Frontiers in Computational Neuroscience (Jul 2016)

Emotion Discrimination using spatially Compact Regions of Interest extracted from Imaging EEG Activity

  • Jorge Ivan Padilla-Buritica,
  • Juan David Martinez-Vargas,
  • German Castellanos-Dominguez

DOI
https://doi.org/10.3389/fncom.2016.00055
Journal volume & issue
Vol. 10

Abstract

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Lately, research on computational models of emotion had been getting much attention due to their potential for understanding the mechanisms of emotions and their promising broad range of applications that potentially bridge the gap between human and machine interactions. We propose a new method for emotion classification that relies on features extracted from those active brain areas that are most likely related to emotions. To this end, we carry out the selection of spatially compact regions of interest that are computed using the brain neural activity reconstructed from electroencephalography data. Throughout this study, we consider three representative feature extraction methods widely applied to emotion detection tasks, including Power spectral density, Wavelet, and Hjorth parameters. Further feature selection is carried out using principal component analysis. For validation purpose, these features are used to feed a support vector machine classifier that is trained under the leave-one-out cross-validation strategy. Obtained results on real affective data show that incorporation of the proposed training method in combination with the enhanced spatial resolution provided by the source estimation allows improving the performed accuracy of discrimination in most of the considered emotions, namely: dominance, valence, and linking.

Keywords