Electroencephalography-based wheelchair navigation control using convolutional neural network method
Dublin Core
Title
Electroencephalography-based wheelchair navigation control using convolutional neural network method
Subject
Classification
Convolutional neural network
Deep learning
Electroencephalograph
Wheelchair
Convolutional neural network
Deep learning
Electroencephalograph
Wheelchair
Description
Artificial intelligence refers to a computer-based system capable of learning human activities. For instance, in medical technology, AI can be used for a thought-controlled wheelchair. This study discusses the use of deep learning, specifically convolutional neural network (CNN), in predictiong of the user intention to navigate a wheelchair. The training data was collected from an EEG sensor and included the wheelchair’s movements - turning right, turning left, moving forward, moving backward, and idle. The signals were then sampled and feature-extracted using root mean square (RMS). In CNN classification, both raw and RMS data were used. This study compared two different CNN architectures. The first architecture has three convolutional layers and three pooling layers, while the second has two of each. The research compares the accuracy and loss values of CNN predictions using architecture 1 and 2 on both raw and RMS data. The experimental results indicate that when using raw data, the first CNN architecture achieved an accuracy of 85.12%, and the second model achieved 91.04%. However, when using RMS data, the first architecture achieved an accuracy of 76.47%, and the second achieved 73.74%. The study concludes that the movement of the wheelchair is better in real-time when using raw data compared to using RMS data.
Creator
Khairul Anam1,2, Satrio Marta Wicaksono1,2, Muchamad Arif Hana Sasono1,2, Bima Wahyu Maulana1,2, Fatkhul Mubarok1,2, Ananta Pinsentius Rahmat Pamungkas1,2, Moch. Rijal Fatoni1,2
Source
Journal homepage: http://telkomnika.uad.ac.id
Date
Nov 26, 2024
Contributor
PERI IRAWAN
Format
PDF
Language
ENGLISH
Type
TEXT
Files
Collection
Citation
Khairul Anam1,2, Satrio Marta Wicaksono1,2, Muchamad Arif Hana Sasono1,2, Bima Wahyu Maulana1,2, Fatkhul Mubarok1,2, Ananta Pinsentius Rahmat Pamungkas1,2, Moch. Rijal Fatoni1,2, “Electroencephalography-based wheelchair navigation control using convolutional neural network method,” Repository Horizon University Indonesia, accessed January 11, 2026, https://repository.horizon.ac.id/items/show/9941.