A Framework for Pupil Tracking with Event Cameras
Khadija Iddrisu, Waseem Shariff, Suzanne Little

TL;DR
This paper introduces a novel framework for pupil tracking using event cameras, leveraging deep learning techniques like YOLOv8 to achieve high temporal resolution and low latency in eye movement detection.
Contribution
The study presents a new method combining event-based vision with deep learning for accurate pupil tracking, addressing limitations of traditional cameras in high-speed eye movement analysis.
Findings
Effective pupil detection with event cameras demonstrated
High temporal resolution improves saccade tracking accuracy
Potential applications in neuroscience and ophthalmology
Abstract
Saccades are extremely rapid movements of both eyes that occur simultaneously, typically observed when an individual shifts their focus from one object to another. These movements are among the swiftest produced by humans and possess the potential to achieve velocities greater than that of blinks. The peak angular speed of the eye during a saccade can reach as high as 700{\deg}/s in humans, especially during larger saccades that cover a visual angle of 25{\deg}. Previous research has demonstrated encouraging outcomes in comprehending neurological conditions through the study of saccades. A necessary step in saccade detection involves accurately identifying the precise location of the pupil within the eye, from which additional information such as gaze angles can be inferred. Conventional frame-based cameras often struggle with the high temporal precision necessary for tracking very fast…
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Taxonomy
TopicsMemory Processes and Influences · Quantum Computing Algorithms and Architecture
MethodsFocus · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · You Only Look Once
