial in the extraction of information for better understan‐ ding the cerebral functioning. Particularly, in this age of artificial intelligence (AI), rapidly developed AI methods, such as convolutional neural networks and recurrent neural networks, have been applied to EEG signals and have achieved promising performance in many real applications. As a consequence, the field of EEG signal processing has undergone significant growth in the last few years, and the scope and range of practical applications of EEG, such as brain–computer interface (BCI), are steadily increasing. For this reason, the special issue aims to provide a collection of papers discussing the conceptual and methodological innovations as well as practical applications of the EEG techniques. This special session has included seven review papers contributed by experts in this interdisciplinary field, and all authors have worked in the fields of EEG processing methods and applications for many years. First of all, Li [1] shared his insightful and constructive thoughts on EEG signal analysis and classification. Specifically, he focused on several important and emerging topics in EEG processing, such as brain connectivity, tensor decomposition, multi‐modality, deep learning, big data, and naturalistic experiments. These topics, particularly those AI‐related topics, are both crucial and promising for the future advancement of EEG signal analysis and classification. Next, this special issue presented several papers concerning the applications of EEG in psychology, emotion recognition, and BCI. One important and conventional application field of EEG is psychology, in which EEG has been extensively used to decode the psychological Address correspondence to Li Hu, huli@psych.ac.cn; and Zhiguo Zhang, zgzhang@szu.edu.cn
人工智能时代不断发展的脑电信号处理技术
1中国科学院心理研究所,中国科学院心理健康重点实验室,北京100101;2中国科学院大学心理学系,北京100049;3深圳大学健康科学中心生物医学工程学院,广东深圳518000脑电图(EEG)是测量人群脑电活动的一项重要技术。由于其具有良好的时间敏感性和实现简单性,脑电图已被广泛应用于大脑功能的动态评估。作为对特定感觉、认知或运动事件的反应,脑电图信号的变化产生诱发电位(EPs)和事件相关电位(erp),它们与不同的大脑功能高度相关,如感知、情感和认知。这些进步使脑电图技术广泛应用于各种基础和临床应用。为了充分利用脑电图技术,信号处理和机器学习方法在提取信息以更好地理解大脑功能方面至关重要。特别是在人工智能(AI)时代,卷积神经网络、递归神经网络等快速发展的人工智能方法已被应用于脑电图信号,并在许多实际应用中取得了良好的表现。因此,近年来脑电信号处理领域有了显著的发展,脑机接口(BCI)等脑电实际应用的范围和范围也在稳步扩大。因此,本期特刊旨在提供一系列讨论脑电图技术的概念和方法创新以及实际应用的论文。本次专题会议收录了7篇由该跨学科领域专家撰写的综述论文,所有作者均在EEG处理方法和应用领域工作多年。首先,李b[1]分享了他对脑电信号分析和分类的深刻见解和建设性的看法。具体来说,他专注于脑电图处理中的几个重要和新兴主题,如大脑连接、张量分解、多模态、深度学习、大数据和自然实验。这些主题,特别是那些与人工智能相关的主题,对于脑电图信号分析和分类的未来发展都是至关重要和有前途的。接下来,这期特刊介绍了几篇关于脑电图在心理学、情绪识别和脑机接口中的应用的论文。脑电图的一个重要而传统的应用领域是心理学,脑电图已被广泛用于解码心理地址对应李胡,huli@psych.ac.cn;张志国,zgzhang@szu.edu.cn
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