NODE-WISE DOMAIN ADAPTATION BASED ON TRANSFERABLE ATTENTION FOR RECOGNIZING ROAD RAGE VIA EEG
Xueqi Gao (College of Intelligence and Computing, Tianjin University); Chao Xu (College of Intelligence and Computing, Tianjin University); Yihang Song (College of Intelligence and Computing, Tianjin University); Jing Hu ( College of Intelligence and Computing, Tianjin University); Jian Xiao (College of Intelligence and Computing,Tianjin University); Zhaopeng Meng (College of Intelligence and Computing, Tianjin University)
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Road rage is a social problem that deserves attention, but few research has been done so far. In this paper, based on the biological topology of multi-channel electroencephalogram (EEG) signals, we propose a model which combines transferable attention (TA) and regularized graph neural network (RGNN). First, topology-aware information aggregation is performed on EEG signals, and complex relationships between channels are dynamically learned.Then, the transferability of each channel is quantified based on the results of the node-wise domain classifier, which is embedded into the emotion classifier as attention score. Importantly, we recruited 10 subjects and collected their EEG signals in pleasure and rage states in simulated driving conditions. We verify the effectiveness of our method on this dataset and compare it with other methods. The results indicate that our method is simple and efficient, with 85.63% accuracy in cross-subject experiments. It can be used to identify road rage.