Building A Personalized, Auto-Calibrating Eye Tracker From User Interactions

CHI'16: CHI Conference on Human Factors in Computing Systems San Jose California USA May, 2016(2016)

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摘要
We present PACE, a Personalized, Auto-Calibrating Eye-tracking system that identifies and collects data unobtrusively from user interaction events on standard computing systems without the need for specialized equipment. PACE relies on eye/facial analysis of webcam data based on a set of robust geometric gaze features and a two-layer data validation mechanism to identify good training samples from daily interaction data. The design of the system is founded on an in-depth investigation of the relationship between gaze patterns and interaction cues, and takes into consideration user preferences and habits. The result is an adaptive, data-driven approach that continuously recalibrates, adapts and improves with additional use.Quantitative evaluation on 31 subjects across different interaction behaviors shows that training instances identified by the PACE data collection have higher gaze point-interaction cue consistency than those identified by conventional approaches. An in-situ study using real-life tasks on a diverse set of interactive applications demonstrates that the PACE gaze estimation achieves an average error of 2.56 degrees, which is comparable to state-of-the-art, but without the need for explicit training or calibration. This demonstrates the effectiveness of both the gaze estimation method and the corresponding data collection mechanism.
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关键词
Gaze estimation,implicit modeling,data validation,gaze-interaction correspondence,H.1.2 [Models and Principles]: User/Machine Systems-Human factors,I.5. m left perpendicular Pattern Recognition right perpendicular: Miscellaneous
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