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arxiv: 1712.09709 · v2 · pith:SKO4GV27new · submitted 2017-12-27 · 💻 cs.NE · cs.AI· cs.CV

Report: Dynamic Eye Movement Matching and Visualization Tool in Neuro Gesture

classification 💻 cs.NE cs.AIcs.CV
keywords attentionmovementaudiencesdatagroupinfersamesimilarity
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In the research of the impact of gestures using by a lecturer, one challenging task is to infer the attention of a group of audiences. Two important measurements that can help infer the level of attention are eye movement data and Electroencephalography (EEG) data. Under the fundamental assumption that a group of people would look at the same place if they all pay attention at the same time, we apply a method, "Time Warp Edit Distance", to calculate the similarity of their eye movement trajectories. Moreover, we also cluster eye movement pattern of audiences based on these pair-wised similarity metrics. Besides, since we don't have a direct metric for the "attention" ground truth, a visual assessment would be beneficial to evaluate the gesture-attention relationship. Thus we also implement a visualization tool.

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