EllSeg: An Ellipse Segmentation Framework for Robust Gaze Tracking

07/19/2020
by   Rakshit S. Kothari, et al.
0

Ellipse fitting, an essential component in pupil or iris tracking based video oculography, is performed on previously segmented eye parts generated using various computer vision techniques. Several factors, such as occlusions due to eyelid shape, camera position or eyelashes, frequently break ellipse fitting algorithms that rely on well-defined pupil or iris edge segments. In this work, we propose training a convolutional neural network to directly segment entire elliptical structures and demonstrate that such a framework is robust to occlusions and offers superior pupil and iris tracking performance (at least 10% and 24% increase in pupil and iris center detection rate respectively within a two-pixel error margin) compared to using standard eye parts segmentation for multiple publicly available synthetic segmentation datasets.

READ FULL TEXT

page 2

page 4

page 5

page 9

research
02/12/2019

Center of circle after perspective transformation

Video-based glint-free eye tracking commonly estimates gaze direction ba...
research
05/06/2021

Development of a Fast and Robust Gaze Tracking System for Game Applications

In this study, a novel eye tracking system using a visual camera is deve...
research
01/30/2023

Eye Image-based Algorithms to Estimate Percentage Closure of Eye and Saccadic Ratio for Alertness Detection

The current research work has developed two novel algorithms for image-b...
research
06/05/2020

RIT-Eyes: Rendering of near-eye images for eye-tracking applications

Deep neural networks for video-based eye tracking have demonstrated resi...
research
09/30/2022

Two-headed eye-segmentation approach for biometric identification

Iris-based identification systems are among the most popular approaches ...
research
06/15/2015

Circle-based Eye Center Localization (CECL)

We propose an improved eye center localization method based on the Hough...

Please sign up or login with your details

Forgot password? Click here to reset