| Literature DB >> 31053071 |
Maximilian A R Strobl1,2, Florian Lipsmeier3, Liliana R Demenescu3, Christian Gossens3, Michael Lindemann3, Maarten De Vos4.
Abstract
BACKGROUND: Avoidance to look others in the eye is a characteristic symptom of Autism Spectrum Disorders (ASD), and it has been hypothesised that quantitative monitoring of gaze patterns could be useful to objectively evaluate treatments. However, tools to measure gaze behaviour on a regular basis at a manageable cost are missing. In this paper, we investigated whether a smartphone-based tool could address this problem. Specifically, we assessed the accuracy with which the phone-based, state-of-the-art eye-tracking algorithm iTracker can distinguish between gaze towards the eyes and the mouth of a face displayed on the smartphone screen. This might allow mobile, longitudinal monitoring of gaze aversion behaviour in ASD patients in the future.Entities:
Keywords: Biomedical monitoring; Gaze tracking; Mental disorders; m-Health
Mesh:
Year: 2019 PMID: 31053071 PMCID: PMC6499948 DOI: 10.1186/s12938-019-0670-1
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Fig. 1Study overview. We evaluated if iTracker [11] can provide a cheap, widely deployable method for tracking gaze behaviour using smartphones in ASD patients. a Example of the data collection set-up. We recorded subjects alternating between fixating on the eyes and the mouth of a face printout attached to the screen. Arrows indicate the sequence in which the different facial features were visited. Based on the so obtained videos, we evaluated how well iTracker can distinguish between the two gaze locations. b–e True gaze locations for each of the four tasks in our study. b Task 1: A 4x4 grid of points used for calibration. c Task 2: A face to test how accurately iTracker can separate gaze towards the eyes from gaze focussed on the mouth. d Task 3: Enlarged version of c, to test if separating eyes and mouth improves the ability to distinguish between gaze towards the eyes, and gaze towards the mouth. e Task 4: Subjects trace out a circle. f Outline of the data processing work flow: The obtained videos were split into frames, pre-processed, and gaze predictions obtained with iTracker. Predictions may be refined using a further calibration step
Fig. 2Results for one subject in our study (Subject 8). Crosses mark iTracker’s predictions. Points in matching colour indicate the true gaze locations for those predictions. Shaded areas represent the phone screen, and for Task 2 and 3 also the outline of the eyes and mouth. a–c Gaze estimates for Task 1. d–f Estimates for Task 2. g–i Gaze estimates for Task 3. j–l Estimates for Task 4. In the top row (a, d, g, j), the raw output of iTracker is shown. The middle and bottom row of the panel show these predictions corrected using either a SVR-based (b, e, h, k) or a linear transformation-based calibration method (c, f, i, l). Overall, iTracker manages to capture the true underlying pattern, although it appears shifted and scaled with respect to the reference (a, d, g, j). Calibration can rectify this, resulting in good overlap between true and estimated gaze positions (middle and bottom row; see also Fig. 3). Moreover, we find that the simple linear transformation performs better than the SVR-based method (compare middle and bottom row)
Fig. 3Quantification of iTracker’s Error without and with calibration. a Error in distinguishing between gaze towards eye and mouth of a face on screen (Task 2; Fig. 1c). Points were classified by which feature they were closest to. Shown is the proportion of wrongly assigned frames for each subject. Following calibration, both accuracy and variance improve. b Results for Task 3, which was similar to Task 2, but with an enlarged face in which eyes and mouth are further apart (Figure 1d). Performance appears more variable than for Task 2, but after post-processing with the linear calibration method very good accuracy and robustness is achieved. c Participants traced out the outline of a circle (Task 4; Fig. 1e). Shown is the mean Euclidean distance between the prediction and the true outline of the circle for each subject. Again calibration reduces variance and improves accuracy