Classification of Concentration Levels in Adult-Early Phase using Brainwave Signals by Applying K-Nearest Neighbor

Ahmad Azhari, Fathia Irbati Ammattulloh

Abstract


The brain controls the center of human life. Through the brain, all activities of living can be done. One of them is cognitive activity. Brain performance is influenced by mental conditions, lifestyle, and age. Cognitive activity is an observation of mental action, so it includes psychological symptoms that involve memory in the brain's memory, information processing, and future planning. In this study, the concentration level was measured at the age of the adult-early phase (18-30 years) because in this phase, the brain thinks more abstractly and mental conditions influence it. The purpose of this study was to see the level of concentration in the adult-early phase with a stimulus in the form of cognitive activity using IQ tests with the type of Standard Progressive Matrices (SPM) tests. To find out the IQ test results require a long time, so in this study, a recording was done to get brain waves so that the results of the concentration level can be obtained quickly. EEG data was taken using an Electroencephalogram (EEG) by applying the SPM test as a stimulus. The acquisition takes three times for each respondent, with a total of 10 respondents. The method implemented in this study is a classification with the k-Nearest Neighbor (kNN) algorithm. Before using this method, preprocessing is done first by reducing the signal and filtering the beta signal (13-30 Hz). The results of the data taken will be extracted first to get the right features, feature extraction in this study using first-order statistical characteristics that aim to find out the typical information from the signals obtained. The results of this study are the classification of concentration levels in the categories of high, medium, and low. Finally, the results of this study show an accuracy rate of 70%.

Keywords


Brainwave; EEG; SPM; KNN; Concentration Level

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References


A. Azhari, “Analisis Pengaruh Cognitive Task Berdasarkan Hasil Ekstraksi Ciri Gelombang Otak Menggunakan Jarak Euclidean,” in Seminar Nasional Teknologi Informasi dan Multimedia 2017, 2015, pp. 3.1-1-3.1.6.

R. Karmila, E. C. Djamal, D. Nursantika Jurusan Informatika, and F. MIPA Universitas Jenderal Achmad Yani Jl Terusan Jenderal Sudirman, “Identifikasi Tingkat Konsentrasi Dari Sinyal EEG Dengan Wavelet dan Adaptive Backpropagation,” in Seminar Nasional Aplikasi Teknologi Informasi (SNATi) Agustus, 2016, pp. 1907–5022.

R. Indrawan, E. C. Djamal, and R. Ilyas, “Identifikasi Neuropsikologis Terhadap Video Iklan Secara Real-Time Menggunakan Fast Fourier Transform dan Support Vector Machine,” Semin. Nas. Apl. Teknol. Inf. SNATI, pp. 6–10, 2017.

A. Hilmi, I. Wijayanto, and S. Hadiyoso, “ANALISIS PERBANDINGAN POLA SINYAL ALFA DAN BETA EEG UNTUK KLASIFIKASI KONDISI RILEKS PADA PEROKOK AKTIF DENGAN MENGGUNAKAN K-NEAREST NEIGHBOR PATTERN

COMPARISON ANALYSIS BETWEEN ALPHA AND BETA EEG SIGNAL FOR RELAXED CONDITION CLASSIFICATION ON ACTIVE SMOK,” E-Proceeding Eng., vol. 4, no. 3, pp. 3395–3402, 2017.

N. Inc., Brainwave Signal (EEG) of Neurosky, Inc. Neurosky, Inc., 2009.

A. Azhari and L. Hernandez, “Brainwaves feature classification by applying K-Means clustering using single-sensor EEG,” Int. J. Adv. Intell. Inform., vol. 2, no. 3, pp. 167–173, Nov. 2016.

A. Azhari and D. Ismi, “Lack of knowledge matching algorithms using distance measurements on brainwave features,” IOP Conf. Ser. Mater. Sci. Eng., vol. 403, p. 012080, Oct. 2018.

K. Riskinanti, “Perkembangan sepanjang hayat.” p. 12, 2015.

J. S. S. Shaista Ismat, “A STUDY OF INTELLIGENCE MEASURE USING RAVEN STANDARD PROGRESSIVE MATRICES TEST ITEMS BY PRINCIPAL COMPONENTS ANALYSIS,” FUUAST J BIOL, pp. 169–173, 2014.

S. F. A. Bakhiet and R. Lynn, “Norms for the standard progressive matrices in the Gaza Strip,” Mank. Q., vol. 56, no. 1, 2015.

R. D. A. Dyah Norma Maharsi, Junartho Halomoan, “KLASIFIKASI SERAT MIRING PADA KAYU MENGGUNAKAN EKSTRAKSI CIRI STATISTIK BERDASARKAN PADA PENGOLAHAN CITRA,” in e-Proceeding of Engineering, 2015, vol. 2, no. 1, pp. 209–216.

H. Z. Ahmad, “Ekstraksi statistik untuk identifikasi kematangan buah mangga berdasarkan tekstur kulit buah,” J. Inform., vol. 1, no. 1, pp. 1–4, 2018.

Suyanto, Machine Learning Tingkat Dasar dan Lanjut, Pertama. Informatika Bandung, 2018.

T. S. D. M. Pulung Nurtantio Andono, Pengolahan Citra Digital, I. ANDI, 2018.

DESMITA, Perkembangan Peserta Didik. Bandung: Rosda, 2009.




DOI: https://doi.org/10.31763/simple.v1i1.89

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Copyright (c) 2023 Ahmad Azhari, Fathia Irbati Ammattulloh

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Signal and Image Processing Letters

ISSN Online: 2714-6677 | Print: 2714-6669
Published by Association for Scientific Computing Electrical and Engineering (ASCEE)
Website : https://simple.ascee.org/index.php/simple/
Email 1 : simple@ascee.org
Email 2 : azhari@ascee.org


 

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