Publication | Closed Access
Learning-by-Synthesis for Appearance-Based 3D Gaze Estimation
395
Citations
28
References
2014
Year
Unknown Venue
EngineeringMachine LearningHuman Pose EstimationFace Detection3D Computer VisionFacial Recognition SystemImage AnalysisRobot LearningMachine VisionOphthalmologyHuman Image SynthesisComputer Vision3D VisionGaze EstimationEye TrackingScene UnderstandingEye ImagesHuman GazeRandom Regression
Inferring human gaze from low-resolution eye images is still a challenging task despite its practical importance in many application scenarios. This paper presents a learning-by-synthesis approach to accurate image-based gaze estimation that is person- and head pose-independent. Unlike existing appearance-based methods that assume person-specific training data, we use a large amount of cross-subject training data to train a 3D gaze estimator. We collect the largest and fully calibrated multi-view gaze dataset and perform a 3D reconstruction in order to generate dense training data of eye images. By using the synthesized dataset to learn a random regression forest, we show that our method outperforms existing methods that use low-resolution eye images.
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