RT - Journal Article T1 - Effective Connectivity Estimation Based on Emotion EEG Signal by Granger Causality and Directed TransferFunction JF - icss YR - 2017 JO - icss VO - 19 IS - 2 UR - http://icssjournal.ir/article-1-534-en.html SP - 1 EP - 18 K1 - EEG K1 - Emotions K1 - Effective Connectivity K1 - Granger causality K1 - DTF AB - Introduction: Emotions can be called a complex phenomenon which has been derived from an individual’s daily matters. Emotion has huge effect on individuals’ decision making. Decision making spectrum can have effect on self and social life of a society. Method: Some pictures with contents of happiness, sadness and neutral have been shown to a group of subjects and a 16-channel EEG signal has been recorded. The goal is to estimate effective connectivity in brain source area. Independent Component Analysis (ICA) is used to move from sensory space to brain source area. The brain sources are sorted and marked based on Shannon entropy. Relation between brain regions will be surveyed by effective connectivity. Granger causality and Direct Transform Function (DTF) is used for estimating effective connectivity. Results: Based on the result of Granger causality and brain source topographies, different models of effective connectivity have been proposed. Subjects’ individual models were compared with proposed models and each of them were labeled. Accuracy for classification of happiness, sadness and neutral moods are equal to 63.8%, 55.5% and 61.1%. Conclusion: Proposed model with spatial information based on Granger causality shows that in happy mood brain’s left hemisphere has more activity. In sad mood, the right hemisphere has more activity. In neutral mood, also brain’s left hemisphere is engaged. The occipital and frontal lobes are engaged in information exchange. DTF with respect to Granger causality has less resolution in estimating the connectivity. As a result, proposing model based on it will be harder and less accurate. LA eng UL http://icssjournal.ir/article-1-534-en.html M3 ER -