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Keywords = system identification of EEG

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21 pages, 2796 KB  
Article
IDSRN: Interpretable Dynamic System Recurrent Network for Driver Fatigue Assessment
by Bing Gao, Ying Yan, Chenmeng Huangfu, Jun Cai and Hao Wang
Appl. Sci. 2025, 15(21), 11384; https://doi.org/10.3390/app152111384 - 24 Oct 2025
Viewed by 266
Abstract
Driver fatigue is a critical factor contributing to traffic accidents. Therefore, real-time and accurate recognition of driver fatigue states holds significant importance. This paper proposes a novel driver fatigue detection method based on electroencephalogram (EEG) signals and an Interpretable Dynamic System Recurrent Network [...] Read more.
Driver fatigue is a critical factor contributing to traffic accidents. Therefore, real-time and accurate recognition of driver fatigue states holds significant importance. This paper proposes a novel driver fatigue detection method based on electroencephalogram (EEG) signals and an Interpretable Dynamic System Recurrent Network (IDSRN). The IDSRN integrates the temporal modeling capability of traditional Recurrent Neural Networks (RNNs) with the nonlinear function approximation advantages of polynomial networks, enabling effective extraction of nonlinear dynamic features from EEG signals. This study collected EEG data from drivers under varying fatigue states and constructed input vectors suitable for classification tasks through preprocessing and feature extraction. The extracted features were subsequently fed into the IDSRN model for training and testing, with comparative analyses conducted against traditional methods (e.g., SVM, CNN, and standard RNN). Experimental results demonstrate that the IDSRN outperforms other models in recognition accuracy (average: 92.3%), convergence speed, and robustness, significantly improving the efficacy of driver fatigue-state identification. Full article
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25 pages, 1072 KB  
Review
EEG-Based Biometric Identification and Emotion Recognition: An Overview
by Miguel A. Becerra, Carolina Duque-Mejia, Andres Castro-Ospina, Leonardo Serna-Guarín, Cristian Mejía and Eduardo Duque-Grisales
Computers 2025, 14(8), 299; https://doi.org/10.3390/computers14080299 - 23 Jul 2025
Viewed by 2284
Abstract
This overview examines recent advancements in EEG-based biometric identification, focusing on integrating emotional recognition to enhance the robustness and accuracy of biometric systems. By leveraging the unique physiological properties of EEG signals, biometric systems can identify individuals based on neural responses. The overview [...] Read more.
This overview examines recent advancements in EEG-based biometric identification, focusing on integrating emotional recognition to enhance the robustness and accuracy of biometric systems. By leveraging the unique physiological properties of EEG signals, biometric systems can identify individuals based on neural responses. The overview discusses the influence of emotional states on EEG signals and the consequent impact on biometric reliability. It also evaluates recent emotion recognition techniques, including machine learning methods such as support vector machines (SVMs), convolutional neural networks (CNNs), and long short-term memory networks (LSTMs). Additionally, the role of multimodal EEG datasets in enhancing emotion recognition accuracy is explored. Findings from key studies are synthesized to highlight the potential of EEG for secure, adaptive biometric systems that account for emotional variability. This overview emphasizes the need for future research on resilient biometric identification that integrates emotional context, aiming to establish EEG as a viable component of advanced biometric technologies. Full article
(This article belongs to the Special Issue Multimodal Pattern Recognition of Social Signals in HCI (2nd Edition))
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34 pages, 2495 KB  
Systematic Review
Neurophysiological Approaches to Lie Detection: A Systematic Review
by Bewar Neamat Taha, Muhammet Baykara and Talha Burak Alakuş
Brain Sci. 2025, 15(5), 519; https://doi.org/10.3390/brainsci15050519 - 18 May 2025
Cited by 2 | Viewed by 2391
Abstract
Background and Objectives: Lie detection is crucial in domains such as security, law enforcement, and clinical assessments. Traditional methods suffer from reliability issues and susceptibility to countermeasures. In recent years, electroencephalography (EEG) and particularly the Event-Related Potential (ERP) P300 component have gained prominence [...] Read more.
Background and Objectives: Lie detection is crucial in domains such as security, law enforcement, and clinical assessments. Traditional methods suffer from reliability issues and susceptibility to countermeasures. In recent years, electroencephalography (EEG) and particularly the Event-Related Potential (ERP) P300 component have gained prominence for identifying concealed information. This systematic review aims to evaluate recent studies (2017–2024) on EEG-based lie detection using ERP P300 responses, especially in relation to recognized and unrecognized face stimuli. The goal is to summarize commonly used EEG signal processing techniques, feature extraction methods, and classification algorithms, identifying those that yield the highest accuracy in lie detection tasks. Methods: This review followed PRISMA guidelines for systematic reviews. A comprehensive literature search was conducted using IEEE Xplore, Web of Science, Scopus, and Google Scholar, restricted to English-language articles from 2017 to 2024. Studies were included if they focused on EEG-based lie detection, utilized experimental protocols like Concealed Information Test (CIT), Guilty Knowledge Test (GKT), or Deceit Identification Test (DIT), and evaluated classification accuracy using ERP P300 components. Results: CIT with ERP P300 was the most frequently employed protocol. The most used preprocessing method was Bandpass Filtering (BPF), and the Discrete Wavelet Transform (DWT) emerged as the preferred feature extraction technique due to its suitability for non-stationary EEG signals. Among classification algorithms, Support Vector Machine (SVM), Linear Discriminant Analysis (LDA), and Convolutional Neural Networks (CNN) were frequently utilized. These findings demonstrate the effectiveness of hybrid and deep learning-based models in enhancing classification performance. Conclusions: EEG-based lie detection, particularly using the ERP P300 response to face recognition tasks, shows promising accuracy and robustness compared to traditional polygraph methods. Combining advanced signal processing methods with machine learning and deep learning classifiers significantly improves performance. This review identifies the most effective methodologies and suggests that future research should focus on real-time applications, cross-individual generalization, and reducing system complexity to facilitate broader adoption. Full article
(This article belongs to the Section Neurotechnology and Neuroimaging)
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23 pages, 4240 KB  
Article
Research on the Identification of Road Hypnosis Based on the Fusion Calculation of Dynamic Human–Vehicle Data
by Han Zhang, Longfei Chen, Bin Wang, Xiaoyuan Wang, Jingheng Wang, Chenyang Jiao, Kai Feng, Cheng Shen, Quanzheng Wang, Junyan Han and Yi Liu
Sensors 2025, 25(9), 2846; https://doi.org/10.3390/s25092846 - 30 Apr 2025
Viewed by 877
Abstract
Driver factors are the main cause of road traffic accidents. For the research of automotive active safety, an identification method for road hypnosis of a driver of a car with dynamic human–vehicle heterogeneous data fusion calculation is proposed. Road hypnosis is an unconscious [...] Read more.
Driver factors are the main cause of road traffic accidents. For the research of automotive active safety, an identification method for road hypnosis of a driver of a car with dynamic human–vehicle heterogeneous data fusion calculation is proposed. Road hypnosis is an unconscious driving state formed by the combination of external environmental factors and the psychological state of the car driver. When drivers fall into a state of road hypnosis, they cannot clearly perceive the surrounding environment and make various reactions in time to complete the driving task. The safety of humans and cars is greatly affected. Therefore, the study of the identification of drivers’ road hypnosis is of great significance. Vehicle and virtual driving experiments are designed and carried out to collect human and vehicle data. Eye movement data and EEG data of human data are collected with eye movement sensors and EEG sensors. Vehicle speed and acceleration data are collected by a mobile phone with AutoNavi navigation, which serves as an onboard sensor. In order to screen the characteristics of human and vehicles related to the road hypnosis state, the characteristic parameters of the road hypnosis in the preprocessed data are selected by the method of independent sample T-test, the hidden Markov model (HMM) is constructed, and the identification of the road hypnosis of the Ridge Regression model is combined. In order to evaluate the identification performance of the model, six evaluation indicators are used and compared with multiple regression models. The results show that the hidden Markov-Ridge Regression model is the most superior in the identification accuracy and effect of the road hypnosis state. A new technical scheme reference for the development of intelligent driving assistance systems is provided by the proposed comprehensive road hypnosis state identification model based on human–vehicle data can provide, which can effectively improve the life recognition ability of automobile intelligent cockpits, enhance the active safety performance of automobiles, and further improve traffic safety. Full article
(This article belongs to the Section Vehicular Sensing)
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27 pages, 6113 KB  
Article
An Identification Method for Road Hypnosis Based on XGBoost-HMM
by Longfei Chen, Chenyang Jiao, Bin Wang, Xiaoyuan Wang, Jingheng Wang, Han Zhang, Junyan Han, Cheng Shen, Kai Feng, Quanzheng Wang and Yi Liu
Sensors 2025, 25(6), 1842; https://doi.org/10.3390/s25061842 - 16 Mar 2025
Viewed by 943
Abstract
Human factors are the most important factor in road traffic crashes. Human-caused traffic crashes can be reduced through the active safety system of vehicles. Road hypnosis is an unconscious driving state caused by the combination of external environmental factors and the driver’s psychological [...] Read more.
Human factors are the most important factor in road traffic crashes. Human-caused traffic crashes can be reduced through the active safety system of vehicles. Road hypnosis is an unconscious driving state caused by the combination of external environmental factors and the driver’s psychological state. When drivers fall into a state of road hypnosis, they cannot clearly perceive the surrounding environment and make various reactions in time to complete the driving task, and driving safety is greatly affected. Therefore, road hypnosis identification is of great significance for the active safety of vehicles. A road hypnosis identification model based on XGBoost—Hidden Markov is proposed in this study. Driver data and vehicle data related to road hypnosis are collected through the design and conduct of vehicle driving experiments. Driver data, including eye movement data and EEG data, are collected with eye movement sensors and EEG sensors. A mobile phone with AutoNavi navigation is used as an on-board sensor to collect vehicle speed, acceleration, and other information. Power spectrum density analysis, the sliding window method, and the point-by-point calculation method are used to extract the dynamic characteristics of road hypnosis, respectively. Through normalization and standardization, the key features of the three types of data are integrated into unified feature vectors. Based on XGBoost and the Hidden Markov algorithm, a road hypnotic identification model is constructed. The model is verified and evaluated through visual analysis. The results show that the road hypnosis state can be effectively identified by the model. The extraction of road hypnosis-related features is realized in non-fixed driving routes in this study. A new research idea for road hypnosis and a technical scheme reference for the development of intelligent driving assistance systems are provided, and the life identification ability of the vehicle intelligent cockpit is also improved. It is of great significance for the active safety of vehicles. Full article
(This article belongs to the Special Issue Intelligent Traffic Safety and Security)
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37 pages, 5810 KB  
Systematic Review
Modern Smart Gadgets and Wearables for Diagnosis and Management of Stress, Wellness, and Anxiety: A Comprehensive Review
by Aman Jolly, Vikas Pandey, Manoj Sahni, Ernesto Leon-Castro and Luis A. Perez-Arellano
Healthcare 2025, 13(4), 411; https://doi.org/10.3390/healthcare13040411 - 14 Feb 2025
Cited by 4 | Viewed by 4101
Abstract
The increasing development of gadgets to evaluate stress, wellness, and anxiety has garnered significant attention in recent years. These technological advancements aim to expedite the identification and subsequent treatment of these prevalent conditions. This study endeavors to critically examine the latest smart gadgets [...] Read more.
The increasing development of gadgets to evaluate stress, wellness, and anxiety has garnered significant attention in recent years. These technological advancements aim to expedite the identification and subsequent treatment of these prevalent conditions. This study endeavors to critically examine the latest smart gadgets and portable techniques utilized for diagnosing depression, stress, and emotional trauma while also exploring the underlying biochemical processes associated with their identification. Integrating various detectors within smartphones and smart bands enables continuous monitoring and recording of user activities. Given their widespread use, smartphones, smartwatches, and smart wristbands have become indispensable in our daily lives, prompting the exploration of their potential in stress detection and prevention. When individuals experience stress, their nervous system responds by releasing stress hormones, which can be easily identified and quantified by smartphones and smart bands. The study in this paper focused on the examination of anxiety and stress and consistently employed “heart rate variability” (HRV) characteristics for diagnostic purposes, with superior outcomes observed when HRV was combined with “electroencephalogram” (EEG) analysis. Recent research indicates that electrodermal activity (EDA) demonstrates remarkable precision in identifying anxiety. Comparisons with HRV, EDA, and breathing rate reveal that the mean heart rate employed by several commercial wearable products is less accurate in identifying anxiety and stress. This comprehensive review article provides an evidence-based evaluation of intelligent gadgets and wearable sensors, highlighting their potential to accurately assess stress, wellness, and anxiety. It also identifies areas for further research and development. Full article
(This article belongs to the Special Issue Smart and Digital Health)
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28 pages, 3695 KB  
Article
Open-Source Algorithm for Automated Vigilance State Classification Using Single-Channel Electroencephalogram in Rodents
by Anton Saevskiy, Natalia Suntsova, Peter Kosenko, Md Noor Alam and Andrey Kostin
Sensors 2025, 25(3), 921; https://doi.org/10.3390/s25030921 - 3 Feb 2025
Viewed by 2029
Abstract
Accurate identification of sleep stages is essential for understanding sleep physiology and its role in neurological and behavioral research. Manual scoring of polysomnographic data, while reliable, is time-intensive and prone to variability. This study presents a novel Python-based algorithm for automated vigilance state [...] Read more.
Accurate identification of sleep stages is essential for understanding sleep physiology and its role in neurological and behavioral research. Manual scoring of polysomnographic data, while reliable, is time-intensive and prone to variability. This study presents a novel Python-based algorithm for automated vigilance state scoring using single-channel electroencephalogram (EEG) recordings from rats and mice. The algorithm employs artifact processing, multi-band frequency analysis, and Gaussian mixture model (GMM)-based clustering to classify wakefulness, non-rapid, and rapid eye movement sleep (NREM and REM sleep, respectively). Combining narrow and broad frequency bands across the delta, theta, and sigma ranges, it uses a majority voting system to enhance accuracy, with tailored preprocessing and voting criteria improving REM detection. Validation on datasets from 10 rats and 10 mice under standard conditions showed sleep–wake state detection accuracies of 92% and 93%, respectively, closely matching manual scoring and comparable to existing methods. REM sleep detection accuracies of 89% (mice) and 91% (rats) align with previously reported (85–90%). Processing a full day of EEG data within several minutes, the algorithm is advantageous for large-scale and longitudinal studies. Its open-source design, flexibility, and scalability make it a robust, efficient tool for automated rodent sleep scoring, advancing research in standard experimental conditions, including aging and sleep deprivation. Full article
(This article belongs to the Special Issue Advances in Sensing Technologies for Sleep Monitoring)
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28 pages, 1601 KB  
Review
Methods and Approaches for User Engagement and User Experience Analysis Based on Electroencephalography Recordings: A Systematic Review
by Christos Bellos, Konstantinos Stefanou, Alexandros Tzallas, Georgios Stergios and Markos Tsipouras
Electronics 2025, 14(2), 251; https://doi.org/10.3390/electronics14020251 - 9 Jan 2025
Cited by 4 | Viewed by 2787
Abstract
This review paper explores the intersection of user engagement and user experience studies with electroencephalography (EEG) analysis by investigating the existing literature in this field. User engagement describes the immediate, session-based experience of using interactive products and is commonly used as a metric [...] Read more.
This review paper explores the intersection of user engagement and user experience studies with electroencephalography (EEG) analysis by investigating the existing literature in this field. User engagement describes the immediate, session-based experience of using interactive products and is commonly used as a metric to assess the success of games, online platforms, applications, and websites, while user experience encompasses the broader and longer-term aspects of user interaction. This review focuses on the use of EEG as a precise and objective method to gain insights into user engagement. EEG recordings capture brain activity as waves, which can be categorized into different frequency bands. By analyzing patterns of brain activity associated with attention, emotion, mental workload, and user experience, EEG provides valuable insights into user engagement. The review follows the PRISMA statement. The search process involved an extensive exploration of multiple databases, resulting in the identification of 74 relevant studies. The review encompasses the entire information flow of the experiments, including data acquisition, pre-processing analysis, feature extraction, and analysis. By examining the current literature, this review provides a comprehensive overview of various algorithms and processes utilized in EEG-based systems for studying user engagement and identifies potential directions for future research endeavors. Full article
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27 pages, 5888 KB  
Article
Advanced Trans-EEGNet Deep Learning Model for Hypoxic-Ischemic Encephalopathy Severity Grading
by Dong-Her Shih, Feng-I Chung, Ting-Wei Wu, Shuo-Yu Huang and Ming-Hung Shih
Mathematics 2024, 12(24), 3915; https://doi.org/10.3390/math12243915 - 12 Dec 2024
Viewed by 2140
Abstract
Hypoxic-ischemic encephalopathy (HIE) is a brain injury condition that poses a significant risk to newborns, potentially causing varying degrees of damage to the central nervous system. Its clinical manifestations include respiratory distress, cardiac dysfunction, hypotension, muscle weakness, seizures, and coma. As HIE represents [...] Read more.
Hypoxic-ischemic encephalopathy (HIE) is a brain injury condition that poses a significant risk to newborns, potentially causing varying degrees of damage to the central nervous system. Its clinical manifestations include respiratory distress, cardiac dysfunction, hypotension, muscle weakness, seizures, and coma. As HIE represents a progressive brain injury, early identification of the extent of the damage and the implementation of appropriate treatment are crucial for reducing mortality and improving outcomes. HIE patients may face long-term complications such as cerebral palsy, epilepsy, vision loss, and developmental delays. Therefore, prompt identification and treatment of hypoxic-ischemic symptoms can help reduce the risk of severe sequelae in patients. Currently, hypothermia therapy is one of the most effective treatments for HIE patients. However, not all newborns with HIE are suitable for this therapy, making rapid and accurate assessment of the extent of brain injury critical for treatment. Among HIE patients, hypothermia therapy has shown better efficacy in those diagnosed with moderate to severe HIE within 6 h of birth, establishing this time frame as the golden period for treatment. During this golden period, an accurate assessment of HIE severity is essential for formulating appropriate treatment strategies and predicting long-term outcomes for the affected infants. This study proposes a method for addressing data imbalance and noise interference through data preprocessing techniques, including filtering and SMOTE. It then employs EEGNet, a deep learning model specifically designed for EEG classification, combined with a Transformer model featuring an attention mechanism that excels at capturing long-term sequential features to construct the Trans-EEGNet model. This model outperforms previous methods in computation time and feature extraction, enabling rapid classification and assessment of HIE severity in newborns. Full article
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25 pages, 1441 KB  
Article
Unlocking Security for Comprehensive Electroencephalogram-Based User Authentication Systems
by Adnan Elahi Khan Khalil, Jesus Arturo Perez-Diaz, Jose Antonio Cantoral-Ceballos and Javier M. Antelis
Sensors 2024, 24(24), 7919; https://doi.org/10.3390/s24247919 - 11 Dec 2024
Cited by 2 | Viewed by 1916
Abstract
With recent significant advancements in artificial intelligence, the necessity for more reliable recognition systems has rapidly increased to safeguard individual assets. The use of brain signals for authentication has gained substantial interest within the scientific community over the past decade. Most previous efforts [...] Read more.
With recent significant advancements in artificial intelligence, the necessity for more reliable recognition systems has rapidly increased to safeguard individual assets. The use of brain signals for authentication has gained substantial interest within the scientific community over the past decade. Most previous efforts have focused on identifying distinctive information within electroencephalogram (EEG) recordings. In this study, an EEG-based user authentication scheme is presented, employing a multi-layer perceptron feedforward neural network (MLP FFNN). The scheme utilizes P300 potentials derived from EEG signals, focusing on the user’s intent to select specific characters. This approach involves two phases: user identification and user authentication. Both phases utilize EEG recordings of brain signals, data preprocessing, a database to store and manage these recordings for efficient retrieval and organization, and feature extraction using mutual information (MI) from selected EEG data segments, specifically targeting power spectral density (PSD) across five frequency bands. The user identification phase employs multi-class classifiers to predict the identity of a user from a set of enrolled users. The user authentication phase associates the predicted user identities with user labels using probability assessments, verifying the claimed identity as either genuine or an impostor. This scheme combines EEG data segments with user mapping, confidence calculations, and claimed user verification for robust authentication. It also accommodates new users by transforming EEG data into feature vectors without the need for retraining. The model extracts selected features to identify users and to classify the input based on these features to authenticate the user. The experiments show that the proposed scheme can achieve 97% accuracy in EEG-based user identification and authentication. Full article
(This article belongs to the Special Issue Advances in Brain–Computer Interfaces and Sensors)
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21 pages, 8458 KB  
Article
The Effect of Ironic Process Theory on Brain Signal-Based Encryption for IoT Devices
by Ahmet Furkan Aydogan, Cihan Varol, Narasimha Karpoor Shashidhar, Amar Rasheed, Van Vung Pham and Murat Karabatak
Electronics 2024, 13(23), 4804; https://doi.org/10.3390/electronics13234804 - 5 Dec 2024
Cited by 1 | Viewed by 1048
Abstract
Numerous encryption methods have been published to secure IoT devices in the last decade. Existing encryption methods still have disadvantages when it comes to securing IoT devices. On the other hand, a new encryption method using brain signals in IoT devices is gaining [...] Read more.
Numerous encryption methods have been published to secure IoT devices in the last decade. Existing encryption methods still have disadvantages when it comes to securing IoT devices. On the other hand, a new encryption method using brain signals in IoT devices is gaining attention as a new solution. The encryption method based on brain signals essentially involves a hypothesis called imposed recall based on ironic process theory. The imposed recall was created with the expectation that imposing a specific choice on the subjects during the acquisition of brain signals would allow for better separation of EEG data. This paper presents experiments and approaches to prove the validity of the imposed recall hypothesis. With the experiments, the effects of ironic process theory on brain signal-based encryption can be observed. While performing the tests, varying approaches, including Granger causality, were applied to analyze the results. The results show that the imposed recall hypothesis can successfully reconstruct EEG data. The structured signals were determined to be effective in capturing matches of brain signals on subjects at different time intervals. Thus, the imposed recall hypothesis can be used in various fields, such as authentication, questioning, and identification, by reserving brain signals to be obtained from individuals. In addition, it was reported that it is possible to acquire the ability to provide security in both devices with limited hardware, such as IoT devices or complex systems. Full article
(This article belongs to the Special Issue Futuristic Security and Privacy in 6G-Enabled IoT)
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19 pages, 633 KB  
Article
EEG and fNIRS Signal-Based Emotion Identification by Means of Machine Learning Algorithms During Visual Stimuli Exposure
by Daniel Sánchez-Reolid, Eloy García-Pérez, Alejandro L. Borja, Antonio Fernández-Caballero and Roberto Sánchez-Reolid
Electronics 2024, 13(23), 4797; https://doi.org/10.3390/electronics13234797 - 5 Dec 2024
Cited by 1 | Viewed by 3605
Abstract
This paper presents the identification of arousal and valence during visual stimuli exposure using electroencephalograms (EEGs) and functional near-infrared spectroscopy (fNIRS) signals. Specifically, various images were shown to several volunteers to evoke different emotions defined by their level of arousal and valence, such [...] Read more.
This paper presents the identification of arousal and valence during visual stimuli exposure using electroencephalograms (EEGs) and functional near-infrared spectroscopy (fNIRS) signals. Specifically, various images were shown to several volunteers to evoke different emotions defined by their level of arousal and valence, such as happiness, sadness, fear, and anger. Brain activity was recorded using the Emotiv EPOC X and NIRSport2 devices separately. The recorded signals were then processed and analyzed to identify the primary brain regions activated during the trials. Next, machine learning methods were employed to classify the evoked emotions with highest accuracy values of 71.3% for EEG data with a Multi-Layer Perceptron (MLP) method and 64.0% for fNIRS data using a Bagging Trees (BAG) algorithm. This approach not only highlights the effectiveness of using EEG and fNIRS technologies but also provides insights into the complex interplay between different brain areas during emotional experiences. By leveraging these advanced acquisition techniques, this study aims to contribute to the broader field of affective neuroscience and improve the accuracy of emotion recognition systems. The findings could have significant implications for developing intelligent systems capable of more empathetic interactions with humans, enhancing applications in areas such as mental health, human–computer interactions, or adaptive learning environments, among others. Full article
(This article belongs to the Special Issue New Advances of Brain-Computer and Human-Robot Interaction)
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13 pages, 2146 KB  
Article
Real-Time Postural Disturbance Detection Through Sensor Fusion of EEG and Motion Data Using Machine Learning
by Zhuo Wang, Avia Noah, Valentina Graci, Emily A. Keshner, Madeline Griffith, Thomas Seacrist, John Burns, Ohad Gal and Allon Guez
Sensors 2024, 24(23), 7779; https://doi.org/10.3390/s24237779 - 5 Dec 2024
Cited by 1 | Viewed by 1799
Abstract
Millions of people around the globe are impacted by falls annually, making it a significant public health concern. Falls are particularly challenging to detect in real time, as they often occur suddenly and with little warning, highlighting the need for innovative detection methods. [...] Read more.
Millions of people around the globe are impacted by falls annually, making it a significant public health concern. Falls are particularly challenging to detect in real time, as they often occur suddenly and with little warning, highlighting the need for innovative detection methods. This study aimed to assist in the advancement of an accurate and efficient fall detection system using electroencephalogram (EEG) data to recognize the reaction to a postural disturbance. We employed a state-space-based system identification approach to extract features from EEG signals indicative of reactions to postural perturbations and compared its performance with those of traditional autoregressive (AR) and Shannon entropy (SE) methods. Using EEG epochs starting from 80 ms after the onset of the event yielded improved performance compared with epochs that started from the onset. The classifier trained on the EEG data achieved promising results, with a sensitivity of up to 90.9%, a specificity of up to 97.3%, and an accuracy of up to 95.2%. Additionally, a real-time algorithm was developed to integrate the EEG and accelerometer data, which enabled accurate fall detection in under 400 ms and achieved an over 99% accuracy in detecting unexpected falls. This research highlights the potential of using EEG data in conjunction with other sensors for developing more accurate and efficient fall detection systems, which can improve the safety and quality of life for elderly adults and other vulnerable individuals. Full article
(This article belongs to the Special Issue Sensors and Sensing Technologies for Neuroscience)
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18 pages, 7087 KB  
Article
Steady-State Visual Evoked Potential-Based Brain–Computer Interface System for Enhanced Human Activity Monitoring and Assessment
by Yuankun Chen, Xiyu Shi, Varuna De Silva and Safak Dogan
Sensors 2024, 24(21), 7084; https://doi.org/10.3390/s24217084 - 3 Nov 2024
Cited by 2 | Viewed by 2452
Abstract
Advances in brain–computer interfaces (BCIs) have enabled direct and functional connections between human brains and computing systems. Recent developments in artificial intelligence have also significantly improved the ability to detect brain activity patterns. In particular, using steady-state visual evoked potentials (SSVEPs) in BCIs [...] Read more.
Advances in brain–computer interfaces (BCIs) have enabled direct and functional connections between human brains and computing systems. Recent developments in artificial intelligence have also significantly improved the ability to detect brain activity patterns. In particular, using steady-state visual evoked potentials (SSVEPs) in BCIs has enabled noticeable advances in human activity monitoring and identification. However, the lack of publicly available electroencephalogram (EEG) datasets has limited the development of SSVEP-based BCI systems (SSVEP-BCIs) for human activity monitoring and assisted living. This study aims to provide an open-access multicategory EEG dataset created under the SSVEP-BCI paradigm, with participants performing forward, backward, left, and right movements to simulate directional control commands in a virtual environment developed in Unity. The purpose of these actions is to explore how the brain responds to visual stimuli of control commands. An SSVEP-BCI system is proposed to enable hands-free control of a virtual target in the virtual environment allowing participants to maneuver the virtual target using only their brain activity. This work demonstrates the feasibility of using SSVEP-BCIs in human activity monitoring and assessment. The preliminary experiment results indicate the effectiveness of the developed system with high accuracy, successfully classifying 89.88% of brainwave activity. Full article
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21 pages, 5596 KB  
Article
EEG Data Augmentation Method for Identity Recognition Based on Spatial–Temporal Generating Adversarial Network
by Yudie Hu, Lei Sun, Xiuqing Mao and Shuai Zhang
Electronics 2024, 13(21), 4310; https://doi.org/10.3390/electronics13214310 - 2 Nov 2024
Cited by 5 | Viewed by 3414
Abstract
Traditional identity recognition methods are facing significant security challenges due to their vulnerability to leakage and forgery. Brainprint recognition, a novel biometric identification technology leveraging EEG signals, has emerged as a promising alternative owing to its advantages such as resistance to coercion, non-forgeability, [...] Read more.
Traditional identity recognition methods are facing significant security challenges due to their vulnerability to leakage and forgery. Brainprint recognition, a novel biometric identification technology leveraging EEG signals, has emerged as a promising alternative owing to its advantages such as resistance to coercion, non-forgeability, and revocability. Nevertheless, the scarcity of high-quality electroencephalogram (EEG) data limits the performance of brainprint recognition systems, necessitating the use of shallow models that may not perform optimally in real-world scenarios. Data augmentation has been demonstrated as an effective solution to address this issue. However, EEG data encompass diverse features, including temporal, frequency, and spatial components, posing a crucial challenge in preserving these features during augmentation. This paper proposes an end-to-end EEG data augmentation method based on a spatial–temporal generative adversarial network (STGAN) framework. Within the discriminator, a temporal feature encoder and a spatial feature encoder were parallelly devised. These encoders effectively captured global dependencies across channels and time of EEG data, respectively, leveraging a self-attention mechanism. This approach enhances the data generation capabilities of the GAN, thereby improving the quality and diversity of the augmented EEG data. The identity recognition experiments were conducted on the BCI-IV2A dataset, and Fréchet inception distance (FID) was employed to evaluate data quality. The proposed method was validated across three deep learning models: EEGNET, ShallowConvNet, and DeepConvNet. Experimental results indicated that data generated by STGAN outperform DCGAN and RGAN in terms of data quality, and the identity recognition accuracies on the three networks were improved by 2.49%, 2.59% and 1.14%, respectively. Full article
(This article belongs to the Section Artificial Intelligence)
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