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Using Priors to Improve Head-Mounted Eye Trackers in Sports

Abstract

This Ph.D. thesis is about using available information known from the problemat hand (aka priors), with the aim to enhance the performance of head-mountedeye trackers. Prior information is used for eye tracking scenarios in differentsports disciplines to improve the accuracy and robustness of gaze estimation incritical situations. This thesis also explores off-the-shelf hardware to build flexibleand adaptable eye trackers that exploit the constraints revealed for specificsports settings. Several eye tracking methods are presented, in which the use ofpriors plays the leading role. The compensation models proposed in this thesisranging from solving geometrical constraints of head-mounted eye trackers toeye feature detection in challenging environment lighting conditions. The experimentsfocused on different sports disciplines to collect and analyze eye trackingdata involving elite athletes during the daily training sessions of shooting andkayak as well as some laboratory experiments. The results of the experimentsshowed that the use of priors is very promising to the field of eye tracking, suchas (i) using the distance between the athlete and the observed target as priors, toreduce the influence of parallax error in 80.59%; (ii) using the 3D angles fromthe athlete’s head as priors, to reduce the influence of head rotation in 86.41%;(iii) using the geometric relation of human ocular system as priors, to make eyetracking more robust to eye feature noise, among others. Using priors in differentsteps of an eye tracking system has a general and substantial impact on eyetrackers in general. While the focus of this thesis is in the use of eye tracking insports, it is evident that progress achieved within this project on gaze estimationfor sports activities has a direct impact on other areas that use eye tracking aswell.Keywords: eye tracking, sports analysis, prior information, head-mounted eyetracker.This Ph.D. thesis is about using available information known from the problem at hand (aka priors), with the aim to enhance the performance of head-mounted eye trackers. Prior information is used for eye tracking scenarios in different sports disciplines to improve the accuracy and robustness of gaze estimation in critical situations. This thesis also explores off-the-shelf hardware to build flexible and adaptable eye trackers that exploit the constraints revealed for specific sports settings. Several eye tracking methods are presented, in which the use of priors plays the leading role. The compensation models proposed in this thesis ranging from solving geometrical constraints of head-mounted eye trackers to eye feature detection in challenging environment lighting conditions. The experiments focused on different sports disciplines to collect and analyze eye tracking data involving elite athletes during the daily training sessions of shooting and kayak as well as some laboratory experiments. The results of the experiments showed that the use of priors is very promising to the field of eye tracking, such as (i) using the distance between the athlete and the observed target as priors, to reduce the influence of parallax error in 80.59%; (ii) using the 3D angles from the athlete’s head as priors, to reduce the influence of head rotation in 86.41%; (iii) using the geometric relation of human ocular system as priors, to make eye tracking more robust to eye feature noise, among others. Using priors in different steps of an eye tracking system has a general and substantial impact on eye trackers in general. While the focus of this thesis is in the use of eye tracking in sports, it is evident that progress achieved within this project on gaze estimation for sports activities has a direct impact on other areas that use eye tracking as well

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