The activities for motor imagery (MI) movements in Electroencephalography (EEG) are still interesting and challenging. BCI (Brain Computer Interface) allows the brain signals to control the external devices and also helps a disabled person suffering from neuromuscular disorders. In any BCI system, the two most essential steps are feature extraction and classification method. However, in this paper, the MI classification is improved by the performance of Deep Learning (DL) concept. In this proposed system two-moment imagination of right hand and right foot from the BCI competition three datasets IVA has been taken and classification methods utilizing Conventional neural network (CNN) and Generative Adversarial Network (GAN) are developed. The training time is reduced and non-stationary problem is managed by applying Empirical mode decomposition (EMD) and mixing their intrinsic mode functions (IMFs) in feature extraction technique. The experimental result indicates the proposed GAN classification technique achieves better classification accuracy in terms of 95.29% than the CNN of 89.38%. The proposed GAN method achieves an average positive rate of 62% and average false positive rate of 3.4% on BCI competition three datasets IVA whose EEG facts were resulting from the similar C3, C4, and Cz channels of the motor cortex.


    Zugriff

    Download


    Exportieren, teilen und zitieren



    Titel :

    Motor Imagery EEG Recognition using Deep Generative Adversarial Network with EMD for BCI Applications


    Beteiligte:

    Erscheinungsdatum :

    2022-01-01


    Anmerkungen:

    Tehnički vjesnik ; ISSN 1330-3651 (Print) ; ISSN 1848-6339 (Online) ; Volume 29 ; Issue 1


    Medientyp :

    Aufsatz (Zeitschrift)


    Format :

    Elektronische Ressource


    Sprache :

    Englisch



    Klassifikation :

    DDC:    006 / 629



    TrafficGAN: Network-Scale Deep Traffic Prediction With Generative Adversarial Nets

    Zhang, Yuxuan / Wang, Senzhang / Chen, Bing et al. | IEEE | 2021



    Unconstrained Road Marking Recognition with Generative Adversarial Networks

    Lee, Younkwan / Lee, Juhyun / Hong, Yoojin et al. | IEEE | 2019


    Image-to-Image Translation Using Generative Adversarial Network

    Lata, Kusam / Dave, Mayank / Nishanth, K N | IEEE | 2019


    Generative adversarial network enriched driving simulation

    SONG HAO / PENG JUN / DENG NENGXIU et al. | Europäisches Patentamt | 2022

    Freier Zugriff