151 results on '"EEG signal analysis"'
Search Results
2. Enhancing Motor Imagery Classification in Brain–Computer Interfaces Using Deep Learning and Continuous Wavelet Transform.
- Author
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Xie, Yu and Oniga, Stefan
- Subjects
MACHINE learning ,CONVOLUTIONAL neural networks ,PATTERN recognition systems ,WAVELET transforms ,MOTOR imagery (Cognition) - Abstract
In brain–computer interface (BCI) systems, motor imagery (MI) electroencephalogram (EEG) is widely used to interpret the human brain. However, MI classification is challenging due to weak signals and a lack of high-quality data. While deep learning (DL) methods have shown significant success in pattern recognition, their application to MI-based BCI systems remains limited. To address these challenges, we propose a novel deep learning algorithm that leverages EEG signal features through a two-branch parallel convolutional neural network (CNN). Our approach incorporates different input signals, such as continuous wavelet transform, short-time Fourier transform, and common spatial patterns, and employs various classifiers, including support vector machines and decision trees, to enhance system performance. We evaluate our algorithm using the BCI Competition IV dataset 2B, comparing it with other state-of-the-art methods. Our results demonstrate that the proposed method excels in classification accuracy, offering improvements for MI-based BCI systems. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
3. Internet of things based smart framework for the safe driving experience of two wheelers.
- Author
-
Chhabra, Gunjan, Kaushik, Keshav, Singh, Pardeep, Bathla, Gourav, Almogren, Ahmad, Bharany, Salil, Altameem, Ayman, and Ur Rehman, Ateeq
- Abstract
Several parameters affect our brain's neuronal system and can be identified by analyzing electroencephalogram (EEG) signals. One of the parameters is alcoholism, which affects the pattern of our EEG signals. By analyzing these EEG signals, one can derive information regarding the alcoholic or normal stage of an individual. Many road accident cases around the world, including drinking and driving scenarios, which result in loss of life, have been reported. Another reason for such incidents is that riders avoid wearing helmets while driving two-wheelers. Many road accident cases involving two-wheelers, including drinking, driving, overspeeding, and nonwearing helmets, have been reported. Therefore, to solve such issues, the present work highlights the features of an intelligent model that can predict the alcoholism level of the subject, wearing of a helmet, vehicle speed, location, etc. The system is designed with the latest technologies and is smart enough to make decisions. The system is based on multilayer perceptron, histogram of oriented gradients (HoG) feature extraction, and random forest to make decisions in real time. The accuracy of the proposed method is approximately 95%, which will reduce the fatality rate due to road accidents. The system is tested under different working environments, i.e., indoor and outdoor, and satisfactory outcomes are observed. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
4. A Comprehensive Review of Hardware Acceleration Techniques and Convolutional Neural Networks for EEG Signals.
- Author
-
Xie, Yu and Oniga, Stefan
- Subjects
- *
CONVOLUTIONAL neural networks , *SIGNAL processing , *MOTOR imagery (Cognition) , *FEATURE extraction , *ELECTROENCEPHALOGRAPHY - Abstract
This paper comprehensively reviews hardware acceleration techniques and the deployment of convolutional neural networks (CNNs) for analyzing electroencephalogram (EEG) signals across various application areas, including emotion classification, motor imagery, epilepsy detection, and sleep monitoring. Previous reviews on EEG have mainly focused on software solutions. However, these reviews often overlook key challenges associated with hardware implementation, such as scenarios that require a small size, low power, high security, and high accuracy. This paper discusses the challenges and opportunities of hardware acceleration for wearable EEG devices by focusing on these aspects. Specifically, this review classifies EEG signal features into five groups and discusses hardware implementation solutions for each category in detail, providing insights into the most suitable hardware acceleration strategies for various application scenarios. In addition, it explores the complexity of efficient CNN architectures for EEG signals, including techniques such as pruning, quantization, tensor decomposition, knowledge distillation, and neural architecture search. To the best of our knowledge, this is the first systematic review that combines CNN hardware solutions with EEG signal processing. By providing a comprehensive analysis of current challenges and a roadmap for future research, this paper provides a new perspective on the ongoing development of hardware-accelerated EEG systems. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
5. Internet of things based smart framework for the safe driving experience of two wheelers
- Author
-
Gunjan Chhabra, Keshav Kaushik, Pardeep Singh, Gourav Bathla, Ahmad Almogren, Salil Bharany, Ayman Altameem, and Ateeq Ur Rehman
- Subjects
Machine learning ,Internet of things ,Smart devices ,EEG signal analysis ,Data analysis ,Medicine ,Science - Abstract
Abstract Several parameters affect our brain's neuronal system and can be identified by analyzing electroencephalogram (EEG) signals. One of the parameters is alcoholism, which affects the pattern of our EEG signals. By analyzing these EEG signals, one can derive information regarding the alcoholic or normal stage of an individual. Many road accident cases around the world, including drinking and driving scenarios, which result in loss of life, have been reported. Another reason for such incidents is that riders avoid wearing helmets while driving two-wheelers. Many road accident cases involving two-wheelers, including drinking, driving, overspeeding, and nonwearing helmets, have been reported. Therefore, to solve such issues, the present work highlights the features of an intelligent model that can predict the alcoholism level of the subject, wearing of a helmet, vehicle speed, location, etc. The system is designed with the latest technologies and is smart enough to make decisions. The system is based on multilayer perceptron, histogram of oriented gradients (HoG) feature extraction, and random forest to make decisions in real time. The accuracy of the proposed method is approximately 95%, which will reduce the fatality rate due to road accidents. The system is tested under different working environments, i.e., indoor and outdoor, and satisfactory outcomes are observed.
- Published
- 2024
- Full Text
- View/download PDF
6. IMNMAGN: Integrative Multimodal Approach for Enhanced Detection of Neurodegenerative Diseases Using Fusion of Multidomain Analysis With Graph Networks
- Author
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R Vijay Anand, T Shanmuga Priyan, Madala Guru Brahmam, Balamurugan Balusamy, and Francesco Benedetto
- Subjects
Neurodegenerative diseases ,EEG signal analysis ,functional MRI ,genomic data analysis ,magnetoencephalography ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
The burgeoning field of neurodegenerative disease detection and management necessitates the development of robust and comprehensive diagnostic approaches. Existing methodologies often fall short in effectively capturing the complex interplay of brain signals and genetic markers, which are crucial in the early detection and progression tracking of such diseases. This paper introduces a novel multimodal framework that leverages advanced signal processing and machine learning techniques to address these limitations, providing a more accurate and holistic understanding of neurodegenerative diseases. Our proposed model integrates multiple modalities: EEG signal analysis using Time-Frequency Analysis and Wavelet Transform, functional Magnetic Resonance Imaging (fMRI) analyzed through Independent Component Analysis (ICA) and Correlation Analysis, Magnetoencephalography (MEG) employing Beamforming and Source Localization Techniques, and Genomic Data analysis using Graph Neural Network for Genetic Pattern Recognition process. This integration is realized through the fusion of modalities using Gated Recurrent Units (GRU) and the classification into disease classes via an efficient 1D Convolutional Neural Network (CNN). The reasons for selecting these methods are twofold: they address the non-stationary characteristics of EEG signals and exploit spatial information of brain activity, while also identifying functional networks and genetic patterns associated with neurodegeneration conditions. The clinical impact of this work is profound. Tested on the BioGPS and BrainLat datasets, our framework demonstrated a 10.4% increase in precision, 8.5% increase in accuracy, 8.3% increase in recall, 9.4% increase in the Area Under the Curve (AUC), 7.5% increase in specificity, and a 2.9% reduction in delay compared to existing methods.
- Published
- 2024
- Full Text
- View/download PDF
7. Enhancing Motor Imagery Classification in Brain–Computer Interfaces Using Deep Learning and Continuous Wavelet Transform
- Author
-
Yu Xie and Stefan Oniga
- Subjects
EEG signal analysis ,continuous wavelet transform ,convolutional neural networks ,feature extraction ,Technology ,Engineering (General). Civil engineering (General) ,TA1-2040 ,Biology (General) ,QH301-705.5 ,Physics ,QC1-999 ,Chemistry ,QD1-999 - Abstract
In brain–computer interface (BCI) systems, motor imagery (MI) electroencephalogram (EEG) is widely used to interpret the human brain. However, MI classification is challenging due to weak signals and a lack of high-quality data. While deep learning (DL) methods have shown significant success in pattern recognition, their application to MI-based BCI systems remains limited. To address these challenges, we propose a novel deep learning algorithm that leverages EEG signal features through a two-branch parallel convolutional neural network (CNN). Our approach incorporates different input signals, such as continuous wavelet transform, short-time Fourier transform, and common spatial patterns, and employs various classifiers, including support vector machines and decision trees, to enhance system performance. We evaluate our algorithm using the BCI Competition IV dataset 2B, comparing it with other state-of-the-art methods. Our results demonstrate that the proposed method excels in classification accuracy, offering improvements for MI-based BCI systems.
- Published
- 2024
- Full Text
- View/download PDF
8. A Comprehensive Review of Hardware Acceleration Techniques and Convolutional Neural Networks for EEG Signals
- Author
-
Yu Xie and Stefan Oniga
- Subjects
EEG signal analysis ,convolutional neural networks ,feature extraction ,hardware acceleration ,Chemical technology ,TP1-1185 - Abstract
This paper comprehensively reviews hardware acceleration techniques and the deployment of convolutional neural networks (CNNs) for analyzing electroencephalogram (EEG) signals across various application areas, including emotion classification, motor imagery, epilepsy detection, and sleep monitoring. Previous reviews on EEG have mainly focused on software solutions. However, these reviews often overlook key challenges associated with hardware implementation, such as scenarios that require a small size, low power, high security, and high accuracy. This paper discusses the challenges and opportunities of hardware acceleration for wearable EEG devices by focusing on these aspects. Specifically, this review classifies EEG signal features into five groups and discusses hardware implementation solutions for each category in detail, providing insights into the most suitable hardware acceleration strategies for various application scenarios. In addition, it explores the complexity of efficient CNN architectures for EEG signals, including techniques such as pruning, quantization, tensor decomposition, knowledge distillation, and neural architecture search. To the best of our knowledge, this is the first systematic review that combines CNN hardware solutions with EEG signal processing. By providing a comprehensive analysis of current challenges and a roadmap for future research, this paper provides a new perspective on the ongoing development of hardware-accelerated EEG systems.
- Published
- 2024
- Full Text
- View/download PDF
9. Editorial: Rising stars in motor neuroscience 2023
- Author
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Simone Carozzo and Andrea Demeco
- Subjects
motor neuroscience ,artificial neural networks—ANN ,EEG signal analysis ,motor process ,neuropathic pain (NeP) ,human neuroscience ,Neurosciences. Biological psychiatry. Neuropsychiatry ,RC321-571 - Published
- 2024
- Full Text
- View/download PDF
10. The Influence Assessment of Artifact Subspace Reconstruction on the EEG Signal Characteristics.
- Author
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Plechawska-Wójcik, Małgorzata, Augustynowicz, Paweł, Kaczorowska, Monika, Zabielska-Mendyk, Emilia, and Zapała, Dariusz
- Subjects
INDEPENDENT component analysis ,SIGNAL reconstruction ,BLIND source separation ,ARCHAEOLOGY methodology ,SIGNAL-to-noise ratio ,INDIVIDUAL differences ,WAKEFULNESS - Abstract
EEG signals may be affected by physiological and non-physiological artifacts hindering the analysis of brain activity. Blind source separation methods such as independent component analysis (ICA) are effective ways of improving signal quality by removing components representing non-brain activity. However, most ICA-based artifact removal strategies have limitations, such as individual differences in visual assessment of components. These limitations might be reduced by introducing automatic selection methods for ICA components. On the other hand, new fully automatic artifact removal methods are developed. One of such method is artifact subspace reconstruction (ASR). ASR is a component-based approach, which can be used automatically and with small calculation requirements. The ASR was originally designed to be run not instead of, but in addition to ICA. We compared two automatic signal quality correction approaches: the approach based only on ICA method and the approach where ASR was applied additionally to ICA and run before the ICA. The case study was based on the analysis of data collected from 10 subjects performing four popular experimental paradigms, including resting-state, visual stimulation and oddball task. Statistical analysis of the signal-to-noise ratio showed a significant difference, but not between ICA and ASR followed by ICA. The results show that both methods provided a signal of similar quality, but they were characterised by different usabilities. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
11. Learning EEG synchronization patterns for epileptic seizure prediction using bag-of-wave features
- Author
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Cui, Song, Duan, Lijuan, Qiao, Yuanhua, and Xiao, Ying
- Published
- 2023
- Full Text
- View/download PDF
12. Risk Related Prediction for Recurrent Stroke and Post-stroke Epilepsy Using Fractional Fourier Transform Analysis of EEG Signals
- Author
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Dulf, Eva-H., Ionescu, Clara-M., and Awrejcewicz, Jan, editor
- Published
- 2021
- Full Text
- View/download PDF
13. A Software Package for Monitoring Human Emotional Reactions and Cognitive Activity by Analyzing Biomedical Signals
- Author
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Sidorov, Konstantin V., Bodrina, Natalya I., Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Silhavy, Radek, editor, Silhavy, Petr, editor, and Prokopova, Zdenka, editor
- Published
- 2020
- Full Text
- View/download PDF
14. Editorial: Rising stars in motor neuroscience 2023.
- Author
-
Carozzo, Simone and Demeco, Andrea
- Subjects
NEUROSCIENCES ,ARTIFICIAL neural networks ,DUAL-task paradigm - Abstract
This document is an editorial published in Frontiers in Human Neuroscience in 2024. The editorial highlights the rising stars in motor neuroscience and their contributions to the field. It emphasizes the importance of understanding motor function and its neural mechanisms for understanding human behavior. The editorial discusses various topics, including motor learning, rehabilitation of motor disorders, and the use of innovative tools and technologies in motor neuroscience research. It also mentions specific studies on motion analysis in breast cancer patients, multivariate analysis using artificial neural networks, brain-computer interfaces for motor impairments, postural control in athletes, and the neural correlates of upper and lower limb movements. The editorial concludes by emphasizing the valuable insights provided by these researchers and their potential impact on future advancements in motor neuroscience. [Extracted from the article]
- Published
- 2024
- Full Text
- View/download PDF
15. Design of an EEG analytical methodology for the analysis and interpretation of cerebral connectivity signals.
- Author
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Córdova, Felisa M., Cifuentes, Hugo F., Díaz, Hernán A., Yanine, Fernando, and Pereira, Robertino
- Subjects
ELECTROENCEPHALOGRAPHY ,HILBERT transform ,SIGNAL filtering ,TIME series analysis ,EXPERIMENTAL design - Abstract
The objective of this study is to design an Electroencephalographic (EEG) analytic methodology that allows to develop a variety of analysis and interpretations of brain signals. The initial phase considers the acquisition and filtering of EEG signals, the division into bands in data ranges, and the storage of EEG signals in a cloud data base. Then, an analytical phase considering descriptive, predictive and prescriptive analysis is accomplished. A sequence of analytic intermediate processing steps is done in order to render a graphic visualization of significant correlations between pairs of EEG channels. Pearson correlation is utilized to detect synchronic connectivity through the brain areas. Time series in nearly instantaneous time lapses are treated by using Hilbert Huang Transform. An experimental design by submitting a set of students to an abbreviated version Raven visual test is made providing results in correlation maps of cerebral connectivity. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
16. Brain Computer Interface for Speech Synthesis Based on Multilayer Differential Neural Networks.
- Author
-
Llorente, Dusthon, Ballesteros, Mariana, Cruz-Ortiz, David, Salgado, Ivan, and Chairez, Isaac
- Subjects
- *
SPEECH synthesis , *COMPUTER interfaces , *ELECTROENCEPHALOGRAPHY , *BRAIN-computer interfaces , *SIGNAL processing - Abstract
This manuscript proposes the design of a speech synthesis algorithm based on measured electroencephalographic (EEG) signals previously classified by a class of neural network with continuous dynamics. A novel multilayer differential neural network (MDNN) classifies a database with the EEG studies of 20 volunteers. The database contains information described by input-output pairs corresponding to EEG signals and a corresponding word imagined by the volunteer. The suggested MDNN estimates the unknown relationship between the information instances and suggests the most-likely word that the user wants mentioning. The proposed MDNN satisfactory classifies over 95% a set of words obtained from the suggested EEG study in which, the users have to watch four different geometric figures on a screen. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
17. The Influence Assessment of Artifact Subspace Reconstruction on the EEG Signal Characteristics
- Author
-
Małgorzata Plechawska-Wójcik, Paweł Augustynowicz, Monika Kaczorowska, Emilia Zabielska-Mendyk, and Dariusz Zapała
- Subjects
artifact subspace reconstruction ,EEG signal analysis ,independent component analysis ,automatic EEG data correction ,Technology ,Engineering (General). Civil engineering (General) ,TA1-2040 ,Biology (General) ,QH301-705.5 ,Physics ,QC1-999 ,Chemistry ,QD1-999 - Abstract
EEG signals may be affected by physiological and non-physiological artifacts hindering the analysis of brain activity. Blind source separation methods such as independent component analysis (ICA) are effective ways of improving signal quality by removing components representing non-brain activity. However, most ICA-based artifact removal strategies have limitations, such as individual differences in visual assessment of components. These limitations might be reduced by introducing automatic selection methods for ICA components. On the other hand, new fully automatic artifact removal methods are developed. One of such method is artifact subspace reconstruction (ASR). ASR is a component-based approach, which can be used automatically and with small calculation requirements. The ASR was originally designed to be run not instead of, but in addition to ICA. We compared two automatic signal quality correction approaches: the approach based only on ICA method and the approach where ASR was applied additionally to ICA and run before the ICA. The case study was based on the analysis of data collected from 10 subjects performing four popular experimental paradigms, including resting-state, visual stimulation and oddball task. Statistical analysis of the signal-to-noise ratio showed a significant difference, but not between ICA and ASR followed by ICA. The results show that both methods provided a signal of similar quality, but they were characterised by different usabilities.
- Published
- 2023
- Full Text
- View/download PDF
18. Comparison of Classification Methods for EEG Signals of Real and Imaginary Motion
- Author
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Szczuko, Piotr, Lech, Michał, Czyżewski, Andrzej, Kacprzyk, Janusz, Series editor, Jain, Lakhmi C., Series editor, Stańczyk, Urszula, editor, and Zielosko, Beata, editor
- Published
- 2018
- Full Text
- View/download PDF
19. EEG Signals for Measuring Cognitive Development : A Study of EEG Signals Challenges and Prospects
- Author
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Aggarwal, Swati, Bansal, Prakriti, Garg, Sameer, Hutchison, David, Series Editor, Kanade, Takeo, Series Editor, Kittler, Josef, Series Editor, Kleinberg, Jon M., Series Editor, Mattern, Friedemann, Series Editor, Mitchell, John C., Series Editor, Naor, Moni, Series Editor, Pandu Rangan, C., Series Editor, Steffen, Bernhard, Series Editor, Terzopoulos, Demetri, Series Editor, Tygar, Doug, Series Editor, and Tiwary, Uma Shanker, editor
- Published
- 2018
- Full Text
- View/download PDF
20. EEG signal analysis using classification techniques: Logistic regression, artificial neural networks, support vector machines, and convolutional neural networks
- Author
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Maria Camila Guerrero, Juan Sebastián Parada, and Helbert Eduardo Espitia
- Subjects
Data classification ,Epilepsy diagnosis ,EEG signal analysis ,Fourier signal analysis ,Science (General) ,Q1-390 ,Social sciences (General) ,H1-99 - Abstract
Epilepsy is a brain abnormality that leads its patients to suffer from seizures, which conditions their behavior and lifestyle. Neurologists use an electroencephalogram (EEG) to diagnose this disease. This test illustrates the signaling behavior of a person's brain, allowing, among other things, the diagnosis of epilepsy. From a visual analysis of these signals, neurologists identify patterns such as peaks or valleys, looking for any indication of brain disorder that leads to the diagnosis of epilepsy in a purely qualitative way. However, by applying a test based on Fourier signal analysis through rapid transformation in the frequency domain, patterns can be quantitatively identified to differentiate patients diagnosed with the disease and others who are not. In this article, an analysis of the EEG signal is performed to extract characteristics in patients already classified as epileptic and non-epileptic, which will be used in the training of models based on classification techniques such as logistic regression, artificial neural networks, support vector machines, and convolutional neural networks. Based on the results obtained with each technique, an analysis is performed to decide which of these behaves better.In this study traditional classification techniques were implemented that had as data frequency data in the channels with distinctive information of EEG examinations, this was done through a feature extraction obtained with Fourier analysis considering frequency bands. The techniques used for classification were implemented in Python and through a comparison of metrics and performance, it was concluded that the best classification technique to characterize epileptic patients are artificial neural networks with an accuracy of 86%.
- Published
- 2021
- Full Text
- View/download PDF
21. EEG Signal Implementation of Movement Intention for the Teleoperation of the Mobile Differential Robot
- Author
-
Villegas-Cortez, Juan, Avilés-Cruz, Carlos, Cirilo-Cruz, Josué, Zuñiga-López, Arturo, Kacprzyk, Janusz, Series editor, Schütze, Oliver, editor, Trujillo, Leonardo, editor, Legrand, Pierrick, editor, and Maldonado, Yazmin, editor
- Published
- 2017
- Full Text
- View/download PDF
22. Deep Learning for Epilepsy monitoring: A survey
- Author
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Amrani Ghita, Adadi Amina, Berrada Mohammed, and Souirti Zouhayr
- Subjects
epilepsy ,deep learning ,electroencephalography ,eeg signal analysis ,Environmental sciences ,GE1-350 - Abstract
Diagnosis of epilepsy can be expensive, time-consuming, and often inaccurate. The gold standard diagnostic monitoring is continuous video-electroencephalography (EEG), which ideally captures all epileptic events and dis-charges. Automated monitoring of seizures and epileptic activity from EEG would save time and resources, it is the focus of much EEG-based epilepsy research. The purpose of this paper is to provide a survey in order to understand, classify and benchmark the key parameters of deep learning-based approaches that were applied in the processing of EEG signals for epilepsy monitoring. This survey identifies the availability of data and the black-box nature of DL as the main challenges hindering the clinical acceptance of EEG analysis systems based on Deep Learning and suggests the use of Explainable Artificial Intelligence (XAI) and Transfer Learning to overcome these issues. It also underlines the need for more research to recognize the full potential of big data, Computing Edge, IoT to implement wearable devices that can assist epileptic patients and improve their quality of life.
- Published
- 2022
- Full Text
- View/download PDF
23. Focal and Non-Focal Epilepsy Localization: A Review
- Author
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Ahmed Faeq Hussein, N. Arunkumar, Chandima Gomes, Abbas K. Alzubaidi, Qais Ahmed Habash, Luz Santamaria-Granados, Juan Francisco Mendoza-Moreno, and Gustavo Ramirez-Gonzalez
- Subjects
Focal epilepsy ,non-focal epilepsy ,time and frequency domain features ,nonlinear features ,machine learning algorithms ,EEG signal analysis ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
The focal and non-focal epilepsy is seen to be a chronic neurological brain disorder, which has affected $\approx ~60$ million people in the world. Hence, an early detection of the focal epileptic seizures can be carried out using the EEG signals, which act as a helpful tool for early diagnosis of epilepsy. Several EEG-based approaches have been proposed and developed to understand the underlying characteristics of the epileptic seizures. Despite the fact that the early results were positive, the proposed techniques cannot generate reproducible results and lack a statistical validation, which has led to doubts regarding the presence of the pre-ictal state. Various methodical and algorithmic studies have indicated that the transition to an ictal state is not a random process, and the build-up can lead to epileptic seizures. This study reviews many recently-proposed algorithms for detecting the focal epileptic seizures. Generally, the techniques developed for detecting the epileptic seizures were based on tensors, entropy, empirical mode decomposition, wavelet transform and dynamic analysis. The existing algorithms were compared and the need for implementing a practical and reliable new algorithm is highlighted. The research regarding the epileptic seizure detection research is more focused on the development of precise and non-invasive techniques for rapid and reliable diagnosis. Finally, the researchers noted that all the methods that were developed for epileptic seizure detection lacks standardization, which hinders the homogeneous comparison of the detector performance.
- Published
- 2018
- Full Text
- View/download PDF
24. Source Localization for Brain-Computer Interfaces
- Author
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Zaitcev, Aleksandr, Cook, Greg, Liu, Wei, Paley, Martyn, Milne, Elizabeth, Kacprzyk, Janusz, Series editor, Jain, Lakhmi C., Series editor, Hassanien, Aboul Ella, editor, and Azar, Ahmad Taher, editor
- Published
- 2015
- Full Text
- View/download PDF
25. Sleep stages classification from EEG signal based on Stockwell transform.
- Author
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Ghasemzadeh, Peyman, Kalbkhani, Hashem, and Shayesteh, Mahrokh G.
- Abstract
Sleep has great effect on physical health and quality of life. Electroencephalogram (EEG) signal is used in studying sleep process and recently, time–frequency transforms are increasingly utilised in EEG signal analysis. This study proposes an efficient method for sleep stages classification based on a time–frequency transform, namely Stockwell transform. In the introduced method, at first, the Stockwell transform is used to map each 30 s epoch of EEG signal into the time–frequency domains, which results in a complex‐valued matrix. Then, the frequency domain is divided into different non‐overlapping segments, leading to several matrices. After that, entropy features are extracted from the obtained matrices. In order to determine the sleep stage of each epoch, the computed features are applied to classifier. Support vector machine, weighted K ‐nearest neighbour, and ensemble bagged tree classifiers are considered. The Pz–Oz and Fpz–Cz channels of EEG signal from Sleep‐EDF data set and C3–A2 channel from ISRUC‐Sleep data set are used in this research. The results indicate that the proposed method outperforms the recently introduced methods. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
26. Brain Activity Monitoring for Stress Analysis through EEG Dataset using Machine Learning
- Author
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Suryawanshi, Renuka and Vanjale, Sandeep
- Subjects
KNN ,EEG Signal Analysis ,Stress Analysis ,DT ,ANN - Abstract
To determine the possible conditions of users during task execution, researchers employ psychological feedback tools such as skin conduction (S), electroencephalography (EEG), and electrocardiography (ECG). A set of protocols is developed via a series of cognitive studies in which participants complete a series of intellectually challenging activities. The high time resolution of electroencephalography (EEG) allows for continuous monitoring of brain conditions such as human mental effort, emotions, and stress levels. The main goal is to evaluate the efficiency of cognitive stress recognition systems. Lack of suitable EEG channels and bands selection for stress recognition system. Using brain interface for EEG with as few channels as possible. Quick Fourier Transform is a dimension reduction technique used to reduce the amount of data from the root. The acquired FFT and correlation-based feature subset selection methods were used to train three model taxonomic algorithms: SVM, K-Nearest Neighbor (KNN), Decision Tree (DT), and artificial Neural Networks (NN). We can expect brain monitoring such as stress to be cost effective and capable of reliable patient monitoring.
- Published
- 2023
27. Automatic Removal of Multiple Artifacts for Single-Channel Electroencephalography
- Author
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Nabil Sabor, Yong Lian, Yu Pu, Guoxing Wang, Junwen Luo, and Chenbei Zhang
- Subjects
Artifact (error) ,Multidisciplinary ,Channel (digital image) ,medicine.diagnostic_test ,Computer science ,business.industry ,Energy efficient algorithms ,Pattern recognition ,Electroencephalography ,Eeg recording ,InformationSystems_MODELSANDPRINCIPLES ,ComputingMethodologies_PATTERNRECOGNITION ,medicine ,Artificial intelligence ,business ,Wearable technology ,Eeg signal analysis ,Wearable eeg - Abstract
Removing different types of artifact from the electroencephalography (EEG) recordings is a critical step in performing EEG signal analysis and diagnosis. Most of the existing algorithms aim for removing single type of artifact, leading to a complex system if an EEG recording contains different types of artifact. With the advancement in wearable technologies, it is necessary to develop an energy efficient algorithm to deal with different types of artifact for single-channel wearable EEG devices. In this paper, an automatic EEG artifact removal algorithm is proposed that effectively reduces 3 types of artifact, i.e., ocular blink artifact (OA), transmission-line/harmonic wave artifact (TA/HA), and muscle artifact (MA), from a single-channel EEG recording. The effectiveness of the proposed algorithm is verified on both simulated noisy EEG signals and real EEG from CHB-MIT dataset. The experimental results show that the proposed algorithm effectively suppresses OA, MA, TA/HA from a single EEG channel record as well as physical movement artifact.
- Published
- 2021
28. Cognition and Education Management Method of Withdrawal Reaction for Students with Internet Addiction Based on EEG Signal Analysis.
- Author
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Peng Shan and Jiayin Pei
- Subjects
- *
COGNITION , *INTERNET addiction , *EDUCATION , *ELECTROENCEPHALOGRAPHY , *DYNAMICS - Abstract
This paper takes the cognition and education management method of withdrawal reaction for students with internet addiction as the research objective and adopts the research methods of literature method, brain science experiment and data analysis. This paper also introduces the EEG signal analysis method and use nonlinear dynamic analysis method and event-related potential technology, performing collection and data arrangement of EEG signals, SPN and P300 waveforms of prefrontal lobe of students with Internet addiction, analyzing behavioral characteristics and neurological changes in brain of students with Internet addiction from the perspectives of behavioral and EEG data. On this basis, the management method of withdrawal education for students with Internet addiction is proposed. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
29. Gamers’ involvement detection from EEG data with cGAAM – A method for feature selection for clustering.
- Author
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Rejer, Izabela and Twardochleb, Michal
- Subjects
- *
ELECTROENCEPHALOGRAPHY , *FEATURE selection , *VIDEO gamers , *VIDEO games , *K-means clustering - Abstract
This paper reports the results of an experiment to identify EEG patterns specific to different levels of player involvement when playing a video game. To obtain unbiased results, we based our patterns on both raw EEG data and expert knowledge. We used a three-step procedure to identify patterns. First, we looked for clusters in the reduced feature space extracted from EEG data. Next, we assigned experts’ interpretations to the clusters. Finally, we analysed relations between features used to form the clusters and the class labels provided by experts. The most challenging part of the procedure was feature selection simultaneous with unsupervised classification. To accomplish this task, we developed a new approach for simultaneous feature selection and clustering based on modified GAAM (genetic algorithm with aggressive mutation). When the cGAAM algorithm was applied to EEG data, it returned the feature subsets that (a) were highly consistent across subjects and (b) provided 50% more compact clusters than clusters built over the feature subsets returned by a forward selection search strategy. The main cognitive outcome of EEG signal analysis was a set of patterns differentiating players’ involvement in a game. Conclusions included: 1. For a majority of subjects the most discriminative features were activity in the theta band in the left and right frontal areas, and activity in the delta band in the left frontal area; 2. All three features significantly differentiated between low and high, or medium and high engagement; 3. All subjects showed positive correlations between selected feature values and levels of engagement. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
30. A Review on Nonlinear Methods Using Electroencephalographic Recordings for Emotion Recognition
- Author
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Beatriz García-Martínez, Raúl Alcaraz, Arturo Martínez-Rodrigo, and Antonio Fernández-Caballero
- Subjects
medicine.diagnostic_test ,Computer science ,Nonlinear methods ,Speech recognition ,020206 networking & telecommunications ,02 engineering and technology ,Stimulus (physiology) ,Electroencephalography ,Human-Computer Interaction ,Nonlinear system ,Distance measurement ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,020201 artificial intelligence & image processing ,Emotion recognition ,Time series ,Software ,Eeg signal analysis - Abstract
Electroencephalographic (EEG) recordings are receiving growing attention in the field of emotion recognition, since they monitor the brain’s first response to an external stimulus. Traditionally, EEG signals have been studied from a linear viewpoint by means of statistical and frequency features. Nevertheless, given that the brain follows a completely nonlinear and nonstationary behavior, linear metrics present certain important limitations. In this sense, the use of nonlinear methods has recently revealed new information that may help to understand how the brain works under a series of emotional states. Hence, this paper summarizes the most recent works that have applied nonlinear methods in EEG signal analysis for emotion recognition. This paper also identifies some nonlinear indices that have not been employed yet in this research area.
- Published
- 2021
31. Trends in the Brain-Computer Interface
- Author
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Matej Kostrec and Bohumír Štědroň
- Subjects
medicine ,medicine.diagnostic_test ,Computer science ,business.industry ,Interface (computing) ,brain-computer interface ,Aerospace Engineering ,neuro imaging ,electroencephalography (eeg) ,Electroencephalography ,Human being ,Term (time) ,brain activity imaging ,Software ,Human–computer interaction ,GV557-1198.995 ,Sports medicine ,inverse eeg problem ,business ,RC1200-1245 ,Digitization ,Sports ,Brain–computer interface ,Eeg signal analysis - Abstract
The goal of every human being on our planet is to improve the living conditions not only of his life, but also of all humanity. Digitization, dynamic development of technological equipment, unique software solutions and the transfer of human capabilities into the form of data enable the gradual achievement of this goal. The human brain is the source of all activities (physical, mental, decision-making, etc.) that a person performs. Therefore, the main goal of research is its functioning and the possibility to at least partially replace this functioning by external devices connected to a computer. The Brain-Computer Interface (BCI) is a term which represents a tool for performing external activities through sensed signals from the brain. This document describes various techniques that can be used to collect the neural signals. The measurement can be invasive or non-invasive. Electroencephalography (EEG) is the most studied non-invasive method and is therefore described in more detail in the presented paper. Once the signals from the brain are scanned, they need to be analysed in order to interpret them as computer commands. The presented methods of EEG signal analysis have advantages and disadvantages, either temporal or spatial. The use of the inverse EEG problem can be considered as a new trend to solve non-invasive high-resolution BCI.
- Published
- 2021
32. Wavelet Transform as a Helping Tool During EEG Analysis in Children with Epilepsy
- Author
-
Maja Muftić Dedović, Feriha Hadzagic-Catibusic, Nedis Dautbašić, Ibrahim Omerhodzic, Salko Zahirovic, Haso Sefo, Enra Suljic, and Samir Avdakovic
- Subjects
medicine.medical_specialty ,Original Paper ,medicine.diagnostic_test ,Eeg analysis ,business.industry ,analysis ,Wavelet transform ,General Medicine ,Audiology ,Electroencephalography ,medicine.disease ,Epilepsy ,Wavelet ,children ,Frequency resolution ,Elderly population ,Medicine ,epilepsy ,EEG ,business ,wavelet transform ,electroencephalography ,Eeg signal analysis - Abstract
Background: Epilepsy is a brain disorder characterised by unpredictable and excessive nerve cell activity that causes epileptic seizures. Epileptic seizures are more common in children and adolescents than in elderly population. Electroencephalography (EEG) is a diagram of electrical activity of the brain and it is used as a method of choice for diagnosing epilepsy. Despite the accurate EEG tracing of electrical activity in the brain, the disadvantage of this type of analysing is the doctor’s skill to read the EEG correctly. Objective: The aim of this study was ro represents further research presented in our pevious works with wavelet based EEG analysis after masuring a multiresolution as relation between time and frequency resolution. Methods: Signal database set consist of 51 patients: a) healthy patient; b) 50 patients with a diagnosis of epilepsy. Additional characteristics of the analysed data: a) 19 signals-channels of EEG, b) Duration – 20 s or 2688 samples and. Nowadays, we can find dozens of EEG signal analysis papers using mathematical approach and with a focus on identification of epilepsy. Results: This paper represents some results relating to the analysis of EEG in children using Wavelet Transform (WT). The signals was collected and analysed at the Department of neuropediatrics, Pediatric Clinic at the University Clinical Center, University of Sarajevo. Conclusion: Using this approach it is possible to clearly differentiate patients with a diagnosis of epilepsy from healthy ones.
- Published
- 2021
33. Prediction of advertisement preference by fusing EEG response and sentiment analysis.
- Author
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Gauba, Himaanshu, Kumar, Pradeep, Roy, Partha Pratim, Singh, Priyanka, Dogra, Debi Prosad, and Raman, Balasubramanian
- Subjects
- *
ADVERTISING , *STREAMING video & television , *ELECTROENCEPHALOGRAPHY , *SENTIMENT analysis , *VIDEO processing , *PREDICTION models - Abstract
This paper presents a novel approach to predict rating of video-advertisements based on a multimodal framework combining physiological analysis of the user and global sentiment-rating available on the internet. We have fused Electroencephalogram (EEG) waves of user and corresponding global textual comments of the video to understand the user’s preference more precisely. In our framework, the users were asked to watch the video-advertisement and simultaneously EEG signals were recorded. Valence scores were obtained using self-report for each video. A higher valence corresponds to intrinsic attractiveness of the user. Furthermore, the multimedia data that comprised of the comments posted by global viewers, were retrieved and processed using Natural Language Processing (NLP) technique for sentiment analysis. Textual contents from review comments were analyzed to obtain a score to understand sentiment nature of the video. A regression technique based on Random forest was used to predict the rating of an advertisement using EEG data. Finally, EEG based rating is combined with NLP-based sentiment score to improve the overall prediction. The study was carried out using 15 video clips of advertisements available online. Twenty five participants were involved in our study to analyze our proposed system. The results are encouraging and these suggest that the proposed multimodal approach can achieve lower RMSE in rating prediction as compared to the prediction using only EEG data. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
34. EEG Signal Analysis Using Machine Learning Techniques
- Author
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Venithraa G, N. S. Jai Aakash, Anurathi Bala, M. Ganesan, P. Hari Prasad, and Karthika R
- Subjects
General Computer Science ,Computer science ,Speech recognition ,General Engineering ,Eeg signal analysis - Published
- 2020
35. EEG signal analysis and detection of stress using classification techniques
- Author
-
Khyati Chopra and Ruchi Sharma
- Subjects
medicine.diagnostic_test ,Computer science ,business.industry ,Pattern recognition ,010103 numerical & computational mathematics ,02 engineering and technology ,Root cause ,Electroencephalography ,Mental illness ,medicine.disease ,01 natural sciences ,Support vector machine ,Stress (linguistics) ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,020201 artificial intelligence & image processing ,Artificial intelligence ,0101 mathematics ,business ,Eeg signal analysis - Abstract
Stress is the root cause of every mental problem. There are various ways for the occurrence of stress which has proven to give a negative impact on the human body. Hence, stress has a sever...
- Published
- 2020
36. A Review of EEG Signal Analysis for Diagnosis of Neurological Disorders using Machine Learning
- Author
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Vandana Joshi and Nirali R. Nanavati
- Subjects
Acoustics and Ultrasonics ,medicine.diagnostic_test ,business.industry ,Biomedical Engineering ,Disease ,Electroencephalography ,Machine learning ,computer.software_genre ,medicine.disease ,Atomic and Molecular Physics, and Optics ,Biomaterials ,Epilepsy ,Migraine ,medicine ,Dementia ,Artificial intelligence ,business ,computer ,Stroke ,Cause of death ,Eeg signal analysis - Abstract
Neurological disorders are diseases that affect the brain and the central autonomic nervous systems. These disorders take a huge toll on an individual's health and general well-being. After cardiovascular diseases, neurological disorders are the main cause of death. These disorders include epilepsy, Alzheimer’s disease, dementia, cerebrovascular diseases including stroke, migraine, Parkinson’s disease and numerous other disorders. This manuscript presents a state-of-the-art consolidated review of research on the diagnosis of the three most common neurological disorders using electroencephalogram (EEG) signals with machine learning techniques. The disorders discussed in this manuscript are the more prevalent disorders like epilepsy, Attention-deficit/hyperactivity disorder (ADHD), and Alzheimer’s disease. This manuscript helps in understanding the details about EEG signal processing for diagnosis and analysis of neurological disorders along with a discussion of the datasets, limitations, results and research scope of the various techniques.
- Published
- 2022
37. EEG-Based Diagnosis of Alzheimer's Disease Using Kolmogorov Complexity
- Author
-
Digambar Puri, Anil Nandgaonkar, Abhay Wagh, and Sanjay L. Nalbalwar
- Subjects
medicine.diagnostic_test ,Kolmogorov complexity ,Computer science ,business.industry ,Brain dysfunction ,Spectral entropy ,Pattern recognition ,Disease ,Electroencephalography ,medicine.disease ,Feature (computer vision) ,medicine ,Dementia ,Artificial intelligence ,business ,Eeg signal analysis - Abstract
Alzheimer's disease (AD) is the most common and fastest growing neurodegenerative disorder of the brain due to dementia in old age people in Western countries. Detection and identification of AD patients from normal subjects using EEG biomarkers is a research problem. This study has developed an automatic detection of AD patients using Spectral Entropy (SE) and Kolmogorov Complexity (KC) feature sets. It is observed that (i) the SE value is low in AD patient's EEG signals compared to normal controlled subjects. (ii) AD patients’ EEG is more regular compared to normal controlled subjects, as shown by KC features. These feature sets have been computed and compared based on statistical measures of classifiers. We have used six different supervised and unsupervised classifiers in this research. Support Vector Machine classifier had performed well compared to others and achieved more than 95% accuracy when we provided both SE and KC feature sets. This work suggests that nonlinear EEG signal analysis can contribute to enhancing insights into brain dysfunction in AD.
- Published
- 2021
38. EEG signal analysis using classification techniques: Logistic regression, artificial neural networks, support vector machines, and convolutional neural networks
- Author
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Helbert Eduardo Espitia, Maria Camila Guerrero, and Juan Sebastián Parada
- Subjects
H1-99 ,Signal processing ,Multidisciplinary ,Science (General) ,Artificial neural network ,medicine.diagnostic_test ,business.industry ,Computer science ,Data classification ,Feature extraction ,Pattern recognition ,Fourier signal analysis ,Electroencephalography ,Convolutional neural network ,Support vector machine ,Social sciences (General) ,Q1-390 ,Frequency domain ,medicine ,Artificial intelligence ,Epilepsy diagnosis ,business ,Research Article ,EEG signal analysis - Abstract
Epilepsy is a brain abnormality that leads its patients to suffer from seizures, which conditions their behavior and lifestyle. Neurologists use an electroencephalogram (EEG) to diagnose this disease. This test illustrates the signaling behavior of a person's brain, allowing, among other things, the diagnosis of epilepsy. From a visual analysis of these signals, neurologists identify patterns such as peaks or valleys, looking for any indication of brain disorder that leads to the diagnosis of epilepsy in a purely qualitative way. However, by applying a test based on Fourier signal analysis through rapid transformation in the frequency domain, patterns can be quantitatively identified to differentiate patients diagnosed with the disease and others who are not. In this article, an analysis of the EEG signal is performed to extract characteristics in patients already classified as epileptic and non-epileptic, which will be used in the training of models based on classification techniques such as logistic regression, artificial neural networks, support vector machines, and convolutional neural networks. Based on the results obtained with each technique, an analysis is performed to decide which of these behaves better. In this study traditional classification techniques were implemented that had as data frequency data in the channels with distinctive information of EEG examinations, this was done through a feature extraction obtained with Fourier analysis considering frequency bands. The techniques used for classification were implemented in Python and through a comparison of metrics and performance, it was concluded that the best classification technique to characterize epileptic patients are artificial neural networks with an accuracy of 86%., Data classification; Epilepsy diagnosis; EEG signal analysis; Fourier signal analysis
- Published
- 2021
39. Sedation in the intensive care unit - part II. Depth of sedation monitoring using EEG signal analysis
- Author
-
Vladimír Šrámek, J Beneš, Pavel Suk, and J Kletečka
- Subjects
Anesthesiology and Pain Medicine ,law ,business.industry ,Sedation ,Anesthesia ,medicine ,medicine.symptom ,Critical Care and Intensive Care Medicine ,business ,Intensive care unit ,law.invention ,Eeg signal analysis - Abstract
Sedace je jednim z nejcastějsich terapeutických opatřeni na jednotkach intenzivni pece. Aktualnim trendem je snaha o jeji minimalizaci a pravidelne sledovani urovně sedace za pomoci validovaných skorovacich systemů. Monitorace hloubky anestezie a sedace, založena na analýze EEG, je již delsi dobu použivana v anesteziologii. Druhý dil přehledoveho clanku se zabýva vývojem teto technologie a jeji přenositelnosti do prostředi intenzivni mediciny.
- Published
- 2020
40. EEG Signal Analysis for Automated Epilepsy Seizure Detection Using Wavelet Transform and Artificial Neural Network
- Author
-
Cross T. Ashawise, G. R. Suresh, T. Balakumaran, and S. Vani
- Subjects
Artificial neural network ,Computer science ,business.industry ,Wavelet transform ,Health Informatics ,Radiology, Nuclear Medicine and imaging ,Pattern recognition ,Artificial intelligence ,Epilepsy seizure ,business ,Eeg signal analysis - Abstract
Electroencephalogram (EEG) measures electrical activity of the brain and proffers valuable insight of the brain dynamics. Accurate and careful analysis of EEG signal plays a prominent role in the diagnosis of brain diseases like epilepsy, brain tumor. EEG is the most significant method used for epilepsy monitoring, diagnosis and rehabilitation. A patient-specific seizure detection model has been developed using Haar wavelet and Artificial Neural Network. HAAR Wavelet decomposition of multi-channel EEG with five scales is made and three frequency bands of EEG selected for the consequent process. The conventional Haar wavelet transform (HWT) is replaced by a modified Haar wavelet transform whereas the number of multiplications and additions are reduced. The Haar wavelet reduces computational complexity from the existing Haar wavelet structure which consumes only 1–3 ms based on the decomposition level to detect epilepsy.
- Published
- 2019
41. Total Variation Denoising techniques for artifact removal from EEG signals
- Author
-
Ahsan Ali and D.P Subha
- Subjects
0209 industrial biotechnology ,Signal processing ,Artifact (error) ,medicine.diagnostic_test ,Computer science ,business.industry ,Low-pass filter ,Noise reduction ,Pattern recognition ,02 engineering and technology ,Total variation denoising ,Electroencephalography ,020901 industrial engineering & automation ,Signal-to-noise ratio ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,020201 artificial intelligence & image processing ,Artificial intelligence ,business ,Eeg signal analysis - Abstract
In detecting brain activity and behavior, the Electroencephalogram (EEG) plays a key role. The EEG signals recorded are almost always corrupted by artifacts and hence affect the EEG signal analysis. Therefore, it is highly essential to devise techniques to extract noise-free EEG data from the recorded EEG signals. The performance efficiency of two variation denoising methods: Simultaneous Low-Pass Filtering/Total Variation Denoising(LPF/TVD) and Transient Artifact Reduction Algorithm (TARA) in artifact removal from Schizophrenia (SZ) patient’s and healthy adolescent’s EEG signals are being evaluated. The artifact removal technique of TARA is a modified genre of Simultaneous LowPass Filtering and Total Variation Denoising (LPF/TVD). It has been observed that TARA performs well in denoising the signals from a group of 45 SZ and 39 healthy control EEG signals. The efficiency of the methods is evaluated using the index of Signal to noise ratio (SNR). A high SNR value for TARA shows the efficiency of this method in removing the artifacts from SZ EEG signals.
- Published
- 2021
42. Investigation of Quantitative Electroencephalography Markers for Schizophrenia Diagnosis using Variational Mode decomposition
- Author
-
Lokesh Kumar Singh, Sai Krishna Tikka, Bikesh Kumar Singh, and Soumya jain
- Subjects
Schizophrenia disorder ,medicine.diagnostic_test ,Computer science ,business.industry ,Schizophrenia (object-oriented programming) ,Feature extraction ,Pattern recognition ,Electroencephalography ,Quantitative electroencephalography ,medicine ,Decomposition method (queueing theory) ,Variational mode decomposition ,Artificial intelligence ,business ,Eeg signal analysis - Abstract
Analyzing the human brain and detection of brain disorders using Electroencephalography (EEG) have gained impetus over past few years. Schizophrenia is a mental disorder which affects the functioning of brain. In this paper, we aim to determine quantitative significant EEG features which can be used to differentiate person having schizophrenia disorder and the healthy ones. Variational mode decomposition method (VMD) is used for feature extraction followed by statistical significance analysis of the extracted values. VMD is a popular decomposition method due to its adaptive nature. In this study, we also aim to examine the efficacy of the method in EEG signal analysis. Six different features were calculated and analyzed over the decomposed EEG signal. Analysis is done by performing statistical significance test on SPSS version 23 and by observing the p-values and error bar graphs. Results indicate that five out of six features turned out to be a very good indicator/markers. Hence, this method could be further extended by applying machine learning approach for the classification based on obtained feature set.
- Published
- 2021
43. Identification of Breathing Patterns through EEG Signal Analysis Using Machine Learning
- Author
-
Hang-Keun Kim, Young Don Son, Chang-Ki Kang, and Yong-Gi Hong
- Subjects
breathing ,EEG ,machine learning ,LDA ,random forest ,working memory task ,Mouth breathing ,02 engineering and technology ,Electroencephalography ,Machine learning ,computer.software_genre ,Article ,lcsh:RC321-571 ,03 medical and health sciences ,0302 clinical medicine ,Breathing pattern ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,lcsh:Neurosciences. Biological psychiatry. Neuropsychiatry ,Nose ,medicine.diagnostic_test ,Working memory ,business.industry ,General Neuroscience ,digestive, oral, and skin physiology ,Identification (information) ,medicine.anatomical_structure ,Breathing ,020201 artificial intelligence & image processing ,Artificial intelligence ,medicine.symptom ,business ,computer ,030217 neurology & neurosurgery ,Eeg signal analysis - Abstract
This study was to investigate the changes in brain function due to lack of oxygen (O2) caused by mouth breathing, and to suggest a method to alleviate the side effects of mouth breathing on brain function through an additional O2 supply. For this purpose, we classified the breathing patterns according to EEG signals using a machine learning technique and proposed a method to reduce the side effects of mouth breathing on brain function. Twenty subjects participated in this study, and each subject performed three different breathings: nose and mouth breathing and mouth breathing with O2 supply during a working memory task. The results showed that nose breathing guarantees normal O2 supply to the brain, but mouth breathing interrupts the O2 supply to the brain. Therefore, this comparative study of EEG signals using machine learning showed that one of the most important elements distinguishing the effects of mouth and nose breathing on brain function was the difference in O2 supply. These findings have important implications for the workplace environment, suggesting that special care is required for employees who work long hours in confined spaces such as public transport, and that a sufficient O2 supply is needed in the workplace for working efficiency.
- Published
- 2021
- Full Text
- View/download PDF
44. EEG Signal Analysis for Seizure Detection Using Recurrence Plots and Tchebichef Moments
- Author
-
Theofanis Kalampokas, George A. Papakostas, and Konstantinos Tziridis
- Subjects
medicine.diagnostic_test ,business.industry ,Computer science ,Deep learning ,Multiplicative function ,Pattern recognition ,Context (language use) ,02 engineering and technology ,Electroencephalography ,Convolutional neural network ,03 medical and health sciences ,0302 clinical medicine ,Seizure detection ,Robustness (computer science) ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,020201 artificial intelligence & image processing ,Artificial intelligence ,business ,030217 neurology & neurosurgery ,Eeg signal analysis - Abstract
This paper deals with seizure detection by processing EEG signals. In this context a methodology for transforming 1D EEG signals to 2D images thus the detection task can be accomplished by the Convolutional Neural Networks (CNNs) is proposed. The introduced method utilizing the high compactness of the Tchebichef moments along with the highly informative Recurrence Plots (RPs) that permits the application of pre-trained CNN models to detect the seizure cases. The proposed scheme provides improved detection accuracy up to 98% for the case of the Resnet18 model, while it shows outstanding robustness to additive (97%) as well as multiplicative (90%) noisy conditions. In this sense, the method outperforms the conventional approach of using the RPs to describe the raw EEG signals, by a factor of 1 %-5%. These results are very promising and justify the efficiency of the introduced method, towards establishing a concrete and robust EEG signals analysis approach.
- Published
- 2021
45. Resting-State EEG Sex Classification Using Selected Brain Connectivity Representation
- Author
-
Jeremiah D. Deng, Jean Li, Divya Bharatkumar Adhia, and Dirk De Ridder
- Subjects
Epilepsy ,medicine.diagnostic_test ,Computer science ,Eeg analysis ,Head injury ,medicine ,Resting state eeg ,Dementia ,Eye movement ,Electroencephalography ,medicine.disease ,Neuroscience ,Eeg signal analysis - Abstract
Electroencephalography (EEG) is a widely used non-invasive technique to measure multi-channel potentials that reflect the electrical activity of the brain. Over the last few decades, EEG analysis has been an intensively explored research topic due to its potentials in being applied to the diagnosis of neurological diseases, such as epilepsy, brain tumors, head injury, sleep disorders, and dementia [19]. Despite many advances made in recent years, EEG signal analysis remains a challenging task. In addition to being non-stationary, EEG signals often have high noise-to-information ratios, and they can be significantly affected by various artifacts, demonstrating characteristics that differ from signals generated by activities in the brain [21]. Common artifacts include eye movements, jaw tension, and muscle contractions. To make effective signal analysis even more challenging, EEG signals are highly individual-specific, and cross-subject pattern identification can be elusive.
- Published
- 2021
46. Brain Activity Analysis for Stress Recognition
- Author
-
Aishwarya Wakale and Usha Verma
- Subjects
Stress (mechanics) ,Arduino uno ,Artificial neural network ,Brain activity and meditation ,Computer science ,business.industry ,education ,Range (statistics) ,Stress recognition ,Pattern recognition ,Artificial intelligence ,business ,Eeg signal analysis - Abstract
The stress is the major problem that occurs in daily life, which affects on the physical and mental health. There are various methods for detection of stress. In this paper, EEG signal analysis is used for stress recognition. The output of a neurosky mindwave mobile 2 sensor is waves like alpha, beta, and gamma in a specific range. By analyzing these values and keeping a threshold, the dataset formation occurs, and further to train the data, artificial neural network technique (RBFN algorithm) is used. The system learns and is trained using RBFN. The states (stress) are detected. The work is tested on hundred cases and found 80% accurate.
- Published
- 2021
47. Characteristic changes in EEG spectral powers of patients with opioid-use disorder as compared with those with methamphetamine- and alcohol-use disorders
- Author
-
William To, John J. Callanan, Rui Tao, Christopher Minnerly, and Ibrahim M. Shokry
- Subjects
Male ,Physiology ,Alcohol use disorder ,Audiology ,Electroencephalography ,Biochemistry ,Methamphetamine ,Mathematical and Statistical Techniques ,Cortex (anatomy) ,Medicine and Health Sciences ,Statistical Signal Processing ,Statistical Data ,Clinical Neurophysiology ,Brain Mapping ,Multidisciplinary ,medicine.diagnostic_test ,Statistics ,Software Engineering ,Brain ,Opioid use disorder ,Middle Aged ,Substance abuse ,Electrophysiology ,Alcoholism ,medicine.anatomical_structure ,Bioassays and Physiological Analysis ,Brain Electrophysiology ,Physical Sciences ,Engineering and Technology ,Medicine ,Female ,Analysis of variance ,medicine.drug ,Research Article ,Adult ,medicine.medical_specialty ,Computer and Information Sciences ,Imaging Techniques ,Substance-Related Disorders ,Science ,Neurophysiology ,Neuroimaging ,Research and Analysis Methods ,Computer Software ,Artificial Intelligence ,Mental Health and Psychiatry ,medicine ,Humans ,In patient ,Statistical Methods ,Retrospective Studies ,Analysis of Variance ,business.industry ,Electrophysiological Techniques ,Biology and Life Sciences ,medicine.disease ,Opioid-Related Disorders ,Signal Processing ,Clinical Medicine ,business ,Mathematics ,Biomarkers ,Eeg signal analysis ,Neuroscience - Abstract
Electroencephalography (EEG) likely reflects activity of cortical neurocircuits, making it an insightful estimation for mental health in patients with substance use disorder (SUD). EEG signals are recorded as sinusoidal waves, containing spectral amplitudes across several frequency bands with high spatio-temporal resolution. Prior work on EEG signal analysis has been made mainly at individual electrodes. These signals can be evaluated from advanced aspects, including sub-regional and hemispheric analyses. Due to limitation of computational techniques, few studies in earlier work could conduct data analyses from these aspects. Therefore, EEG in patients with SUD is not fully understood. In the present retrospective study, spectral powers from a data house containing opioid (OUD), methamphetamine/stimulants (MUD), and alcohol use disorder (AUD) were extracted, and then converted into five distinct topographic data (i.e., electrode-based, cortical subregion-based, left-right hemispheric, anterior-posterior based, and total cortex-based analyses). We found that data conversion and reorganization in the topographic way had an impact on EEG spectral powers in patients with OUD significantly different from those with MUD or AUD. Differential changes were observed from multiple perspectives, including individual electrodes, subregions, hemispheres, anterior-posterior cortices, and across the cortex as a whole. Understanding the differential changes in EEG signals may be useful for future work with machine learning and artificial intelligence (AI), not only for diagnostic but also for prognostic purposes in patients with SUD.
- Published
- 2021
48. A study of the influence of meditation and music therapy on the vital parameters of the human body through EEG signal analysis: a review
- Author
-
Bikesh Kumar Singh, Anurag Shrivastava, and Neelamshobha Nirala
- Subjects
medicine.medical_specialty ,Music therapy ,media_common.quotation_subject ,medicine ,Human body ,Meditation ,Audiology ,Psychology ,Eeg signal analysis ,media_common - Published
- 2020
49. Drowsy Driving Detection by EEG Analysis Using Wavelet Transform and K-means Clustering.
- Author
-
Gurudath, Nikita and Riley, H. Bryan
- Subjects
DROWSY driving ,ELECTROENCEPHALOGRAPHY ,WAVELET transforms ,K-means clustering ,COMPUTER software ,SIGNAL processing - Abstract
This research aims to develop a driver drowsiness monitoring system by analyzing the electroencephalographic (EEG) signals in a software scripted environment and using a driving simulator. These signals are captured by a multi-channel electrode system. Any muscle movement impacts the EEG signal recording which translates to artifacts. Therefore, noise from the recording is eliminated by subtracting the noisy signal from the original EEG recording. The actual EEG signals are then subjected to band pass filtering with cut-off frequencies 0.5Hz and 100Hz. The filtered signals are analyzed using a time-frequency technique known as the Discrete Wavelet Transform (DWT). A third order Debauchies' wavelet and five level decomposition is utilized to segregate the signal into five sub-bands, namely, delta (0.5 - 4Hz), theta (4 - 8Hz), alpha (8 - 12Hz), beta (12 - 30Hz) and gamma (> 30Hz). First order statistical moments such as mean, median, variance, standard deviation and mode of the sub-bands are calculated and stored as features. These features serve as an input to the next stage of system classification. Unsupervised learning through K-means clustering is employed since the classes of the signals are unknown. This provides a strong decision making tool for a real-time drowsiness detection system. The algorithm developed in this work has been tested on twelve samples from the Physionet sleep-EDF database. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF
50. Neural States in Tourism Travel Videos
- Author
-
Pablo Ruiz, Raquel Tinoco-Egas, and Carlos Cevallos-Barragán
- Subjects
Channel (digital image) ,medicine.diagnostic_test ,Computer science ,business.industry ,Customer preference ,Neuromarketing ,lcsh:A ,Pattern recognition ,Emotiv ,Electroencephalography ,video ,Field (computer science) ,Ministate ,microstate ,medicine ,EEG ,Artificial intelligence ,lcsh:General Works ,neuromarketing ,business ,Tourism ,Eeg signal analysis - Abstract
In marketing, there are many methods to relate reactions to products to customer preference. Current electroencephalography (EEG) signal analysis in the neuromarketing field focuses mainly on correlations between selected electrodes and hemisphere-based analysis on single scalp measures. The present study shows microstate analysis of brain EEG signals in goal-oriented videos. We measured a 16 channel EEG with an Emotiv EPOC+ device. We used two oriented videos from the Ecuadorian Government to publicize Ecuador as a tourist destination. We used a Topographic Atomize and Agglomerate Hierarchical Clustering (TAAHC) microstate analysis for the duration of the EEG as the participants watched each video. We picked the four predominant, in total time and repeatability, microstate maps that represent more than 50% of the entire recording time. We also show, in time, how topographies are represented along the video, which in a later step could be correlated with the images observed in the videos. We show the existing relations between the existing microstates. A microstate analysis of brain signal behavior across time might be a valid methodology and useful tool to analyze videos with marketing purposes.
- Published
- 2020
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