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Title: | EOG-based gaze angle estimation with varying head pose |
Authors: | Barbara, Nathaniel (2022) |
Keywords: | Electrooculography Signal processing Wavelets (Mathematics) Eye -- Movements Human-computer interaction Eye tracking Gaze Regression analysis |
Issue Date: | 2022 |
Citation: | Barbara, N. (2022). EOG-based gaze angle estimation with varying head pose (Doctoral dissertation). |
Abstract: | This work addresses two major challenges in the field of electrooculography (EOG) signal processing, that of baseline drift and gaze estimation considering both stationary and non-stationary head conditions. Although several different baseline drift mitigation techniques have been proposed, the choice of technique and corresponding parameters is generally arbitrary. To this end, this work carries out a systematic performance analysis and applies these different techniques to the same recorded EOG data. This analysis has demonstrated that frequent resetting is the overall best-performing, followed by signal differencing, wavelet decomposition, high-pass filtering and polynomial fitting. To address the challenge of EOG-based gaze estimation, this work has adapted and investigated the use of a published battery model of the eye. When this was used on offline baseline drift-mitigated EOG data, a horizontal and vertical gaze angle (GA) estimation error of 2.23±0.48° and 2.39±0.54°, respectively, was obtained, which compared well with the 2.13±0.41° and 2.30±0.53° errors obtained using the state-of-the-art two-bipolar-channel input linear regression models. However, in contrast to such black-box regression models, the battery model is an explicit, anatomically-driven model which makes it easier to model more complex ocular behaviour. This work has also proposed the use of the battery model in a novel offline baseline drift mitigation technique which exploits knowledge of the targets which the subject attended to during EOG signal acquisition. Unlike the state-of-the-art-methods, this does not require the data to be zero-centred nor does it disrupt the EOG signal morphology. This technique was shown to yield a generally superior performance when compared to the existing techniques. The battery model is further augmented to represent the blink-related eyelid-induced shunting and this is used to dynamically model fixations, saccades and blinks within a multiple-model GA estimation framework while simultaneously handling the baseline drift in real-time. When applied to short data segments, a horizontal and vertical GA estimation error of 1.64±0.82° and 1.97±0.34°, respectively, was obtained, which compared well with the 1.51±0.55° and 1.95±0.29° errors obtained using the state-of-the-art method, whereas the proposed method resulted in a statistically significantly superior GA estimation performance on longer data segments. This framework achieved a global eye movement detection and labelling F-score exceeding 90%. This work also lifts the stationary head constraint that has been generally enforced so far in the literature. Specifically, this work generalises the two-eye verging gaze geometry to cater for an arbitrary head pose and position, and also models vestibulo-ocular reflexes (VORs) in the proposed multiple-model framework. Using the proposed method, a horizontal and vertical GA estimation error of 1.85±0.51° and 2.19±0.62°, respectively, and an eye movement detection and labelling F-score of approximately 90% was obtained. |
Description: | Ph.D.(Melit.) |
URI: | https://www.um.edu.mt/library/oar/handle/123456789/107543 |
Appears in Collections: | Dissertations - FacEng - 2022 |
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