• Title/Summary/Keyword: EEG Classification

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Input Pattern Vector Extraction and Pattern Recognition of EEG (뇌파의 입력패턴벡터 추출 및 패턴인식)

  • Lee, Yong-Gu;Lee, Sun-Yeob;Choi, Woo-Seung
    • Journal of the Korea Society of Computer and Information
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    • v.11 no.5 s.43
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    • pp.95-103
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    • 2006
  • In this paper, the input pattern vectors are extracted and the learning algorithms is designed to recognize EEG pattern vectors. The frequency and amplitude of alpha rhythms and beta rhythms are used to compose the input pattern vectors. And the algorithm for EEG pattern recognition is used SOM to learn initial reference vectors and out-star learning algorithm to determine the class of the output neurons of the subclass layer. The weights of the proposed algorithm which is between the input layer and the subclass layer can be learned to determine initial reference vectors by using SOM algorithm and to learn reference vectors by using LVQ algorithm, and pattern vectors is classified into subclasses by neurons which is being in the subclass layer, and the weights between subclass layer and output layer is learned to classify the classified subclass, which is enclosed a class. To classify the pattern vectors of EEG, the proposed algorithm is simulated with ones of the conventional LVQ, and it was a confirmation that the proposed learning method is more successful classification than the conventional LVQ.

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Development of a Hybrid fNIRS-EEG System for a Portable Sleep Pattern Monitoring Device (휴대용 수면 패턴 모니터링을 위한 복합 fNIRS-EEG 시스템 개발)

  • Gyoung-Hahn Kim;Seong-Woo Woo;Sung Hun Ha;Jinlong Piao;MD Sahin Sarker;Baejeong Park;Chang-Sei Kim
    • Journal of Biomedical Engineering Research
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    • v.44 no.6
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    • pp.392-403
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    • 2023
  • This study presents a new hybrid fNIRS-EEG system to meet the demand for a lightweight and low-cost sleep pattern monitoring device. For multiple-channel configuration, a six-channel electroencephalogram (EEG) and a functional near-infrared spectroscopy (fNIRS) system with eight photodiodes (PD) and four dual-wavelength LEDs are designed. To enhance the convenience of signal measurement, the device is miniaturized into a patch-like form, enabling simultaneous measurement on the forehead. Due to its fully integrated functionality, the developed system is advantageous for performing sleep stage classification with high-temporal and spatial resolution data. This can be realized by utilizing a two-dimensional (2D) brain activation map based on the concentration changes in oxyhemoglobin and deoxyhemoglobin during sleep stage transitions. For the system verification, the phantom model with known optical properties was tested at first, and then the sleep experiment for a human subject was conducted. The experimental results show that the developed system qualifies as a portable hybrid fNIRS-EEG sleep pattern monitoring device.

EEG based Vowel Feature Extraction for Speech Recognition System using International Phonetic Alphabet (EEG기반 언어 인식 시스템을 위한 국제음성기호를 이용한 모음 특징 추출 연구)

  • Lee, Tae-Ju;Sim, Kwee-Bo
    • Journal of the Korean Institute of Intelligent Systems
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    • v.24 no.1
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    • pp.90-95
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    • 2014
  • The researchs using brain-computer interface, the new interface system which connect human to macine, have been maded to implement the user-assistance devices for control of wheelchairs or input the characters. In recent researches, there are several trials to implement the speech recognitions system based on the brain wave and attempt to silent communication. In this paper, we studied how to extract features of vowel based on international phonetic alphabet (IPA), as a foundation step for implementing of speech recognition system based on electroencephalogram (EEG). We conducted the 2 step experiments with three healthy male subjects, and first step was speaking imagery with single vowel and second step was imagery with successive two vowels. We selected 32 channels, which include frontal lobe related to thinking and temporal lobe related to speech function, among acquired 64 channels. Eigen value of the signal was used for feature vector and support vector machine (SVM) was used for classification. As a result of first step, we should use over than 10th order of feature vector to analyze the EEG signal of speech and if we used 11th order feature vector, the highest average classification rate was 95.63 % in classification between /a/ and /o/, the lowest average classification rate was 86.85 % with /a/ and /u/. In the second step of the experiments, we studied the difference of speech imaginary signals between single and successive two vowels.

Development of an Optimal EEG and Artifact Classifier Using Neural Network Operating Characteristics (신경망 운영특성곡선을 이용한 최적의 뇌파 및 Artifact 분류기 구성)

  • Lee, T.Y.;Ahn, C.B.;Lee, S.H.
    • Proceedings of the KOSOMBE Conference
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    • v.1995 no.05
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    • pp.160-163
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    • 1995
  • An optimal EEG and artifact classifier is proposed using neural network operating characteristics. The neural network operating characteristics are two dimensional parametric representations of the right and false identification probabilities of the network classifier. Since the EEG and EP signals acquired from multi -channel electrodes placed on the head surface are often interfered by other relatively large physiological signals such as electromyogram (EMG) or electroculogram (EOG), the removal of the artifact-affected EEGs is one of the key elements in neuro-functional mapping. Conventionally this task has been carried out by human experts spending lots of examination time. Using the neural-network based classification, human expert's efforts and time can be substantially reduced. From experiments, the neural-network based classification performs as good as human experts: variation of decisions between the neural network and human expert appears even smaller than that between human experts.

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An EEG Classifier Representing Subject's Characteristics for Brain-Computer Interface (뇌-컴퓨터 인터페이스를 위한 개인의 특성을 반영하는 뇌파 분류기)

  • Kim, Do-Yeon;Lee, Kwang-Hyung;Hwang, Min-Cheol
    • Journal of KIISE:Software and Applications
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    • v.27 no.1
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    • pp.24-32
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    • 2000
  • BCI(Brain-Computer Interface) is studied to control the machines with brain. In this study, an EEG(Electroencephalography) signal classification model is proposed. The model gets EEG pattern from each subject's brain and extracts characteristic features. The model discriminates the EEG patterns by using those extracted characteristic features of each subject. The proposed method classifies each pair of the given tasks and combines the results to give the final result. Four tasks such as rest, movement, mental-arithmetic calculation and point-fixing were used in the experiment. Over 90% of the trials, the model yielded successful results. The model exploits characteristic features of the subjects and the weight table that was produced after training. The analysis results of the model such as its high success rates and short processing time show that it can be used in a real-time brain-computer interface system.

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EEG Classification for depression patients using decision tree and possibilistic support vector machines (뇌파의 의사 결정 트리 분석과 가능성 기반 서포트 벡터 머신 분석을 통한 우울증 환자의 분류)

  • Sim, Woo-Hyeon;Lee, Gi-Yeong;Chae, Jeong-Ho;Jeong, Jae-Seung;Lee, Do-Heon
    • Bioinformatics and Biosystems
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    • v.1 no.2
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    • pp.134-138
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    • 2006
  • Depression is the most common and widespread mood disorder. About 20% of the population might suffer a major, incapacitating episode of depression during their lifetime. This disorder can be classified into two types: major depressive disorders and bipolar disorder. Since pharmaceutical treatments are different according to types of depression disorders, correct and fast classification is quite critical for depression patients. Yet, classical statistical method, such as minnesota multiphasic personality inventory (MMPI), have some difficulties in applying to depression patients, because the patients suffer from concentration. We used electroencephalogram (EEG) analysis method fer classification of depression. We extracted nonlinearity of information flows between channels and estimated approximate entropy (ApEn) for the EEG at each channel. Using these attributes, we applied two types of data mining classification methods: decision tree and possibilistic support vector machines (PSVM). We found that decision tree showed 85.19% accuracy and PSVM exhibited 77.78% accuracy for classification of depression, 30 patients with major depressive disorder and 24 patients having bipolar disorder.

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Vowel Classification of Imagined Speech in an Electroencephalogram using the Deep Belief Network (Deep Belief Network를 이용한 뇌파의 음성 상상 모음 분류)

  • Lee, Tae-Ju;Sim, Kwee-Bo
    • Journal of Institute of Control, Robotics and Systems
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    • v.21 no.1
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    • pp.59-64
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    • 2015
  • In this paper, we found the usefulness of the deep belief network (DBN) in the fields of brain-computer interface (BCI), especially in relation to imagined speech. In recent years, the growth of interest in the BCI field has led to the development of a number of useful applications, such as robot control, game interfaces, exoskeleton limbs, and so on. However, while imagined speech, which could be used for communication or military purpose devices, is one of the most exciting BCI applications, there are some problems in implementing the system. In the previous paper, we already handled some of the issues of imagined speech when using the International Phonetic Alphabet (IPA), although it required complementation for multi class classification problems. In view of this point, this paper could provide a suitable solution for vowel classification for imagined speech. We used the DBN algorithm, which is known as a deep learning algorithm for multi-class vowel classification, and selected four vowel pronunciations:, /a/, /i/, /o/, /u/ from IPA. For the experiment, we obtained the required 32 channel raw electroencephalogram (EEG) data from three male subjects, and electrodes were placed on the scalp of the frontal lobe and both temporal lobes which are related to thinking and verbal function. Eigenvalues of the covariance matrix of the EEG data were used as the feature vector of each vowel. In the analysis, we provided the classification results of the back propagation artificial neural network (BP-ANN) for making a comparison with DBN. As a result, the classification results from the BP-ANN were 52.04%, and the DBN was 87.96%. This means the DBN showed 35.92% better classification results in multi class imagined speech classification. In addition, the DBN spent much less time in whole computation time. In conclusion, the DBN algorithm is efficient in BCI system implementation.

The Study of Language Sign Classification using EEG of motor language area (운동언어영역의 EEG를 이용한 언어 부호 분류에 관한 연구)

  • Yang, Dong-Seuk;Jeong, Yong-Bae;Lee, June-Hwan;Cho, Han-Jin
    • Proceedings of the Korea Contents Association Conference
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    • 2011.05a
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    • pp.571-572
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    • 2011
  • 지금까지 뇌와 관련된 언어, 감정, 시각, 촉각 등 의학적 영역에서 뇌에 관한 연구들이 활발히 이루어져 왔다. 그러나 이러한 의학적, 심리학적 성과와 IT와의 융합 및 응용은 아직 초보적인 단계이다. 따라서 의학적으로 입증된 뇌 영역에서 발생하는 뇌파에 대해 보다 세밀한 분석 및 연구를 통해 실질적인 응용 가능한 BCI를 구현해보고자 한다.

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Classification of Motor Imagery EEG Signals Based on Non-homogeneous Spatial Filter Optimization (비 동질 공간 필터 최적화 기반의 동작 상상 EEG 신호 분류)

  • Kam, Tae-Eui;Lee, Seong-Whan
    • Proceedings of the Korean Information Science Society Conference
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    • 2011.06a
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    • pp.469-472
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    • 2011
  • 신체 부위를 움직이는 상상을 할 때, 일반적으로 뇌의 감각 및 운동 피질 영역에서 특정 주파수 대역의 EEG(Electroencephalography) 신호의 세기가 감소하거나 증가하는 ERD(Event-Related Desynchronization)/ERS(Event-Related Synchronization) 현상이 발생한다. 하지만 ERD/ERS는 현상은 피험자에 의존적이고 매시도마다 큰 차이를 보인다. 이러한 문제를 해결하기 위해, 본 논문에서 각 시간-주파수 공간에 대하여 서로 다른 공간 필터를 구성하는 비 동질(non-homogeneous) 공간 필터 최적화 방법을 제안한다. EEG 신호는 시간에 대하여 비정상적(non-stationary) 특징을 가지기 때문에 제안하는 방법과 같이 시간에 따라 변화하는 ERD/ERS 특징을 반영하여 공간적 특징을 추출하는 방법은 시간에 대한 변화를 고려하지 않은 기존의 방법보다 우수한 성능을 보인다. 본 논문에서는 International BCI Competition IV에서 제공하는 4가지 동작 상상(왼손, 오른손, 발, 혀)에 대한 EEG 신호 데이터를 사용하여 동작 상상 분류 실험을 하고 이 결과를 기존의 타 방법들과 비교 분석하였다. 실험 결과, 피험자에 따라 서로 다른 시간-주파수 특징이 추출됨을 확인하였고, 최적화된 공간 필터들이 시간에 따라 변화하는 것을 확인하였다. 또한 이러한 특징을 이용하여 분류를 수행하였을 때, 더욱 우수한 분류 결과를 보임을 확인하였다.

Design of User Concentration Classification Model by EEG Analysis Based on Visual SCPT

  • Park, Jin Hyeok;Kang, Seok Hwan;Lee, Byung Mun;Kang, Un Gu;Lee, Young Ho
    • Journal of the Korea Society of Computer and Information
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    • v.23 no.11
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    • pp.129-135
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    • 2018
  • In this study, we designed a model that can measure the level of user's concentration by measuring and analyzing EEG data of the subjects who are performing Continuous Performance Test based on visual stimulus. This study focused on alpha and beta waves, which are closely related to concentration in various brain waves. There are a lot of research and services to enhance not only concentration but also brain activity. However, there are formidable barriers to ordinary people for using routinely because of high cost and complex procedures. Therefore, this study designed the model using the portable EEG measurement device with reasonable cost and Visual Continuous Performance Test which we developed as a simplified version of the existing CPT. This study aims to measure the concentration level of the subject objectively through simple and affordable way, EEG analysis. Concentration is also closely related to various brain diseases such as dementia, depression, and ADHD. Therefore, we believe that our proposed model can be useful not only for improving concentration but also brain disease prediction and monitoring research. In addition, the combination of this model and the Brain Computer Interface technology can create greater synergy in various fields.