Forecasting User Attention During Everyday Mobile Interactions Using Device-Integrated and Wearable Sensors
January 18, 2018 Β· Declared Dead Β· π International Conference on Human-Computer Interaction with Mobile Devices and Services
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Authors
Julian Steil, Philipp MΓΌller, Yusuke Sugano, Andreas Bulling
arXiv ID
1801.06011
Category
cs.HC: Human-Computer Interaction
Citations
48
Venue
International Conference on Human-Computer Interaction with Mobile Devices and Services
Last Checked
3 months ago
Abstract
Visual attention is highly fragmented during mobile interactions, but the erratic nature of attention shifts currently limits attentive user interfaces to adapting after the fact, i.e. after shifts have already happened. We instead study attention forecasting -- the challenging task of predicting users' gaze behaviour (overt visual attention) in the near future. We present a novel long-term dataset of everyday mobile phone interactions, continuously recorded from 20 participants engaged in common activities on a university campus over 4.5 hours each (more than 90 hours in total). We propose a proof-of-concept method that uses device-integrated sensors and body-worn cameras to encode rich information on device usage and users' visual scene. We demonstrate that our method can forecast bidirectional attention shifts and predict whether the primary attentional focus is on the handheld mobile device. We study the impact of different feature sets on performance and discuss the significant potential but also remaining challenges of forecasting user attention during mobile interactions.
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