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Gaze-enabled activity recognition for augmented reality feedback

Kenan Bektaş, Jannis Strecker, Simon Mayer, Kimberly García

2024Computers & Graphics24 citationsDOIOpen Access PDF

Abstract

Head-mounted Augmented Reality (AR) displays overlay digital information on physical objects. Through eye tracking, they provide insights into user attention, intentions, and activities, and allow novel interaction methods based on this information. However, in physical environments, the implications of using gaze-enabled AR for human activity recognition have not been explored in detail. In an experimental study with the Microsoft HoloLens 2, we collected gaze data from 20 users while they performed three activities: Reading a text, Inspecting a device, and Searching for an object. We trained machine learning models (SVM, Random Forest, Extremely Randomized Trees) with extracted features and achieved up to 89.6% activity-recognition accuracy. Based on the recognized activity, our system—GEAR—then provides users with relevant AR feedback. Due to the sensitivity of the personal (gaze) data GEAR collects, the system further incorporates a novel solution based on the Solid specification for giving users fine-grained control over the sharing of their data. The provided code and anonymized datasets may be used to reproduce and extend our findings, and as teaching material.

Topics & Concepts

Computer scienceGazeAugmented realityHuman–computer interactionArtificial intelligenceHaptic technologyActivity recognitionRandom forestOverlayInterface (matter)Computer visionEye trackingCode (set theory)Parallel computingSet (abstract data type)BubbleProgramming languageMaximum bubble pressure methodGaze Tracking and Assistive TechnologyAugmented Reality ApplicationsContext-Aware Activity Recognition Systems
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