User Guide
Why can I only view 3 results?
You can also view all results when you are connected from the network of member institutions only. For non-member institutions, we are opening a 1-month free trial version if institution officials apply.
So many results that aren't mine?
References in many bibliographies are sometimes referred to as "Surname, I", so the citations of academics whose Surname and initials are the same may occasionally interfere. This problem is often the case with citation indexes all over the world.
How can I see only citations to my article?
After searching the name of your article, you can see the references to the article you selected as soon as you click on the details section.
  Citation Number 1
 Views 22
 Downloands 3
The Comparison of Different Dimension Reduction and Classification Methods in Electroencephalogram Signals
2018
Journal:  
Meandros Medical And Dental Journal
Author:  
Abstract:

Objective: Electroencephalogram (EEG) signals have been broadly utilized for the diagnosis of epilepsy. Expert physicians must monitor long-term EEG signals that is sometimes difficult and time consuming process for epilepsy diagnosis. In this study, classification performances of support vector machine (SVM) and linear discriminant analysis (LDA), which are widely used in computer supported epilepsy diagnosis, were compared by using wavelet-based features of extracted from EEG signals which were derived in either normal or inter-ictal periods. In addition, principal component analysis (PCA) and independent component analysis (ICA) were used to determine the effects of dimension reduction on classification success. Materials and Methods: The EEG data were sampled from the EEG laboratory of the Department of Neurology and Clinical Neurophysiology in Adnan Menderes University. Study was approved by Local Ethics Committee with protocol number 2016/873. Ten patients with epilepsy and 10 normal were the study group. EEG signals of patients with epilepsy were contains only seizure free- epochs. EEG signals were first decomposed into frequency sub-bands by using discrete wavelet transform (DWT) and then some statistical features were calculated from those to classify it's as normal or epileptic. Results: In classification of the EEG signals, it's as normal or epileptic, we achieved 88.9% accuracy rate using SVM with radial basis function (RBF) kernel without dimension reduction Conclusion: Results showed that SVM was a powerful tool in classifying EEG signals if it's normal or epileptic.

Keywords:

0
2018
Author:  
Citation Owners
Attention!
To view citations of publications, you must access Sobiad from a Member University Network. You can contact the Library and Documentation Department for our institution to become a member of Sobiad.
Off-Campus Access
If you are affiliated with a Sobiad Subscriber organization, you can use Login Panel for external access. You can easily sign up and log in with your corporate e-mail address.
Similar Articles












Meandros Medical And Dental Journal

Field :   Sağlık Bilimleri

Journal Type :   Uluslararası

Metrics
Article : 810
Cite : 172
2023 Impact : 0.015
Meandros Medical And Dental Journal