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Kabupaten Nias Selatan

Badan Riset dan Inovasi Nasional

Informasi Dataset

07-11-2022

12-08-2024

84d44b91-aead-4e97-9f26-ddf9df1f1153

Dataset Serupa
Artifacts Removal of EEG Signals using Adaptive Principal Component Analysis

Analysis of EEG activity usually raises the problem of differentiating between g...

Automatic Artifacts Removal of EEG Signals using Robust Principal Component Anal...

Analysis of EEG activity usually raises the problem of differentiating between g...

Adaptive Principal Component Analysis based Recursive Least Squares for Artifact...

Artifacts or noise sources increase the difficulty in analyzing the EEG and to o...

EEG-P300 Extraction using Recursive Principal Component Analysis

By extracting specific brain activity from recorded EEG signals and linking it t...

Removing Ocular Artifact of EEG Signal Using SOBI-RO on Motor Imagery Experiment

Eye blinking known as ocular artifact cause changes to the electric fields over ...

INFORMASI: Data berikut ini masih dalam proses pemenuhan Prinsip SDI.

Removal Artifacts from EEG Signal Using Independent Component Analysis and Principal Component Analysis

Terbatas

In recording the EEG signals are often contamination signal called artifacts. There are different kinds of artifacts such as power line noise, electromyogram (EMG), electrocardiogram (ECG) and electrooculogram (EOG). This research will compare two methods for removing artifacts, i.e. ICA and PCA methods. EEG signals are recorded on three conditions, which is normal conditions, closed eyes, and blinked eyes. After processing, the dominant frequency of the EEG signal is obtained in the range of 12-14 Hz (alpha-beta) either on normal conditions, closed eyes, and blinked eyes. From processing with ICA and PCA methods found that ICA method are better than PCA in terms of the separation of the EEG signals from mixed signals. International Conferences on Technology, Informatics, Management, Engineering & Environtment, 19-21 August 2014, Bandung Indonesia.

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