• Title/Summary/Keyword: EEG신호

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EEG Signal Classification based on SVM Algorithm (SVM(Support Vector Machine) 알고리즘 기반의 EEG(Electroencephalogram) 신호 분류)

  • Rhee, Sang-Won;Cho, Han-Jin;Chae, Cheol-Joo
    • Journal of the Korea Convergence Society
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    • v.11 no.2
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    • pp.17-22
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    • 2020
  • In this paper, we measured the user's EEG signal and classified the EEG signal using the Support Vector Machine algorithm and measured the accuracy of the signal. An experiment was conducted to measure the user's EEG signals by separating men and women, and a single channel EEG device was used for EEG signal measurements. The results of measuring users' EEG signals using EEG devices were analyzed using R. In addition, data in the study was predicted using a 80:20 ratio between training data and test data by applying a combination of specific vectors with the highest classifying performance of the SVM, and thus the predicted accuracy of 93.2% of the recognition rate. This paper suggested that the user's EEG signal could be recognized at about 93.2 percent, and that it can be performed only by simple linear classification of the SVM algorithm, which can be used variously for biometrics using EEG signals.

A Study on parameter choice system design for EEG classifications (EEG 분류를 위한 매개변수 선택형 시스템 설계에 관한 연구)

  • Cho, Hee-Jun;Shin, Dong-Kyoo;Shin, Dong-Il
    • Proceedings of the Korean Information Science Society Conference
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    • 2012.06a
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    • pp.334-336
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    • 2012
  • EEG 신호에 대한 연구는 의학, 신경과학, 심리학, 컴퓨터과학, 전자 공학 등 여러 학문 분야에서 많은 연구가 진행되고 있다. EEG 신호는 추출하는데 있어서 필연적으로 각종 Artifact와 분석대상이 아닌 신호가 혼재되어 분석 결과의 부정확성을 가지고 있어 EEG 신호의 활용이 주목받은지 오래되었지만 충분히 활용되지 못하고 있다. 이 문제를 해결하기 위해 각종 필터링 연산 등을 통하여 잡음을 제거하고 혼재된 신호를 분류해 내고 있지만, 잡음제거나 신호분류에 사용되는 방법이 고정된 수식을 이용하는 방법이기 때문에 유연한 측정 및 분류를 할 수 없는 것이 현실이다. 본 논문에서 제안하는 매개변수 선택형 시스템은 정제되지 않은 EEG 신호에서 잡파를 제거하고 정제된 신호에서 분석에 필요한 특징을 추출하는데 있어 사용자에게 착용된 EEG 신호 측정기기에서 전극채널, 신호발생영역 및 주파수 대역 등의 매개변수를 선택하고 필요에 따라 매개변수에 가중치를 부여함으로써, 측정의 정확성을 높이고 EEG 신호의 활용에 신뢰도를 향상 시킬 수 있다.

Comparison of EEG Characteristics between Dementia Patient and Normal Person Using Frequency Analysis Method (주파수분석법에 의한 치매환자와 정상인의 뇌파특성 비교)

  • Jang, Yun-Seok;Park, Kyu-Chil;Han, Dong-Wook
    • The Journal of the Korea institute of electronic communication sciences
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    • v.9 no.5
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    • pp.595-600
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    • 2014
  • Nowadays our society is rapidly transforming into an aging society. A better understanding of dementia is a high priority in the aging society. Therefore our study is basically aimed at understanding characteristics of EEG signals from dementia patients. Firstly, we analyzed spontaneous EEG signals from normal persons and dementia patients to distinguish their characteristics. The EEG signals are recorded with 16 electrodes and we classified the EEG signals form the signals according to frequency band. To obtain the clean EEG signals, we used cross correlation function between two channels. From the analysis results, we can observe that the EEG characteristics from dementia patients are distinctly different from that from normal persons.

Relativity between Concentration by Letter Visual Stimulus and EEG Signal (글자 시각자극에 의한 집중과 EEG신호의 상관성)

  • Jang, Yun-Seok;Han, Jae-Woong
    • The Journal of the Korea institute of electronic communication sciences
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    • v.9 no.11
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    • pp.1277-1282
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    • 2014
  • In this paper, we aimed to analysis EEG signals related to concentration of adolescents using letter visual stimulus to induce the concentration. The visual stimulus tasks were searching errors of propositional particle in several sentences. In the EEG signals, we specially focussed on SMR waves and mid-beta waves according to the results of a preceding research. Therefore we presented position of channel and frequency band of mid-beta significantly related to the concentration waves as the experimental results.

Human Emotion Recognition using Power Spectrum of EEG Signals : Application of Bayesian Networks and Relative Power Values (EEG 신호의 Power Spectrum을 이용한 사람의 감정인식 방법 : Bayesian Networks와 상대 Power values 응용)

  • Yeom, Hong-Gi;Han, Cheol-Hun;Kim, Ho-Duck;Sim, Kwee-Bo
    • Journal of the Korean Institute of Intelligent Systems
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    • v.18 no.2
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    • pp.251-256
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    • 2008
  • Many researchers are studying about human Brain-Computer Interface(BCI) that it based on electroencephalogram(EEG) signals of multichannel. The researches of EEG signals are used for detection of a seizure or a epilepsy and as a lie detector. The researches about an interface between Brain and Computer have been studied robots control and game of using human brain as engineering recently. Especially, a field of brain studies used EEG signals is put emphasis on EEG artifacts elimination for correct signals. In this paper, we measure EEG signals as human emotions and divide it into five frequence parts. They are calculated related the percentage of selecting range to total range. the calculating values are compared standard values by Bayesian Network. lastly, we show the human face avatar as human Emotion.

Development of Simulation Software for EEG Signal Accuracy Improvement (EEG 신호 정확도 향상을 위한 시뮬레이션 소프트웨어 개발)

  • Jeong, Haesung;Lee, Sangmin;Kwon, Jangwoo
    • Journal of rehabilitation welfare engineering & assistive technology
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    • v.10 no.3
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    • pp.221-228
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    • 2016
  • In this paper, we introduce our simulation software for EEG signal accuracy improvement. Users can check and train own EEG signal accuracy using our simulation software. Subjects were shown emotional imagination condition with landscape photography and logical imagination condition with a mathematical problem to subject. We use that EEG signal data, and apply Independent Component Analysis algorithm for noise removal. So we can have beta waves(${\beta}$, 14-30Hz) data through Band Pass Filter. We extract feature using Root Mean Square algorithm and That features are classified through Support Vector Machine. The classification result is 78.21% before EEG signal accuracy improvement training. but after successive training, the result is 91.67%. So user can improve own EEG signal accuracy using our simulation software. And we are expecting efficient use of BCI system based EEG signal.

Adverse Effects on EEGs and Bio-Signals Coupling on Improving Machine Learning-Based Classification Performances

  • SuJin Bak
    • Journal of the Korea Society of Computer and Information
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    • v.28 no.10
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    • pp.133-153
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    • 2023
  • In this paper, we propose a novel approach to investigating brain-signal measurement technology using Electroencephalography (EEG). Traditionally, researchers have combined EEG signals with bio-signals (BSs) to enhance the classification performance of emotional states. Our objective was to explore the synergistic effects of coupling EEG and BSs, and determine whether the combination of EEG+BS improves the classification accuracy of emotional states compared to using EEG alone or combining EEG with pseudo-random signals (PS) generated arbitrarily by random generators. Employing four feature extraction methods, we examined four combinations: EEG alone, EG+BS, EEG+BS+PS, and EEG+PS, utilizing data from two widely-used open datasets. Emotional states (task versus rest states) were classified using Support Vector Machine (SVM) and Long Short-Term Memory (LSTM) classifiers. Our results revealed that when using the highest accuracy SVM-FFT, the average error rates of EEG+BS were 4.7% and 6.5% higher than those of EEG+PS and EEG alone, respectively. We also conducted a thorough analysis of EEG+BS by combining numerous PSs. The error rate of EEG+BS+PS displayed a V-shaped curve, initially decreasing due to the deep double descent phenomenon, followed by an increase attributed to the curse of dimensionality. Consequently, our findings suggest that the combination of EEG+BS may not always yield promising classification performance.

Indoor Environment Control System based EEG Signal and Internet of Things (EEG 신호 및 사물인터넷 기반 실내 환경 제어 시스템)

  • Jeong, Haesung;Lee, Sangmin;Kwon, Jangwoo
    • Journal of rehabilitation welfare engineering & assistive technology
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    • v.11 no.1
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    • pp.45-52
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    • 2017
  • EEG signals that are the same as those that have the same disabled people. So, the EEG signals are becoming the next generation. In this paper, we propose an internet of things system that controls the indoor environment using EEG signal. The proposed system consists EEG measurement device, EEG simulation software and indoor environment control device. We use data as EEG signal data on emotional imagination condition in a comfortable state and logical imagination condition in concentrated state. The noise of measured signal is removed by the ICA algorithm and beta waves are extracted from it. then, it goes through learning and test process using SVM. The subjects were trained to improve the EEG signal accuracy through the EEG simulation software and the average accuracy were 87.69%. The EEG signal from the EEG measurement device is transmitted to the EEG simulation software through the serial communication. then the control command is generated by classifying emotional imagination condition and logical imagination condition. The generated control command is transmitted to the indoor environment control device through the Zigbee communication. In case of the emotional imagination condition, the soft lighting and classical music are outputted. In the logical imagination condition, the learning white noise and bright lighting are outputted. The proposed system can be applied to software and device control based BCI.

Epileptic Seizure Detection Using CNN Ensemble Models Based on Overlapping Segments of EEG Signals (뇌파의 중첩 분할에 기반한 CNN 앙상블 모델을 이용한 뇌전증 발작 검출)

  • Kim, Min-Ki
    • KIPS Transactions on Software and Data Engineering
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    • v.10 no.12
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    • pp.587-594
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    • 2021
  • As the diagnosis using encephalography(EEG) has been expanded, various studies have been actively performed for classifying EEG automatically. This paper proposes a CNN model that can effectively classify EEG signals acquired from healthy persons and patients with epilepsy. We segment the EEG signals into sub-signals with smaller dimension to augment the EEG data that is necessary to train the CNN model. Then the sub-signals are segmented again with overlap and they are used for training the CNN model. We also propose ensemble strategy in order to improve the classification accuracy. Experimental result using public Bonn dataset shows that the CNN can detect the epileptic seizure with the accuracy above 99.0%. It also shows that the ensemble method improves the accuracy of 3-class and 5-class EEG classification.

Drone Based Sensor Network Scenario for the Efficient Pedestrian's EEG Signal Transmission (효율적인 보행자의 EEG 신호 전송을 위한 드론기반 센서네트워크 시나리오)

  • Jo, Jun-Mo
    • The Journal of the Korea institute of electronic communication sciences
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    • v.11 no.9
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    • pp.923-928
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    • 2016
  • The various technologies related to the monitoring human health in real-time for the emergency situations are developing these days. Mostly the human pulse is used for measuring as the vital signs so far, but the EEG became a major research trend now. However, there are some problems measuring and sending EEG signals of all the people walking down the street to the dedicated server. Especially, there are some restrictions for collecting and sending EEG signals in 2-dimensional space in real-time. Therefore, I suggests an efficient network model using 3-dimensional space of drones to avoid the restrictions. The models are designed, simulated, and evaluated with the Opnet simulator.