1,642 research outputs found
Learning to Personalize in Appearance-Based Gaze Tracking
Personal variations severely limit the performance of appearance-based gaze
tracking. Adapting to these variations using standard neural network model
adaptation methods is difficult. The problems range from overfitting, due to
small amounts of training data, to underfitting, due to restrictive model
architectures. We tackle these problems by introducing the SPatial Adaptive
GaZe Estimator (SPAZE). By modeling personal variations as a low-dimensional
latent parameter space, SPAZE provides just enough adaptability to capture the
range of personal variations without being prone to overfitting. Calibrating
SPAZE for a new person reduces to solving a small optimization problem. SPAZE
achieves an error of 2.70 degrees with 9 calibration samples on MPIIGaze,
improving on the state-of-the-art by 14 %. We contribute to gaze tracking
research by empirically showing that personal variations are well-modeled as a
3-dimensional latent parameter space for each eye. We show that this
low-dimensionality is expected by examining model-based approaches to gaze
tracking. We also show that accurate head pose-free gaze tracking is possible
Robust eye tracking based on multiple corneal reflections for clinical applications
Postprint (published version
Accurate Eye Tracking from Dense 3D Surface Reconstructions using Single-Shot Deflectometry
Eye-tracking plays a crucial role in the development of virtual reality
devices, neuroscience research, and psychology. Despite its significance in
numerous applications, achieving an accurate, robust, and fast eye-tracking
solution remains a considerable challenge for current state-of-the-art methods.
While existing reflection-based techniques (e.g., "glint tracking") are
considered the most accurate, their performance is limited by their reliance on
sparse 3D surface data acquired solely from the cornea surface. In this paper,
we rethink the way how specular reflections can be used for eye tracking: We
propose a novel method for accurate and fast evaluation of the gaze direction
that exploits teachings from single-shot phase-measuring-deflectometry (PMD).
In contrast to state-of-the-art reflection-based methods, our method acquires
dense 3D surface information of both cornea and sclera within only one single
camera frame (single-shot). Improvements in acquired reflection surface
points("glints") of factors are easily achievable. We show the
feasibility of our approach with experimentally evaluated gaze errors of only
demonstrating a significant improvement over the current
state-of-the-art
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