Real-Time Face and Landmark Localization for Eyeblink Detection
Paul Bakker, Henk-Jan Boele, Zaid Al-Ars, Christos Strydis

TL;DR
This paper presents a fast, fully automated face and landmark detection system optimized for real-time eyeblink detection in neuroscience experiments, enabling online closed-loop studies.
Contribution
It combines GPU-accelerated face and landmark detection algorithms to achieve real-time eyelid tracking suitable for neuroscientific research.
Findings
Achieved 0.533 ms per frame processing time
Speedups of 1,753× for face detection and 11× for landmark detection
System operates faster than 500 fps, enabling real-time eyeblink detection
Abstract
Pavlovian eyeblink conditioning is a powerful experiment used in the field of neuroscience to measure multiple aspects of how we learn in our daily life. To track the movement of the eyelid during an experiment, researchers have traditionally made use of potentiometers or electromyography. More recently, the use of computer vision and image processing alleviated the need for these techniques but currently employed methods require human intervention and are not fast enough to enable real-time processing. In this work, a face- and landmark-detection algorithm have been carefully combined in order to provide fully automated eyelid tracking, and have further been accelerated to make the first crucial step towards online, closed-loop experiments. Such experiments have not been achieved so far and are expected to offer significant insights in the workings of neurological and psychiatric…
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Taxonomy
TopicsRetinal and Optic Conditions · Gaze Tracking and Assistive Technology · Face Recognition and Perception
